Reprint

AI Empowered Sentiment Analysis

Edited by
August 2024
266 pages
  • ISBN978-3-7258-1823-5 (Hardback)
  • ISBN978-3-7258-1824-2 (PDF)

This is a Reprint of the Special Issue AI Empowered Sentiment Analysis that was published in

Biology & Life Sciences
Chemistry & Materials Science
Computer Science & Mathematics
Engineering
Environmental & Earth Sciences
Physical Sciences
Summary

With the popularity of the social media, a large amount of user-generated content, such as comments, is emerging, which is crucial for all industries. Recently, the development of deep learning and computing power have made it possible to handle complex data. However, there are still some including (but are not limited to): (1) How can we construct a multi-modal sentiment analysis framework? (2) How can we accurately extract aspect–sentiment quadruples? (3) How can we generate fine-grained sentiment text? To tackle these challenges, this Special Issue focuses on multi-modal sentiment analysis, aspect–sentiment extraction, interpretability, and so on. In the following, we briefly summarize the selected two papers that we believe will make significant contributions. (1) "Generative Aspect Sentiment Quad Prediction with Self-Inference Template" by Li et al., considered that current research predominantly confines templates to single sentences, limiting the model’s reasoning opportunities. Therefore, the authors introduce a self-inference template (SIT) to guide the model in thoughtful reasoning. (2) "Interpretability in Sentiment Analysis: A Self-Supervised Approach to Sentiment Cue Extraction" by Sun et al., proposes a new sentiment cue extraction (SCE) self-supervised framework, aimed at improving the interpretability of models. In conclusion, we extend our heartfelt appreciation to all the authors and reviewers who selflessly put their energy to ensure the successful completion of this Special Issue.

Format
  • Hardback
License and Copyright
© 2024 by the authors; CC BY-NC-ND license
Keywords
artificial intelligence; natural language processing; controllable text generation; review generation; pre-trained language model; fine-grained sentiment; natural language processing; word embeddings; BERT; sentiment analysis; convolutional neural network; sentiment lexicon; autoregressive model; customer reviews; deep learning; emotion analysis; optimized classification; review text for online courses; sentiment analysis; attention mechanism; gating mechanism; ASTE; biaffine attention; structure-biased BERT; GCN; linguistic feature; aspect-level sentiment analysis; graph attention network; feature extract; scene generation; story visualization; GAN; story understanding; language learning; personality traits; sentiment analysis; text analytics; machine learning; MBTI; COVID-19; social media; Reddit; natural language processing; emotions; resilience; multimodal; emotion recognition; feature extraction; feature-level fusion; attention mechanism; speaker recognition; font recommendation system; content emotion analysis; emotion calculation models; usability evaluation; emotion-based font recommendation; multimodality; sentiment analysis; attention mechanism; triplet extraction; Graph Neural Networks; attention mechanism; sentiment cue extraction; self-supervised learning; interpretable machine learning; aspect-based sentiment analysis; aspect sentiment quad prediction; aspect-category-opinion-sentiment; chain of thought; prompt

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