Climate change and environmental sustainability are two interconnected and critical issues facing the planet. Climate change refers to long-term shifts in temperature, precipitation patterns, and other atmospheric conditions on Earth whereas environmental sustainability refers to meeting the needs of the present generation without compromising the ability of future generations to meet their own needs. It involves responsibly managing natural resources, protecting ecosystems, reducing pollution and waste, and promoting equitable and sustainable development. Text mining and sentiment analysis play a crucial role in managing climate change and promoting environmental sustainability
Text mining and sentiment analysis can provide valuable insights and intelligence to support decision-making, stakeholder engagement, risk management, policy analysis, corporate transparency, and communication efforts in the context of climate change and environmental sustainability. By harnessing the power of textual data analytics, organizations can better understand, respond to, and address the complex challenges posed by climate change and work towards a more sustainable and resilient future. Text mining and sentiment analysis can be used to analyze public opinions, attitudes, and perceptions towards climate change and environmental issues. By analyzing social media posts, news articles, blog posts, and other online content, organizations can gain insights into public sentiment, identify emerging trends, and understand the factors influencing public attitudes towards climate action and sustainability initiatives. Besides, Text mining and sentiment analysis can help organizations better understand the perspectives and concerns of various stakeholders, including policymakers, activists, businesses, and community members, regarding climate change and environmental sustainability. By analyzing stakeholder communications, organizations can identify key issues, areas of consensus, and potential barriers to collaboration, enabling more effective stakeholder engagement and communication strategies.
Text mining and sentiment analysis can assist in identifying and assessing environmental risks and threats associated with climate change, such as extreme weather events, natural disasters, and ecological disruptions. By analyzing textual data from sources such as news reports, scientific literature, and social media, organizations can monitor emerging risks, anticipate potential impacts, and develop proactive risk management strategies to mitigate environmental hazards and protect communities and ecosystems. In addition, Text mining and sentiment analysis can facilitate the analysis of corporate sustainability reports, environmental disclosures, and corporate social responsibility (CSR) communications issued by businesses and organizations. By analyzing textual data from these sources, stakeholders can evaluate the environmental performance, sustainability initiatives, and climate-related commitments of companies, identify areas for improvement, and hold businesses accountable for their environmental impact.
The book is aimed at providing up-to-date research on the emergence and role of text mining and sentiment analysis in predicting climate change and promoting environmental sustainability. There is a need to disseminate about various aspects and emerging trends involved in the nexus of text mining, sentiment analysis, climate change and environmental sustainability. The aim is to bring together readers such as researchers, developers, practitioners and educators interested in advancement of the state of role and applications of text mining and sentiment in climate change and environmental sustainability
Target Audience
Primary Market: Academic Researchers, Undergraduate & Postgraduate Students
Secondary Market: Industry Researchers, Non-Government and Government Organizations
Keywords: Climate change, Environmental Sustainability, Text Mining, Sentiment Analysis, Data Analytics, AI Algorithm