How Do Multi-Actor Environmental Sentiment Tendencies Affect the Green Transformation of Chinese Energy Companies? The Moderating Role of Economic and Climate Policy Uncertainty
Abstract
1. Introduction
2. Literature Review and Formulation of Research Hypotheses
2.1. Distinction Between Sentiment Tendency, Attention, and Formal Regulation
2.2. Sentiment Tendencies and Green Transformation Mechanisms
2.3. Moderating Effects of Economic and Climate Policy Uncertainty
3. Data and Methods
3.1. Variable Description
3.1.1. Independent Variables
- (1)
- Environmental sentiment tendencies of financial institutions (FES).
- (2)
- Media environmental sentiment tendencies (MES).
- (3)
- Public environmental sentiment tendencies (PES).
- (4)
- Government environmental sentiment tendencies (GES).
3.1.2. Dependent Variable
3.1.3. Moderating Variables
3.1.4. Control Variables
3.2. Model Setting
3.3. Data and Sample
4. Results and Discussions
4.1. Descriptive Statistics
4.2. Baseline Regression
4.3. Robustness Tests
4.3.1. Alternative Measurement of Independent Variables
4.3.2. Sample Exclusions
4.3.3. Period Adjustments
4.3.4. Validity and Robustness of Textual Analysis
4.3.5. Change Clustering
4.3.6. Replacement Model
4.3.7. Lag Effect Test
4.3.8. Handling Endogeneity Issues
- (1)
- Regarding the FES, this study selects bank branch density (BBD)—measured as the total number of banking financial institution outlets (in tens of thousands)—as the instrumental variable. On one hand, the number of bank outlets directly reflects the regional coverage and capital allocation activity of financial institutions. The greater the number of branches, the stronger the influence financial institutions exert on energy companies’ environmental risk assessments and green credit issuance, thereby enhancing the transmission efficiency of their environmental sentiment tendency (such as heightened risk awareness toward high-carbon projects). On the other hand, the distribution of bank branches is determined by external factors like institutional strategic planning and regional economic development levels, which are unlikely to directly influence the green transformation decisions of energy companies. This helps to avoid the issue of reverse causality, where corporate transformation might influence financial institution behavior [51].
- (2)
- Regarding media environmental sentiment tendency, this study uses the logarithm of the number of newspaper types published in each province (NNP) as the instrumental variable. On one hand, a greater variety of regional newspapers indicates a more diverse media ecosystem and broader coverage of environmental issues, thereby generating stronger public opinion pressure and directly reinforcing the media’s environmental sentiment tendency. On the other hand, the approval and regulation of the number of newspaper types are primarily overseen by independent authorities such as the National Press and Publication Administration. The number of newspapers is largely determined by long-term factors such as regional cultural traditions and historical publishing policies, which are unlikely to directly influence the green transformation decisions of energy companies.
- (3)
- Regarding public environmental sentiment tendency, this study selects Internet penetration rate (IVPE)—measured by the number of broadband internet users (in tens of millions)—as the instrumental variable. On one hand, a higher number of broadband users indicates greater public engagement in environmental discussions on social media platforms (such as Weibo), thereby amplifying public environmental sentiment tendencies. On the other hand, the number of broadband internet users is determined by factors such as regional information infrastructure development and population density, which are unlikely to directly influence the green transformation decisions of energy companies [52].
- (4)
- Regarding government environmental sentiment tendency, this study uses the logarithm of direct economic losses caused by natural disasters (DEL) as the instrumental variable. On one hand, the greater the direct economic losses from natural disasters, the more urgent the pressure on local governments to ensure public safety and undertake ecological restoration, which compels them to emphasize environmental language in policy documents and increase the frequency of environment-related keywords—thereby enhancing their environmental sentiment tendency. On the other hand, the occurrence of natural disasters is primarily driven by natural factors such as climate and geology, which are unlikely to directly influence the green transformation decisions of energy companies, thus satisfying the exogeneity condition.
4.4. Heterogeneity Analysis
4.4.1. Heterogeneity Analysis by Region
4.4.2. Heterogeneity Analysis by Competitive Pressure
4.4.3. Heterogeneity Analysis by Environmental Regulation
4.5. Moderation Effect Test
4.5.1. Moderating Effect of Economic Policy Uncertainty
4.5.2. Moderating Effect of Climate Policy Uncertainty
5. Conclusions and Recommendations
5.1. Conclusions and Policy Implications
5.2. Research Limitations
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
Appendix A
| Variables | (1) | (2) | (3) | (4) | (5) | (6) | (7) | (8) | (9) | (10) | (11) | (12) | (13) | (14) |
|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|
| (1) GTEE | 1.000 | |||||||||||||
| (2) FES | 0.111 *** | 1.000 | ||||||||||||
| (3) MES | 0.085 *** | −0.074 *** | 1.000 | |||||||||||
| (4) PES | 0.067 *** | 0.114 *** | 0.056 *** | 1.000 | ||||||||||
| (5) GES | 0.048 *** | −0.015 | 0.017 | 0.035 ** | 1.000 | |||||||||
| (6) GDP | 0.037 ** | −0.163 *** | 0.158 *** | −0.104 *** | −0.124 *** | 1.000 | ||||||||
| (7) OPEN | −0.004 | −0.153 *** | −0.062 *** | −0.112 *** | −0.044 *** | 0.636 *** | 1.000 | |||||||
| (8) STR | −0.012 | 0.335 *** | −0.165 *** | 0.026 * | −0.171 *** | −0.451 *** | −0.412 *** | 1.000 | ||||||
| (9) TECH | 0.121 *** | −0.037 ** | 0.170 *** | −0.045 *** | −0.145 *** | 0.701 *** | 0.504 *** | −0.331 *** | 1.000 | |||||
| (10) FDI | −0.035 ** | −0.132 *** | −0.058 *** | −0.026 * | 0.075 *** | 0.198 *** | 0.402 *** | −0.104 *** | 0.289 *** | 1.000 | ||||
| (11) SOE | 0.058 *** | −0.017 | 0.034 ** | −0.002 | 0.065 *** | −0.150 *** | −0.145 *** | −0.060 *** | −0.056 *** | −0.033 ** | 1.000 | |||
| (12) LEV | −0.011 | 0.031 ** | 0.021 | 0.007 | 0.008 | −0.073 *** | −0.091 *** | 0.000 | −0.095 *** | −0.028 * | 0.274 *** | 1.000 | ||
| (13) SIZE | 0.073 *** | −0.047 *** | 0.054 *** | −0.014 | 0.036 ** | 0.078 *** | 0.006 | −0.178 *** | 0.072 *** | −0.030 ** | 0.374 *** | 0.465 *** | 1.000 | |
| (14) ROE | 0.103 *** | 0.020 | 0.009 | −0.040 *** | −0.010 | 0.051 *** | 0.019 | 0.027 * | 0.061 *** | −0.067 *** | −0.048 *** | −0.212 *** | 0.154 *** | 1.000 |
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| Positive Words | Negative Words |
|---|---|
| improve, grow, advance, enhance, deepen, break through, revitalize, optimize … | pressure, review, control, constraint, escalation, punishment, accountability, cost … |
| Variable Type | Variable Symbol | Definitions | Data Sources |
|---|---|---|---|
| Dependent variable | GTEE | Green transformation of energy companies | CNRDS Green Patent Database |
| Independent variables | FES | Environmental sentiment tendency of financial institutions | Bank Official Website |
| MES | Environmental sentiment tendency of the media | Full Text Database of Important Chinese Newspapers | |
| PES | Environmental sentiment tendency of the public | Weibo Official Website | |
| GES | Environmental sentiment tendency of the government | Government Official Website | |
| Moderating variables | EPU | Economic policy uncertainty | Mark Data Network |
| CPU | Climate policy uncertainty | A News-Based Climate Policy Uncertainty Index For China. | |
| Control variables | FDI | Foreign direct investment | China Statistical Yearbook |
| GDP | Economic development level | China Statistical Yearbook | |
| OPEN | Openness to Trade | National Bureau of Statistics | |
| STR | Industrial structure | National Bureau of Statistics | |
| TECH | Technology market turnover rate | China Statistical Yearbook | |
| SOE | Ownership | CSMAR Database | |
| LEV | Leverage | CSMAR Database | |
| SIZE | Company size | CSMAR Database | |
| ROE | Return on Equity | CSMAR Database |
| Variables | Obs | Mean | Std.Dev. | Min | Max |
|---|---|---|---|---|---|
| GTEE | 4708 | 0.448 | 0.825 | 0 | 3.584 |
| FES | 4708 | −0.04 | 0.016 | −0.087 | −0.002 |
| MES | 4708 | −0.109 | 0.05 | −0.234 | 0.019 |
| PES | 4708 | −0.036 | 0.026 | −0.101 | 0.034 |
| GES | 4708 | −0.163 | 0.022 | −0.209 | 0.204 |
| GDP | 4708 | 86.245 | 37.117 | 31.93 | 190.321 |
| OPEN | 4708 | 0.429 | 0.301 | 0.041 | 1.253 |
| STR | 4708 | 40.052 | 8.427 | 15.8 | 52.8 |
| TECH | 4708 | 6.718 | 0.741 | 4.482 | 7.9 |
| FDI | 4708 | 0.025 | 0.021 | 0.001 | 0.101 |
| SOE | 4708 | 0.388 | 0.487 | 0 | 1 |
| LEV | 4708 | 0.493 | 0.168 | 0.07 | 0.909 |
| SIZE | 4708 | 22.791 | 1.273 | 20.07 | 26.715 |
| ROE | 4708 | 0.055 | 0.105 | −0.51 | 0.327 |
| VIF | 1/VIF | |
|---|---|---|
| GDP | 2.844 | 0.352 |
| TECH | 2.216 | 0.451 |
| OPEN | 2.153 | 0.465 |
| STR | 1.641 | 0.61 |
| SIZE | 1.62 | 0.617 |
| LEV | 1.477 | 0.677 |
| FDI | 1.313 | 0.762 |
| SOE | 1.254 | 0.797 |
| FES | 1.192 | 0.839 |
| ROE | 1.172 | 0.853 |
| GES | 1.124 | 0.889 |
| MES | 1.122 | 0.891 |
| PES | 1.036 | 0.965 |
| MEAN VIF | 1.551 |
| Variables | (1) | (2) | (3) |
|---|---|---|---|
| GTEE | GTEE | GTEE | |
| FES | 5.873 *** | 7.32 *** | 5.929 *** |
| (0.756) | (0.885) | (0.91) | |
| MES | 1.485 *** | 0.601 ** | 0.643 ** |
| (0.239) | (0.26) | (0.265) | |
| PES | 1.535 *** | 1.702 *** | 2.027 *** |
| (0.47) | (0.511) | (0.511) | |
| GES | 1.704 *** | 1.495 ** | 2.155 *** |
| (0.53) | (0.646) | (0.647) | |
| GDP | −0.001 | ||
| (0.001) | |||
| OPEN | 0.702 *** | ||
| (0.226) | |||
| STR | −0.008 | ||
| (0.008) | |||
| TECH | 0.113 | ||
| (0.071) | |||
| FDI | −1.178 | ||
| (0.869) | |||
| LEV | 0.047 | ||
| (0.124) | |||
| SIZE | −0.104 *** | ||
| (0.021) | |||
| ROE | 0.581 *** | ||
| (0.124) | |||
| Constant | 1.176 *** | 0.966 *** | 2.759 *** |
| (0.097) | (0.125) | (0.801) | |
| Controls | No | No | Yes |
| Firm FE | No | Yes | Yes |
| Year FE | No | Yes | Yes |
| Observations | 4708 | 4708 | 4708 |
| R-squared | 0.026 | 0.06 | 0.082 |
| Variables | Replace Explanatory Variable | Sample Exclusions | Period Adjustments |
|---|---|---|---|
| (1) | (2) | (3) | |
| GTEE | GTEE | GTEE | |
| FES | 0.713 *** | 2.603 *** | 3.404 *** |
| (0.109) | (1.006) | (1.034) | |
| MES | 0.125 ** | 0.873 *** | 0.906 *** |
| (0.061) | (0.308) | (0.291) | |
| PES | 0.261 *** | 1.889 *** | 2.041 *** |
| (0.053) | (0.557) | (0.513) | |
| GES | 0.898 *** | 2.835 *** | 1.236 * |
| (0.237) | (0.7) | (0.679) | |
| Constant | 2.751 *** | 3.413 *** | 3.501 *** |
| (0.799) | (0.849) | (0.887) | |
| Controls | Yes | Yes | Yes |
| Firm FE | Yes | Yes | Yes |
| Year FE | Yes | Yes | Yes |
| Observations | 4708 | 3938 | 3424 |
| R-squared | 0.084 | 0.106 | 0.057 |
| Variables | Correlation with Expanded Index | Manual Coding Consistency (%) |
|---|---|---|
| FES | 0.821 *** | 90 |
| MES | 0.996 *** | 92 |
| PES | 0.982 *** | 86 |
| GES | 0.992 *** | 94 |
| Variables | Cluster by Province | PPML | First-Order Lag | Second-Order Lag |
|---|---|---|---|---|
| (1) | (2) | (3) | (4) | |
| GTEE | GTEE | GTEE | GTEE | |
| FES | 5.929 *** | 18.027 *** | 4.176 *** | 4.11 *** |
| (1.632) | (4.09) | (0.924) | (1.136) | |
| MES | 0.643 * | 1.745 ** | −0.997 *** | 0.446 |
| (0.372) | (0.768) | (0.261) | (0.298) | |
| PES | 2.027 *** | 4.657 *** | 1.202 ** | −0.238 |
| (0.624) | (1.361) | (0.545) | (0.584) | |
| GES | 2.155 * | 3.355 * | 1.812 ** | 0.924 |
| (1.242) | (1.777) | (0.869) | (1.13) | |
| Constant | 2.926 ** | 8.309 ** | 1.044 | 1.477 |
| (1.321) | (3.488) | (0.981) | (1.122) | |
| Controls | Yes | Yes | Yes | Yes |
| Firm FE | Yes | Yes | Yes | Yes |
| Year FE | Yes | Yes | Yes | Yes |
| Observations | 4708 | 3927 | 4280 | 3852 |
| R-squared | 0.288 | 0.185 | 0.287 | 0.297 |
| Variables | (1) | (2) | (3) | (4) | (5) |
|---|---|---|---|---|---|
| Phase 1 | Phase 2 | ||||
| FES | MES | PES | GES | GTEE | |
| BBD | 0.017 *** | ||||
| (0.004) | |||||
| NNP | 0.07 *** | ||||
| (0.015) | |||||
| IVPE | 0.02 *** | ||||
| (0.002) | |||||
| DEL | −0.003 *** | ||||
| (0.0004) | |||||
| FES | 0.09 *** | ||||
| (0.02) | |||||
| MES | 0.123 *** | ||||
| (0.045) | |||||
| PES | 0.361 *** | ||||
| (0.092) | |||||
| GES | 0.151 *** | ||||
| (0.058) | |||||
| Controls | Yes | Yes | Yes | Yes | Yes |
| Firm FE | Yes | Yes | Yes | Yes | Yes |
| Year FE | Yes | Yes | Yes | Yes | Yes |
| Observations | 4708 | 4708 | 4708 | 4708 | 4708 |
| CD-F statistic | 41.545 | 28.393 | 115.270 | 66.512 | |
| KP-F statistic | 20.289 | 21.302 | 74.106 | 55.998 | |
| KP-LM statistic | 10.175 *** | 11.868 *** | 75.437 *** | 57.428 *** | |
| Variables | (1) | (2) | (3) |
|---|---|---|---|
| Eastern | Central | Western | |
| FES | 8.987 *** | 3.085 * | 2.887 |
| (1.365) | (1.768) | (2.087) | |
| MES | 0.551 * | 1.218 * | 1.442 |
| (0.323) | (0.736) | (0.893) | |
| PES | 2.416 *** | 1.776 * | −0.315 |
| (0.733) | (1.011) | (1.204) | |
| GES | 1.678 * | 2.205 ** | 3.272 ** |
| (0.939) | (1.121) | (1.33) | |
| Constant | 2.168 | 1.923 | 1.338 |
| (1.452) | (1.582) | (2.013) | |
| Controls | Yes | Yes | Yes |
| Firm FE | Yes | Yes | Yes |
| Year FE | Yes | Yes | Yes |
| Observations | 3245 | 880 | 583 |
| R-squared | 0.108 | 0.124 | 0.114 |
| Variables | (1) | (2) | (3) | (4) |
|---|---|---|---|---|
| High Competitive Pressure | Low Competitive Pressure | High Environmental Regulations | Low Environmental Regulations | |
| FES | 4.337 *** | 2.893 | 3.671 *** | 2.334 |
| (1.321) | (1.777) | (1.372) | (1.464) | |
| MES | 1.43 *** | 0.482 | 1.747 *** | 0.349 |
| (0.406) | (0.488) | (0.488) | (0.324) | |
| PES | 2.293 *** | 1.558 | 2.086 ** | 0.541 |
| (0.718) | (1.062) | (0.815) | (0.715) | |
| GES | 3.412 *** | 3.193 ** | 2.75 ** | 0.785 |
| (1.1) | (1.308) | (1.215) | (0.964) | |
| Constant | 1.865 | 3.25 * | 1.768 | 2.396 ** |
| (1.179) | (1.766) | (1.43) | (1.122) | |
| Controls | Yes | Yes | Yes | Yes |
| Firm FE | Yes | Yes | Yes | Yes |
| Year FE | Yes | Yes | Yes | Yes |
| Observations | 1405 | 1405 | 2299 | 2299 |
| R-squared | 0.109 | 0.078 | 0.13 | 0.064 |
| Variables | (1) | Variables | (2) |
|---|---|---|---|
| GTEE | GTEE | ||
| FES | 8.574 *** | FES | 10.707 *** |
| (1.561) | (2.983) | ||
| MES | 1.092 ** | MES | −0.119 |
| (0.471) | (0.983) | ||
| PES | 4.025 *** | PES | 0.284 |
| (0.934) | (1.881) | ||
| GES | 2.079 ** | GES | 2.366 * |
| (1.043) | (1.323) | ||
| EPU | −0.486 | CPU | −0.02 |
| (1.061) | (0.115) | ||
| FES × EPU | −13.517 * | FES × CPU | −2.133 * |
| (8.2) | (1.231) | ||
| MES × EPU | −0.78 | MES × CPU | 0.346 |
| (2.419) | (0.41) | ||
| PES × EPU | −8.009 | PES × CPU | 0.801 |
| (5.304) | (0.839) | ||
| GES × EPU | 3.568 | GES × CPU | −0.143 |
| (6.04) | (0.556) | ||
| Constant | 0.742 | Constant | 2.453 *** |
| (1.073) | (0.836) | ||
| Controls | Yes | Controls | Yes |
| Firm FE | Yes | Firm FE | Yes |
| Year FE | Yes | Year FE | Yes |
| Observations | 3441 | Observations | 4708 |
| R-squared | 0.067 | R-squared | 0.083 |
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© 2026 by the authors. Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license.
Share and Cite
Wang, J.; Wang, C.; Chen, T.; Tong, M. How Do Multi-Actor Environmental Sentiment Tendencies Affect the Green Transformation of Chinese Energy Companies? The Moderating Role of Economic and Climate Policy Uncertainty. Sustainability 2026, 18, 3190. https://doi.org/10.3390/su18073190
Wang J, Wang C, Chen T, Tong M. How Do Multi-Actor Environmental Sentiment Tendencies Affect the Green Transformation of Chinese Energy Companies? The Moderating Role of Economic and Climate Policy Uncertainty. Sustainability. 2026; 18(7):3190. https://doi.org/10.3390/su18073190
Chicago/Turabian StyleWang, Jiaqi, Chengping Wang, Tingqiang Chen, and Maodi Tong. 2026. "How Do Multi-Actor Environmental Sentiment Tendencies Affect the Green Transformation of Chinese Energy Companies? The Moderating Role of Economic and Climate Policy Uncertainty" Sustainability 18, no. 7: 3190. https://doi.org/10.3390/su18073190
APA StyleWang, J., Wang, C., Chen, T., & Tong, M. (2026). How Do Multi-Actor Environmental Sentiment Tendencies Affect the Green Transformation of Chinese Energy Companies? The Moderating Role of Economic and Climate Policy Uncertainty. Sustainability, 18(7), 3190. https://doi.org/10.3390/su18073190

