MediaWatchers4Climate: Assessing the Accuracy of Climate Change Narratives in Greek Media Through Machine Learning
Abstract
:1. Introduction
1.1. The Influence of Public Perceptions by Media
1.2. Evolution of Public Opinion on Climate Change
1.3. Using Machine Learning for Analyzing News Articles
2. Materials and Methods
2.1. Research Aims and Project Motivation
2.2. The MediaWatch Tool
- Data Ingestion Module: This module continuously collects data from a diverse range of online media sources, including news websites, blogs, and news aggregators (approximately 2.300 Greek Media Outlets, accessed on 17 December 2024).
- The Natural Language Processing (NLP) Engine: Uses machine learning techniques to process and categorize articles based on their content and context.
- Clustering and similarity analysis: Identify related articles by analyzing common claims, quotes, topics, and entities, allowing users to track the evolution of narratives over time.
- Network analysis component: Map relationships between media outlets, identifying coordinated networks, and potential sources of disinformation.
2.3. Methodology
- Literature review
- Non-empirical studies, such as opinion articles, editorial notes, and non-peer-reviewed publications, were excluded as they do not meet the standards of academic rigor and scientific documentation. The use of strictly peer-reviewed articles enhances the reliability of the review and reduces the potential for bias.
- Studies that focused on highly specialized aspects of climate change without a social or communicative dimension were rejected.
- Title and authors of the study
- Publication date and source
- The research questions examined by the study
- The methodological approach followed
- Thematic areas identified in the study’s results
- Central concepts and narratives related to climate change
- Frequently recurring keywords and patterns that emerged from the study
Overview of Findings and Vocabulary Extraction
- Thematic areas:
- 2.
- Central notions and dominant narratives
- ✓
- Threat/emergency situation (e.g., climate crisis’, heatwaves’, floods’)
- ✓
- Technological optimism/hope (e.g., green growth’, ‘renewable energy’)
- ✓
- Responsibility/justice (e.g., ‘just transition’, ‘environmental responsibility’, ‘corporate social responsibility’).
- ✓
- Distrust/misinformation (e.g., ‘fake news’, ‘media bias’, ‘ideological framing’).
- 3.
- Frequently repeated keywords:
- ✓
- appearance in at least three reputable scientific sources
- ✓
- Lexical proximity to central concepts (e.g., ‘climate’, ‘green’, ‘CO2 emissions’)
- ✓
- The ability to detect narrative nuances or ideological context.
- Collection of news articles
- ➢
- Temporal representativeness: Media coverage of climate change-related issues such as fires in summer and floods and energy issues in winter varies with the seasons, and a full calendar year allows for the capture of these variations.
- ➢
- Operational competence and stability: The period that has been selected is when the MediaWatch data collection system was fully and continuously operational. This ensured a steady and consistent flow of articles without any technical interventions or changes to the system’s architecture.
- ➢
- Sufficiency for analysis: The twelve-month period provides adequate data quantity and range to underpin both statistically and thematically meaningful analyses, both at the level of individual sub-topics and in terms of overall accounts and tendencies.
- Annotation process
- ➢
- Content Analysis: Identification of contextual information related to thematic areas. For example, articles on social implications of climate change were labeled “Environmental Responsibility”.
- ➢
- Contextual Recording: Documentation of recurring concepts and patterns, ensuring consistency in classification.
- ➢
- Thematic Organization: Categorization of annotations into thematic tables, linking each article to relevant thematic categories.
- Training and fine-tuning process
3. Future Work and Recommendations of MediaWatchers4Climate
Author Contributions
Funding
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
Appendix A
A/A | Keyword | Source | Description |
---|---|---|---|
1 | Environmental Crisis | [30,38] | It is described as an urgent issue, often with a dramatic dimension in the media. |
2 | Impact of Climate Change | [34] | It encompasses the social, economic, and environmental consequences of climate change. |
3 | Global Warming | [1,33,34] | It is referred to as the main result of human-induced greenhouse gas emissions. |
4 | United Nations | [25,40] | The role of the UN in shaping international climate policies is highlighted. |
5 | Sustainability | [27] | It is linked to development strategies that ensure long-term environmental balance. |
6 | Sustainable | [27,46] | It focuses on sustainable development practices at the regional and global levels. |
7 | Just Transition | [26] | It refers to the need for a fair distribution of the burdens from the green transition. |
8 | Climate Migration | [38] | It focuses on population movements due to extreme climate events. |
9 | Natural Resources | [38,40,41] | It includes the management and over-extraction of natural resources. |
10 | Drought | [38,41] | It appears as a consequence of climate change, with an emphasis on agriculture and water consumption. |
11 | Crops | [1,33,34] | The impact of climate change on agriculture and food security is highlighted. |
12 | Over-extraction | [1,33,34] | It is related to the excessive use of resources, particularly water and energy. |
13 | CSR | [26,33,34,44] | It highlights the responsibility of businesses for sustainable practices. |
14 | Environmental Responsibility | [34,44] | It focuses on institutional and individual responsibility for the environment. |
15 | Heatwave Temperatures | [26,44] | An extreme event that underscores the need for adaptation actions to climate change. |
16 | CO2 | [26,33,34,44] | It focuses on human-induced emissions as the primary cause of global warming. |
17 | Green Transition | [33,34] | A strategy for reducing emissions through innovative technologies and energy transition. |
18 | Green Development | [26,33,34,44] | It refers to economic development that integrates environmentally sustainable practices. |
19 | Overtourism | [25] | It highlights the environmental impacts of excessive tourism activity. |
20 | Greenhouse Effect | [33,37] | The scientific basis for understanding global warming. |
21 | Climate Change | [34,38] | It includes the gradual change in the climate and its causes. |
22 | Climate Crisis | [30,38] | It refers to the dramatic dimension of the phenomenon and the urgent need for action. |
23 | Extreme weather events | [33,44] | Phenomena such as floods, heatwaves, wildfires, and snowfalls. |
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# | Keyword/Keyword Combination |
---|---|
1 | (climate AND crisis) OR (climate AND change) OR (environmental AND crisis) |
2 | (global AND warming) OR (global AND overheating) |
3 | effect AND greenhouse |
4 | emissions AND CO2 |
5 | increase AND temperature |
6 | (climate AND disasters) OR (environmental disasters) |
7 | green AND development |
8 | planet |
9 | (green AND transition) OR (just AND transition) OR (sustainable AND transition) OR (sustainable AND model) |
10 | flood victims |
11 | natural AND resources OR drought OR crops OR over-extraction |
12 | overtourism |
13 | (individual AND responsibility) OR (social AND responsibility) OR (corporate AND responsibility) OR (environmental AND responsibility) |
14 | overheating OR snow OR (weather AND conditions) |
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Baltzi, T.; Nikitaki, S.; Galatsopoulou, F.; Kostarella, I.; Veglis, A.; Vasilopoulos, V.; Papaevagelou, D.; Skamnakis, A. MediaWatchers4Climate: Assessing the Accuracy of Climate Change Narratives in Greek Media Through Machine Learning. Mach. Learn. Knowl. Extr. 2025, 7, 53. https://doi.org/10.3390/make7020053
Baltzi T, Nikitaki S, Galatsopoulou F, Kostarella I, Veglis A, Vasilopoulos V, Papaevagelou D, Skamnakis A. MediaWatchers4Climate: Assessing the Accuracy of Climate Change Narratives in Greek Media Through Machine Learning. Machine Learning and Knowledge Extraction. 2025; 7(2):53. https://doi.org/10.3390/make7020053
Chicago/Turabian StyleBaltzi, Thomai, Stella Nikitaki, Fani Galatsopoulou, Ioanna Kostarella, Andreas Veglis, Vasilis Vasilopoulos, Dimitris Papaevagelou, and Antonis Skamnakis. 2025. "MediaWatchers4Climate: Assessing the Accuracy of Climate Change Narratives in Greek Media Through Machine Learning" Machine Learning and Knowledge Extraction 7, no. 2: 53. https://doi.org/10.3390/make7020053
APA StyleBaltzi, T., Nikitaki, S., Galatsopoulou, F., Kostarella, I., Veglis, A., Vasilopoulos, V., Papaevagelou, D., & Skamnakis, A. (2025). MediaWatchers4Climate: Assessing the Accuracy of Climate Change Narratives in Greek Media Through Machine Learning. Machine Learning and Knowledge Extraction, 7(2), 53. https://doi.org/10.3390/make7020053