Abstract
Identifying drivers of climate misinformation on social media is crucial to climate action. Misinformation comes in various forms; however, subtler strategies, such as emphasizing favorable interpretations of events or data or reframing conversations to fit preferred narratives, have received little attention. This data-driven paper examines online climate and sustainability communication behavior over 7 years (2014–2021) across three influential stakeholder groups consisting of eight fossil fuel firms (industry), 14 non-governmental organizations (NGOs), and eight inter-governmental organizations (IGOs). We examine historical Twitter interaction data (n = 668,826) using machine learning-driven joint-sentiment topic modeling and vector autoregression to measure online interactions and influences amongst these groups. We report three key findings. First, we find that the stakeholders in our sample are responsive to one another online, especially over topics in their respective areas of domain expertise. Second, the industry is more likely to respond to IGOs’ and NGOs’ online messaging changes, especially regarding environmental justice and climate action topics. The fossil fuel industry is more likely to discuss public relations, advertising, and corporate sustainability topics. Third, we find that climate change-driven extreme weather events and stock market performance do not significantly affect the patterns of communication among these firms and organizations. In conclusion, we provide a data-driven foundation for understanding the influence of powerful stakeholder groups on shaping the online climate and sustainability information ecosystem around climate change.
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Introduction
The Intergovernmental Panel on Climate Change (IPCC), in the latest Sixth Assessment Report (AR6), calls for immediate climate action1. However, this report asserts that a significant barrier to tackling the climate crisis is rampant misinformation on social media1,2,3. This is important, as globally, more than 4 billion people use social media platforms for communication, including information on climate action2,4. Climate change misinformation on social media can be crude and direct, for example, spreading knowingly false and misleading information5. Misinformation on social media can also be more subtle and indirect; for example, corporate greenwashing is a tactic used to persuade audiences that business practices and products meet green standards while obfuscating the negative environmental performance of a company6. Fossil fuel firms are often accused of such obfuscation on social media platforms7,8.
In this paper, we study subtle misinformation and conversation reframing akin to greenwashing that allows the fossil fuel industry to influence the communication of climate watchdog organizations on social media. While this study is data-driven and observational, we show that the world’s top polluting fossil fuel firms engage in redirecting and reframing the social media conversation in the broader information ecosystem. This ecosystem involves the primary intergovernmental organizations (IGOs) and non-governmental organizations (NGOs) that operate in the climate and sustainability space. While it is not surprising that subtle forms of climate misinformation like redirection and reframing exist, it is surprising to see that the primary watchdogs for climate misinformation (IGOs and NGOs) may also be subject to influence by the fossil fuel industry.
In the growing climate accountability literature, there is increasing evidence suggesting that climate communications through social media may rely on issue framing that can shift the conversation to align with particular political or corporate frames6,9,10,11,12. However, previous research does not adequately explore the more subtle role that top fossil fuel firms may play in propagating misdirected communication and how this may affect the broader climate communication ecosystem. When corporate reframing or redirection on social media occurs, how are other significant actors in the climate conversation influenced, especially non-governmental organizations and intergovernmental organizations? Furthermore, how do NGOs and IGOs respond (if they respond) to the fossil fuel industry reframing social media conversations? Our research investigates the communication interactions on social media between the members of the fossil fuel industry and the NGOs and IGOs that focus on climate change and sustainability. We empirically unpack their reframing and redirecting approaches.
Recent research examines how the top fossil fuel firms use social media for greenwashing purposes13,14,15. Much of this work centers on how these firms use social media to generate climate disinformation “echo chambers” (where the same communication agenda is reinforced through the interactions between different stakeholder groups) or “filter bubbles” (where information is selected and highlighted), leading consumers to believe a specific (and firm-driven) discourse. This echo chamber effect emerges through communication triangulation between the three-core stakeholder groups5,6,14,16,17,18,19,20. In the literature, echo chambers and filter bubbles are usually studied at an individual level. Still, a significant gap remains in analyzing the collective behavior of stakeholder groups. For example, during the two weeks of the United Nations Conference of Parties-26 (COP-26), research found that 16 of the world’s most polluting fossil fuel companies were associated with more than 1700 climate misinformation ads on Facebook alone, with 150 million user interactions, demonstrating the virality of climate misinformation14,21.
Research suggests that fossil fuel firms use a variety of messages emphasizing the idea that consumer behavior is the leading cause of climate change7,13,22. Furthermore, these firms are more likely to discuss decarbonization and clean energy in their annual reports as green pledges rather than concrete actions. Their investment portfolio often does not match their climate rhetoric, which provides evidence of greenwashing and potential reframing behavior8.
Increasingly, social media platforms also influence climate activism in ways that can create disinformation echo chambers through environmental extremism5,23,24,25. These echo chambers fuel climate action polarization as reframed, and misdirected climate narratives influence broader audiences5,26. These actions encourage climate change denialism and fuel organized misinformation campaigns at a systems-scale6,27,28,29. With limited research in this area, it is difficult to know who is involved in online climate misinformation and its underlying communication structure at a systems-level3,20,28 and consider its potential neutralization30,31. This may undermine public risk judgments about the seriousness of issues like online greenwashing, fake news, conspiracy theories, or radical climate action. Understanding the structure of social media communications between fossil fuel firms, NGOs, and IGOs is a necessary first step before we can decide whether to develop possible measures, like regulatory and policy design changes, self-regulation, or community engagement, to name a few, to counter online misinformation5,20,31,32,33,34,35.
Theoretical framing
We propose a simple theory to explain why key climate stakeholders engage in discussion with each other and how their incentives motivate their behavior. In our theoretical framework, climate stakeholders influence the discussion and shape the bounds of policy debate around climate as a means of achieving their goals. For example, the incentives of fossil fuel firms include protecting their profits and avoiding heavy regulation by demonstrating to policymakers and the public that they engage in sustainable behaviors (supporting13,15). IGOs have political incentives, including promulgating policies that sustain the environment and which may mitigate the effects of climate change, while considering the political preferences of the public, who might be more skeptical of climate action.
NGOs aim to reduce climate change, even at the cost of firm profits and political popularity. Each of these stakeholders will reframe public debates to accomplish their goals. Fossil fuel firms have incentives to highlight their sustainability efforts to appease international regulators while trying to maintain profits from their fossil fuel activities. IGOs have incentives to inform the public about the importance of climate policy and emphasize their success in encouraging firms to engage in more sustainable behaviors. NGOs have incentives to both inform the public about climate science and raise awareness of perceived policy failures in the surrounding area to punish political actors they view as moving too slowly and firms they view as purely profit-seeking36,37. Thus, reframing the social media discussion is a way for IGOs and NGOs to set terms of debate favorable to their political and climate goals, which are at odds with the goals of the fossil fuel industry. At the same time, the fossil fuel industry could reframe the discussion to focus the online climate debate on their sustainability efforts.
To deepen our understanding of the reframing of social media climate conversations, we also examine contextual factors that might influence online discussion among these agents. These climate-stakeholder firms and groups may be communicating online in response to other factors. That is, they may not be engaged in a joint conversation but instead could be focused on framing organizational reactions to extreme climate events or, in the case of fossil fuel firms, their financial or corporate successes. We aim to describe the extent to which these outside factors influence discussion as opposed to fossil fuel companies reframing the discussion themselves. These external factors are important potential confounding factors in our theory of online conversations between the fossil fuel industry, NGOs, and IGOs, and thus we must account for their potential influences on the interactions between them.
Thus, an important part of our analysis is to include external factors like industry financial returns and extreme climate events in our models. This will allow us to account for these potential confounding factors and test hypotheses regarding whether external events are more of a focus in the online communications of these climate stakeholder firms and groups.
Regarding industry financial returns, there has been past research using social media data like Twitter in models predicting financial systems38. As an exogenous factor, Bollen, Mao, and Zeng39 have shown that different dimensions of user moods on Twitter can predict the Dow Jones Industrial Average performance. Similarly, Oliveira, Cortez, and Areal40 found that Twitter sentiment and posting volume were relevant for forecasting the returns of the S&P 500 index, portfolios of lower market capitalization, and some industries. Thus, we will include measures of the financial market performance of the fossil fuel industry in our analyses below.
Similarly, climate change effects, like extreme temperature anomalies and heat waves, have been found to influence the rate of tweeting amongst people living in the US41. However, researchers stress that there is a strong need to develop a better understanding of how actors like NGOs, IGOs, governments, and the private sector in the climate governance space engage on Twitter, interact with the public, and are themselves shaped by such interactions. Such understanding of climate debates on Twitter can inform climate governance research and advance theory on how social media, through norm diffusion, opinion leadership, and citizen and elite opinion formation, impacts climate governance42. To account for the potential influence of climate events on the conversations between fossil fuel firms, IGOs, and NGOs, our dynamic models will incorporate information about extreme climate events.
In doing so, we conceptualize that reframing can be measured through interactions between these three groups on social media platforms. Online communication from core stakeholder groups (fossil fuel industry, IGOs, and NGOs) is vital to influencing the public discourse on sustainability and climate change. This paper empirically captures the degree of reframing of online climate communication between fossil fuel firms, IGOs, and NGOs. We predict how stakeholders will change their tendency to discuss a topic online if one group increases their messaging. Our data-driven research design uses a large sample of tweets, retweets, and replies (n = 668,826, 2014–2021) from eight of the largest carbon-emitting firms (see Table 1 for information about the fossil fuel firms included in our study)43, and the 14 NGOs and eight IGOs with a cumulative follower base of 9.6 million users worldwide (see the section “Data and method” and Supplementary Section 1). Furthermore, we assumed Twitter accounts were influential if they had at least 10,000 followers. Therefore, we only selected the public Twitter accounts of these firms and organizations that matched this criterion (see Supplementary Table 1).
Given our theoretical framework, we derive three key hypotheses.
H1: We hypothesize that stakeholders will have more ability to direct conversation over topics in their areas of domain expertise. In our case, we expect NGOs and fossil fuel firms to respond to IGOs on policy; that IGOs and fossil fuel firms will react to NGOs on climate action and environmental justice topics; and that NGOs and IGOs will respond to fossil fuel firms on corporate sustainability initiatives.
H2: We hypothesize that fossil fuel firms will be more successful at redirecting the online conversation than intergovernmental or nongovernmental groups.
H3: We hypothesize that the online communication behavior of fossil fuel firms will be influenced by exogenous factors like extreme weather events and stock market performance.
Results
Structure and mapping of stakeholders’ online climate communication
This section presents the results from our joint topic-sentiment (JST) modeling, which provides the foundation for understanding how information flows between the three stakeholder groups in our analysis. To measure both topical structure and sentiment orientation, we use JST modeling to uncover and measure these latent characteristics in the text data. We needed such a method to better capture the context of the uncovered topics—for example, while both corporate sustainability and climate action might have some shared tokens, JST can distinguish between the two by accounting for sentiment, an additional, relevant latent layer in our setting. For example, we show the top-15 tweets from the fossil fuel firms with the highest positive and negative sentiments in Table 2 (the estimation approach is discussed in the “Data and method” section).
Similarly, Fig. 1 shows the common topics and their sentiments (positive, negative, and neutral) in the Twitter conversations between the fossil fuel firms (industry), IGOs, and NGOs. In particular, Fig. 1 shows the probability an organization discusses a specific topic during the entire sample period. The figure illustrates several critical differences in the frequency that these organizations discussed on Twitter regarding the topics uncovered by our model. In doing so, we note relative homogeneity in the topics about which fossil fuel firms and IGOs tweet. In contrast, NGOs are more heterogeneous on the topics they discuss on Twitter.
We now discuss topic frequencies for each group of organizations with embedded sentiments. We observe, first, fossil fuel firms post tweets that promote their outside media and public engagement with a neutral tone. This includes tweeting about news segments and newspaper articles that positively affect the firms. They are also more likely to tweet about actions taken to mitigate air pollution with a positive tone (see Fig. 1 and Table 2). Second, IGOs tend to post tweets that promote further Twitter engagement and discuss climate action, both with a neutral sentiment. They are also more likely to post about their opposition to the Trump administration’s drilling policies and protecting endangered wildlife, carrying a more negative tone. Third, NGOs, many of which represent activist groups, are more heterogeneous in their Twitter discussion topics. There are few discernible group-wide patterns, except they tend to engage evenly across the entire portfolio of topics. The topic distribution in low-dimensional space is further illustrated in Supplementary Table 8.
Fossil fuel firms’ position in the online communications space
Figure 2 shows the impulse response functions (IRF) that estimate the hypothetical increase in an organization’s likelihood of discussing a topic in the face of a standard deviation increase in another organization’s average topical propensity. These results illustrate the following observations with respect to the study’s hypotheses:
Hypothesis 1: IRF results in Fig. 2a are consistent with the hypothesis that these organizations interact online. For instance, Fig. 2a illustrates the industry’s influence on the online communication of non-governmental organizations. The figure depicts the responsiveness of IGOs and NGOs to a hypothetical increase in fossil fuel firms’ social media communication on the topics uncovered by our JST model. Note that 30 percent of the IRFs are significant for IGOs’ response to a hypothetical increase in fossil fuel firms’ discussing a topic.
Similarly, 13 percent of IRFs are statistically significant for IGOs’ response to a hypothetical increase in fossil fuel firms’ discussing a topic. A hypothetical standard deviation increase in fossil fuel firms’ probability of discussing how they support STEM initiatives and corporate sustainability results in a 5 percent increase in NGOs’ average probability of discussing these topics, both significant at the 95 percent level. Stopping the XL pipeline, opposing Trump drilling policies, divesting from fossil fuels, and criticism of the Trump EPA all result in smaller 1 percent increases, significant at the 95 percent level. These IRF estimates are hypothetical responses, so they do not imply fossil fuel firms engaged regularly in these (often controversial) topics. To account for this, our IRF estimates are scaled by the empirical base rate for the probability that a group of organizations discussed this topic. Similarly, IGOs tend to respond to the fossil fuel industry by increasing their average propensity to discuss corporate sustainability and climatological changes by 3 percent, significant at the 95 percent level.
Figure 2b demonstrates the impact of NGOs on the industry’ and IGO’ communication. The figure depicts the responsiveness of fossil fuel firms and IGOs to a hypothetical increase in NGOs’ social media communication on the topics uncovered by our joint sentiment-topic model. Note that 57 percent of the IRFs are significant for IGOs’ response to a hypothetical increase in NGOs’ discussing a topic. Similarly, 20 percent of IRFs are statistically significant for fossil fuel firms’ response to a hypothetical rise in NGOs’ debating an issue. Results indicate a significant impact on online IGO communication over biodiversity protection; for example, the IGO stakeholder group is ∼11 percentage points more inclined to debate this topic.
Similarly, IGO correspondence is more likely to address issues related to governance and city policies (see ‘Mayor’s action—City Policy’ in Fig. 2b) in neutral sentiment. Similarly, the IGO stakeholder group is ∼14 percentage points more likely to affect NGO communication on climate action subjects (with neutral sentiment). Renewable energy (positive sentiment), employment opportunities (neutral sentiment), corporate sustainability (positive), and media interaction (neutral) are likely to influence an NGO’s Twitter engagement by 12–16 percentage points.
Figure 2c depicts the responsiveness of fossil fuel firms and NGOs to a hypothetical increase in IGOs’ social media communication on the topics uncovered by our joint sentiment-topic model. Note that 53 percent of the IRFs are significant for NGOs’ response to a hypothetical increase in IGOs discussing a topic. Similarly, 33 percent of IRFs are statistically significant for fossil fuel firms’ response to a hypothetical rise in IGOs discussing a topic. If the results were purely noise, this rate exceeds the 5 percent one might expect. Findings indicate that the industry is likelier to interact with IGOs on media engagement and advertising-related themes. For example, topics such as industry support for STEM (∼8 percentage points in positive sentiment) and gas company advertising (∼5 percentage points in positive sentiment). Similarly, there is a notable influence of NGOs on IGOs’ Twitter communication, specifically on climate action (∼10 percentage points in neutral sentiment) and renewable energy-related topics (∼12 percentage points in positive sentiment, see Fig. 2c).
Hypothesis 2: Taken together, Fig. 2 helps to show the interactions of all three groups in the online communication space. Relatively large effect sizes in Fig. 2a relative to Fig. 2b and c would be evidence consistent with this hypothesis. Whereas we expected fossil fuel firms, a powerful interest group with billions of dollars in resources, to be relatively more influential than NGOs and IGOs in the online discussion space, we find the opposite. Based on our evidence from the IRF, we find that IGOs and NGOs are responsive when fossil fuel firms increase their discussion on a selected number of topics, most strongly for corporate sustainability and when the industry supports STEM initiatives. Yet, at the same time, we find that IGOs are responsive to nongovernmental actors (mainly activist groups) in the same way, especially for corporate sustainability and climate action. Fossil fuel firms are also responsive, particularly for corporate sustainability and praise for corporate sustainability initiatives. Finally, NGOs are responsive to hypothetical increases in IGOs’ probability of discussing corporate sustainability, stopping the XL pipeline, and renewables. The industry also responds to hypothetical increases on some topics but with smaller magnitudes. They are most likely to respond to hypothetical increases in IGOs’ probability of discussing corporate sustainability and praising corporate advertising and media engagement on sustainability.
Other factors affecting fossil fuel firms’ communication
Hypothesis 3: Here, we expected extreme weather events to have a negligible effect on online messaging because social media is global and weather events tend to be localized, acute phenomena. We also expected that fossil fuel firms’ online communications would be correlated with stock performance, as these returns represent their bottom line (consistent with refs. 38,40). Null effects for weather events in Fig. 4 and statistically significant effects on fossil fuel firms’ coefficients in Fig. 3 provide evidence consistent with this hypothesis.
Results show neither factor is strongly correlated with online communication. In our VAR framework, we treat stock returns for the fossil fuel firms in our sample as an additional endogenous variable while treating weather events as exogenous controls. Both are accounted for in the results reported in Fig. 2. To denote weather events, we use the EM-DAT database (see the section “Data and method”) of disasters to mark days where drought, extreme temperatures, storms, and wildfires caused over 1 million inflation-adjusted dollars in damage during the sample period. Moreover, Fig. 3 shows that IGOs’ and NGOs’ strategic communication decisions did not respond directly to the top fossil fuel firms’ stock market returns. We tested for potential changes at the 95 percent level. The IRF analysis shows that fossil fuel firms, IGOs, and NGOs did not change their messaging based on daily average stock returns.
Next, we examine the responsiveness of these organizations to extreme weather events on their propensity to discuss specific topics. The IRF analysis included controls for extreme weather events like drought, extreme temperature, storms, and wildfires on industry-IGO-NGO communication, shown in Fig. 4. Results for drought (Fig. 4a) show null or weak effects across all sentiment topics except a strong influence on the IGOs’ discussion on gas company advertising (10 percentage points). Similarly, in the case of extreme temperature, the IRF analysis showed no or weak effects across all topics by the stakeholders (see Fig. 4b).
The IRF results for the association between extreme storms and stakeholders’ online messaging also show null or weak effects across all sentiment-topics, except IGO-led topics associated with gas station customer service (∼7 percentage points) and industry’s messaging on company advertising (∼4.5 percentage points, see Fig. 4c). Similarly, wildfires did not influence the industry–IGO–NGO online communication for most sentiment-topics with significant effects. However, a significant effect was seen across NGOs’ propensity to discuss topics related to the protection of biodiversity (5 percentage points) and the industry’s greater propensity to discuss gas company advertising by 5.5 percentage points (see Fig. 4d). Thus, fossil fuel firms’ advertising and public relations are highly likely online messaging topics when stakeholders discuss extreme weather events.
Discussion
In this study, we analyzed the online social media communication structures of the top eight largest greenhouse gas-emitting firms in the fossil fuel industry, 14 non-governmental organizations (NGOs), and eight inter-governmental organizations (IGOs) with a total of 9.6 million followers worldwide. We tested three hypotheses related to the nature of the online interactions of these stakeholders concerning climate change and sustainability messaging. First, utilizing natural language processing-driven joint sentiment-topic (JST) modeling and vector autoregression (VAR), we empirically analyzed the influence of industry–IGOs–NGOs on sustainability and climate-related themes on Twitter between 2014 and 2021 (n = 668,826). Moreover, the VAR results demonstrated that the directionality of online communication is neither influenced by the industry’s stock performance nor impacted by extreme weather occurrences such as storms, drought, wildfires, and high temperatures.
We used JST modeling to reduce the dimensionality of our text dataset to 30 discernible sentiment topics, built from 668,826 tweets. We find substantial discussion amongst fossil fuel firms, IGOs, and NGOs regarding sustainability and climate issues (see Fig. 1). Yet, climatological changes, criticism of Trump’s drilling and environmental protection policies, divestment from fossil fuels, extreme weather, and gas station customer service were mentioned at least 70% of the time in the online communication space of the industry, with negative sentiment embeddings. Similarly, the most prevalent negative sentiment topics (with more than 85% repetition) among the IGOs’ tweets were related to the conservation of endangered species, resistance to Trump’s drilling policy, and extreme weather events.
At least 80% of the NGOs’ online communication characterized by negative sentiments were around stopping toxic and plastic waste, extreme weather, fossil fuel divestment, and Trump’s environmental protection initiatives (see Fig. 1). Therefore, we revealed a structural distinction between industry, IGOs, and NGOs regarding online social media communication themes.
The impulse response function (IRF) analysis from the VAR model illustrates the influence of fossil fuel firms on IGOs and NGOs’ (and vice versa) social media communication at 95% confidence levels. We found that climate stakeholders influence other stakeholders within their respective topical domains. When fossil fuel firms increase their online discussion of corporate sustainability and corporate STEM initiative-related topics, NGOs are predicted to be ∼8 percentage points more likely to discuss it over the following week (see Fig. 2a). Consistent with our hypotheses (Hypothesis 1), our analysis offers observational evidence that the top polluting fossil fuel firms are responsive to online communication by NGOs on topics associated with environmental justice and climate change themes. IGOs were the most responsive group, with predicted increases of 10–20 percentage points in their probability of discussing topics related to climate action if NGOs increase their discussion of those topics.
In response to IGOs, Fig. 2c shows that fossil fuel firms and NGOs are responsive to policy issues, such as promoting renewables, stopping the XL pipeline, and opposing the Trump administration’s drilling policies. NGOs are particularly responsive to increases in IGOs’ propensity to discuss climate action initiatives. These findings are consistent with our first hypothesis. Furthermore, this finding dovetails with Supran and Oreskes’s13 analysis of ExxonMobil’s climate communication. They found that the company had publicly overemphasized (a reframing behavior) some terms and topics associated with greenwashing while avoiding others as a form of climate misinformation.
Contrary to Hypothesis 2, NGOs have more sway over online conversations according to our VAR framework. Despite being less well-funded and with fewer institutional levers of power, these groups can influence the online discourse on climate change and sustainability. Moreover, they can do so more than fossil fuel firms and intergovernmental organizations. This finding can be due to a greater number of Twitter followers associated with NGO user accounts.
Our findings related to Hypothesis 3 are mixed. Beyond evidence for the null correlations between extreme weather events and online discourse, we also show in Fig. 3 that stock returns are largely uncorrelated with online communications. Not surprisingly, IGOs and NGOs are unmoved by stock market performance. Still, it is surprising there is no discernible relationship for fossil fuel firms since maximizing financial performance is one of a private corporation’s primary objectives. There are a few possible explanations: first, the time series data contain latent relations not captured by our VAR models. We find this unconvincing, as our analysis allows for a highly flexible time series structure, including lags. This null evidence leads us to believe that even if there is a relationship, it is likely to be of a small magnitude. A second and more plausible explanation is that corporate public relations strategies are driven by long-term messaging goals unrelated to the company’s actual financial performance. This explanation suggests how the fossil fuel industry might capitalize on green narratives for climate action and sustainability, ultimately avoiding messages directly linked to their financial situation (also reported by refs. 14,36,38,40,42).
Our paper contributes to the growing literature on climate accountability by advancing the understanding of “reframing” by influential stakeholders on social media platforms, as they aim to influence online climate and sustainability communications. We envisage countering such subtle climate communication reframing through regulatory and design changes on social media platforms, which would enable them to be more exhaustive and transparent. In addition, self-regulation and community engagement around such reframing behavior might motivate behavioral design changes34,44 to support individuals’ assessment of the information they access—a vital element to generate consensus around climate action.
This paper suggests future opportunities to explore whether these macro-level discourses between core stakeholder groups lead to opinion or behavior change. Future work also involves the development of data-driven frameworks to derive a typology of the structure of climate misinformation based on how influential stakeholders communicate on online platforms. Future research could also examine the data-driven value chain of climate and sustainability information that feeds these stakeholder groups.
Our study has potential limitations. For instance, lexicon-based sentiment analysis has limitations in capturing the true language meaning and small changes if the words are changed due to their annotation and coding definitions. This remains an open challenge with discriminative NLP models. In addition, Twitter may be subject to demographic biases. In this paper, we limited such biases by analyzing the entire Twitter corpus of the concerned organizations to capture the more extensive cross-sectional breadth of online communication and embedded valence shifters in the tweets’ semantic structure. We also limit biases using weakly supervised and unsupervised learning methods (like the JST), which require limited human intervention and training data. Furthermore, we validated our extracted sentiment-topic scores using multiple human readers to reduce lexicon-based discrepancies. Other methods can be used to reduce the dimensionality of social media conversations, for example, the structural topic model, large-language models, and transformer-based approaches. As we have shown, weakly supervised approaches like the JST can identify topics and produce sensible results without utilizing potentially biased and expensive human-labeled training data. Whether neural network-based large-language and generative AI models might be useful is an area for future research. A final limitation regards our assumption that a greater number of followers on Twitter means a more significant influence on the communication that motivated the selection of fossil fuel firms, IGOs, and NGOs.
Our observational research shows that social media data helps study industry-level behavior on climate change and sustainability and its propensity to influence the communication of other crucial stakeholder groups, potentially affecting consensus around effective climate action. In sum, our paper provides a new direction for understanding the structure of the online climate and sustainability information ecosystem using social media big data.
Data and method
To empirically consider our hypotheses, we use natural language processing (NLP) in a new way to measure information flows in stakeholders’ climate communications on social media. First, we use the joint sentiment-topic (JST) methodology to determine the topical structure of the social media conversation between the three-climate stakeholder groups45,46. Then, we take the topical proportions uncovered by the JST model and employ dimensional reduction to quantify and visualize the discussion space for these stakeholders, examine interactions in their communication, and identify the triggers that influence the reframing of online communication (see Supplementary Section 2).
With the results of the NLP modeling, we then investigate who leads and who follows in social media debates about specific climate and sustainability topics. We examine the primary topics of IGOs and NGOs and their sensitivity to the industry’s propensity to drive the conversation using vector autoregression (VAR). We control for considerations exogenous to the communication environment, such as extreme weather events and the industry’s stock market performance. Using impulse response functions (IRF) calculated from the VAR model (see Supplementary Section 3), we establish quantifiable associations between climate-related communication among large fossil-fuel firms, IGOs, and NGOs. These methodological steps are discussed below, with additional supporting details in the Supplementary Information. For details on the vars v1.5-9 package used to implement the time series analysis in R, please refer to refs. 47,48.
This research was reviewed by the Institutional Review Board at the Judge Business School, University of Cambridge (20-064) and at the California Institute of Technology (21-1169). Twitter was informed about this research during the v2API request.
Data source
We use the Twitter (now known as X) v2API endpoints to collect daily time-series tweets for the stakeholder groups shown in Supplementary Table 1 between January 2014 to September 2021, accessed using the academictwitterR v0.3.0 package49 in R-programming language. As a search query, we used the username of the official global Twitter accounts of the organizations (see Supplementary Table 1), as they had the largest follower counts and most tweets were in the English language to reach maximum users.
More specifically, in the “industry” category, we included investor-owned top polluting fossil fuel firms in this study43,50. The global spread of firms contains BP (UK), Chevron (USA), BHP (Australia), ConocoPhillips (USA), ExxonMobil (USA), Peabody Energy (USA), Shell (The Netherlands) and Total Energies (France). Cumulatively, these firms emitted ∼207,361 million tonnes of carbon dioxide equivalent (MtCO2e) between 1965 and 2018 (Table 1).
We curated the list of environmental and intergovernmental (IGOs) and non-governmental organizations (NGOs) based on organizational size using the publicly available University of California Berkeley’s database51 and DonorBox’s 2021 classification of top environmental protection non-profits from their portfolio of more than 50,000 organizations in 96 countries52. In the next step, we manually filtered the NGOs and IGOs list based on two criteria: (a) English-language Twitter user accounts that have at least 10,000 followers, and (b) availability of seven years (January 2014–September 2021) of time-series historical tweets. Our final dataset contained a cumulative follower base of 9.6 million users worldwide and 728,967 tweets. Detailed descriptive characteristics of our dataset are presented in Supplementary Tables 1 and 2. We acknowledge that the Twitter dataset may contain some unintentional biases. For example, our data may contain tweets from malicious users artificially causing a topic or a hashtag to trend, or tweets that misrepresent already trending items using bots53. We follow established best practice guidelines to mitigating such biases54,55.
The daily stock market return data are the calculated (or derived) firm equity prices based on the daily stock market returns data from the CRSP US Stock Database ©2021, provided by the Centre for Research in Security Prices (CRSP), The University of Chicago Booth School of Business. In addition, stock market returns summary statistics are provided in Supplementary Table 4 with average daily returns in Supplementary Fig. 5. The extreme weather dataset is extracted from EM-DAT (https://www.emdat.be). It is a database of global disasters maintained by the Centre for Research on the Epidemiology of Disasters (CRED) at the School of Public Health of the Université Catholique de Louvain located in Brussels, Belgium, maintaining records of historical global disasters from 1900 of meteorological, epidemiological, and other natural origin.
Pre-processing
We follow best practices for pre-processing text-as-data56,57,58. To ensure we have the right number of features; we stem the tokens that will enter the JST bag-of-words model. For valid inference from text data, researchers should strive for both enough common words such that there is shared variation amongst documents. At the same time, they must balance this against the need for enough unique words that are not shared amongst many documents so that distinct topics can be identified by the topic model.
We take the following steps to create a list of 1009 unique words in our dataset, which has 330,412 tweets post-pre-processing:
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1.
Drop all tweets that do not contain three unique words.
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2.
Stem all words to remove word endings to distill core semantic meaning.
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3.
Find bigrams and trigrams and tokenize.
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4.
We drop all words that appear in fewer than 0.005 percent of tweets in the corpus and in more than 50 percent of tweets in the corpus, respectively, following the advice in ref. 56.
The tweets were processed with an NLP workflow (following refs. 25,59) using the tidyverse v1.3.1 and tidytext v0.3.2 packages in R. The workflow consisted of text pre-processing, feature extraction for n-grams, and sentiment analysis. The pre-processing stage consisted of tokenisation, stemming, and lemmatisation. In NLP, tokenisation refers to breaking down the given text into smaller units in a sentence called token60,61. Stemming in NLP is a morphological technique that breaks words into their root form61. Finally, lemmatisation is another normalization technique used to reduce inflectional forms of words to a common base form61. It differs from stemming as it uses lexical knowledge bases to get the correct base forms of words61. At this NLP pre-processing stage, we removed the stopwords using the tm v0.7-8 package in R. Stopwords are the most common words in any language (like articles, prepositions, pronouns, conjunctions, etc.) that do not add much information to the text. For example, common stopwords in English are “the”, “a”, “an”, “so”, and “what”61. This workflow extracted the cleaned base form of words and generated a document-term-matrix (dtm) needed for further analysis.
The average tweet length in our corpus is 18.31. Post-processing, the average unique tokens per tweet is 17.31 with 1009 unique words. The total number of unique tweets per stakeholder group is 57,550 for industry, 50,059 for IGOs, and 222,813 for NGOs. We had an unbalanced selection of organizations in the NGO category (14) compared to eight each for the fossil industry and IGOs, leading to more unique tweets.
As an initial exploratory text analysis, all tweets were analyzed using the sentimentr v0.4.0 package in R to estimate the text polarity sentiments at the sentence level and optionally aggregate by rows or grouping variable(s). sentimentr is an augmented dictionary lookup tool which attempts to embed valence shifters (i.e., negators, amplifiers (intensifiers), de-amplifiers (downtoners), and adversative conjunctions) in the NLP-driven sentiment analysis while maintaining computation speed62.
Valence shifters affect the polarized words. For example, in the case of negators and adversative conjunctions, the entire sentiment of the clause may be reversed or overruled63. The tweet corpus analyzed here is from the global corporate accounts of the fossil fuel firms, IGOs and NGOs, so accounting for valence shifts was important to appropriately estimate the embedded sentiments.
Joint sentiment-topic modeling (JST)
To understand the nature of online discussion between IGOs, NGOs, and fossil fuel firms, we employ a topic modeling method to uncover the rates at which the organizations in our dataset discuss topics. The method both uncovers the topics and the probabilities that each document belongs to each of the topics. We know that online communication might have sentimental inflection (certain words have different meanings in different contexts), so we employ a topic model that accounts for this sentiment, Joint-Sentiment Topic Modeling (JST). Detailed modeling specification is shown in Supplementary Section 2 JST Evaluation.
The JST model is similar to the Latent Dirichlet Allocation algorithm for topic modeling, except that JST estimates topics k conditional on a sentiment j. The JST model thus estimates three latent layers (sentiment orientation, topic classification, and word probabilities belonging to both)45,46, which provides a critical methodological advantage when assessing interactive semantic exchanges, like Twitter messaging interactions across multiple stakeholders. It is a Bayesian hierarchical mixture model with three hyperparameters α, β, and γ.
The hyperparameter α is the prior concentration of the sentiment-topic ki for a document before having seen any documents from the corpus. Similarly, hyperparameter β is the prior concentration of the sentiment-topic j for a word before any words from the corpus are observed. And the hyperparameter γ is the prior concentration of the sentiment labels sampled under a document before having seen any documents.
In our model, we estimated the unconditional probability of each sentiment j as a weakly supervised model by placing a weak prior over the sentiment orientations for a selection of common words. This approach captured the entire discussion space of the industry, IGOs, and NGOs on Twitter without relying on exogenous covariates to uncover the latent space. Therefore, enabling us to model Twitter communication at a systems level and examine the industry-IGO-NGO systemic interactions.
A critical feature of the semantic structure extracted by the JST is the distinct variation in how industry, IGOs, and NGOs communicate on social media, even when projected into a lower dimensional space. Therefore, we produced a probability distribution for every word and each of the 728,967 tweets in the dataset, which can be decomposed as Eq. (1).
This produced a vector of kj sentiment-topic probabilities and j sentiment probabilities for each tweet so that the sentiment-topic labels are independent.
In our analysis, we followed standard practice and set a relatively small prior with the assumption that the tweets, given their concise nature (maximum character limit is 280), are likely to relate to very few topics at once45. Therefore, as β goes to 0, the model converges to a model of a single sentiment-topic. Furthermore, the limiting distribution gets uniform over the sentiment-topic as β grows larger.
As mentioned above, we calibrate the model by optimizing the coherence score that suggests the optimal number of topics is 30 (see Supplementary Fig. 2). In addition, we set the number of sentiments to 3 (sent1, sent2, and sent3) following the paradigmatic prior in ref. 45. It resulted in 180 conditional sentiment-topic probabilities and three unconditional sentiment probabilities for each tweet. We further illustrated the top 30 topics using sentiment-topic occurrence frequencies (Fig. 1) and used the rJST v1.3 package and default rJST dictionary for constructing the JST model. Additional supporting details regarding the JST analysis are provided in Supplementary Section 2, including an extracted corpus of the top 5 topic words (see Supplementary Table 2) and probabilistic topic labeling (emblematic) (Supplementary Table 3, emblematic tweets). The topic proportions per information source are presented in Supplementary Table 2.
Vector autoregression (VAR)
Our dynamic analysis of the Twitter sentiment-topics from the fossil fuel firms, the NGOs, and the IGOs, was conducted using vector autoregression (VAR). First, we evaluated the probabilities of IGOs and NGOs to discuss each sentiment-topic in their daily Twitter communications. We use an impulse response framework from the time series VAR of topical probabilities derived from our JST estimates. Building on a methodological framework used in previous research64, our estimation strategy estimates a VAR for each topic, treating each organization’s average probability of discussing that topic and fossil fuel firms’ stock performance, as well as a topic discussion under the influence of extreme weather events as endogenous, using publicly available EM-DAT database.
VAR is a time series technique that allows for the analysis of how a particular time-series of data responds to its history and the history of other time-series in the analysis, which has been used in previous studies that examine the dynamics of multiple time-series of Twitter topics64. VAR also allows us to simulate how changes in one time series (“shocks”) may work through the entire system of equations. As our data are stationary but censored between 0 and 1 as in ref. 64, we follow’s ref. 65 logit specification for VAR. Supporting details about the VAR analysis are provided in Supplementary Section 33, and specifically, Supplementary Fig. 3 provides details about stationarity.
Supplementary Section 3 contains more details about our time series analysis and robustness check performed using Augmented Dickey–Fuller Tests for Unit Root (shown in Supplementary Fig. 3). In addition, it includes summary statistics for the daily propensity of fossil firms’ Twitter activity on the primary topic in the analysis (Supplementary Table 5). Similarly, Supplementary Tables 6 and 7 show summary statistics for IGOs and NGOs topic time series, respectively. The daily propensity of the stakeholders to discuss divestment from fossil fuels, renewable jobs, and extreme weather is shown in Supplementary Fig. 4. The average daily stock return is shown in Supplementary Fig. 4d, with stock market returns summary statistics presented in Supplementary Table 4.
Using this topic-by-topic model, we measure the online information ecosystem of the stakeholder groups in our dataset and data from exogenous weather events, such as droughts, wildfires, storms, and extreme temperatures. Using these model estimates, we compute impulse response functions (IRFs) for the probability each type of organization discusses a topic when another group increases its average probability of discussing it. Specifically, these IRFs estimate the hypothetical increase in an organization’s likelihood of discussing a topic in the face of a standard deviation increase in another organization’s average topical propensity.
Reporting summary
Further information on research design is available in the Nature Research Reporting Summary linked to this article.
Data availability
The materials necessary to reproduce the results reported in this paper are available at https://github.com/danielEban ks/. Energy-Industry-Greenwashing. Per the terms of Twitter’s academic use policies, we will make available the tweet IDs for the data used in this paper upon publication. Researchers can obtain the CRSP data from https://www.crsp.org/. Publicly available extreme weather events data can be obtained from EM-DAT (https://www.emdat.be). Alternatively, please contact the corresponding author to request the dataset.
Code availability
The code necessary to reproduce the results reported in this paper is available at the following GitHub repository: https://github.com/danielEbanks/Energy-Industry-Greenwashing.
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Acknowledgements
We thank Michael Ewens for his help accessing the CRSP data we use in this paper. RD’s work is supported by the Quadrature Climate Foundation, 2023 Google Cloud Climate Innovation program and the Bill & Melinda Gates Foundation [OPP1144]. KM, TR, and RD acknowledges support from the Cambridge Judge Business School Small Grant Scheme [SG20-09] and Cambridge Faculty of Economics Keynes Fund [JHVH]. RMA and DE’s work is supported by Caltech’s Resnick Sustainability Institute (DE’s work was supported by the Caltech Resnick Sustainability Institute while he was a PhD candidate at Caltech). RD is grateful to Professor Flora Samuel, Stan Finney and Zara Kuckelhaus for supporting with computing infrastructure.
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R.D.: Conceptualization, methodology, investigation, data curation, writing—original draft, writing—review & editing, project administration, funding acquisition, supervision. D.E.: Conceptualization, methodology, investigation, formal analysis, data curation, writing—original draft, writing—review & editing, project administration, visualization. K.M.: Conceptualization, funding acquisition. T.R.: Conceptualization, writing—review & editing, funding acquisition. R.M.A.: Conceptualization, methodology, investigation, writing original draft, writing—review & editing, project administration, funding acquisition, supervision.
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Debnath, R., Ebanks, D., Mohaddes, K. et al. Do fossil fuel firms reframe online climate and sustainability communication? A data-driven analysis. npj Clim. Action 2, 47 (2023). https://doi.org/10.1038/s44168-023-00086-x
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DOI: https://doi.org/10.1038/s44168-023-00086-x