Analyzing public sentiment on sustainability: A comprehensive review and application of sentiment analysis techniques

Tess Anderson, Sayani Sarkar, Robert Kelley
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Abstract

In the contemporary context of escalating environmental concerns, understanding public sentiment toward sustainability initiatives is crucial for shaping effective policies and practices. This research explores the efficacy of sentiment analysis in mining social media data to gauge public attitudes toward sustainability efforts. This study employs a variety of machine learning and deep learning models to perform sentiment analysis utilizing a dataset comprising tweets related to human perception towards environmental sustainability. The aim is to transform unstructured social media text into structured sentiment scores. The comparative analysis includes pre-trained sentiment analysis models like VADER, TextBlob, and Flair with traditional machine learning models such as Logistic Regression, SVM, Decision Tree, Naive Bayes, Random Forest, alongside advanced deep learning techniques like LSTM and pre-trained models BERT and GPT-2. Our results reveal significant variations in model performance, underscoring the importance of selecting appropriate sentiment analysis tools that align with the nuanced domain of sustainability. The study further emphasizes the role of transparent and reproducible research practices in advancing trustworthy AI applications. By providing insights into public opinions on sustainability, this research contributes to the broader discourse on leveraging AI to foster environmental responsibility and action. This work not only illustrates the potential of sentiment analysis in understanding public discourse but also highlights the critical need for tailored approaches that consider the specificity of the sustainability context.

分析公众对可持续发展的看法:情感分析技术的全面回顾与应用
在环境问题不断升级的当代背景下,了解公众对可持续发展倡议的看法对于制定有效的政策和实践至关重要。本研究探讨了情感分析在挖掘社交媒体数据以衡量公众对可持续发展努力的态度方面的功效。本研究采用了多种机器学习和深度学习模型,利用由与人类对环境可持续性的看法相关的推文组成的数据集进行情感分析。目的是将非结构化的社交媒体文本转化为结构化的情感评分。比较分析包括 VADER、TextBlob 和 Flair 等预先训练好的情感分析模型,以及逻辑回归、SVM、决策树、奈夫贝叶、随机森林等传统机器学习模型,还有 LSTM 等先进的深度学习技术以及 BERT 和 GPT-2 等预先训练好的模型。我们的研究结果表明,模型的性能差异很大,这凸显了选择适当的情感分析工具的重要性,这些工具应与细微的可持续发展领域相匹配。这项研究进一步强调了透明、可重复的研究实践在推进可信人工智能应用中的作用。通过深入了解公众对可持续发展的看法,这项研究为利用人工智能促进环境责任和行动的广泛讨论做出了贡献。这项工作不仅说明了情感分析在理解公众言论方面的潜力,还强调了考虑可持续发展背景特殊性的定制方法的迫切需要。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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