CLAIJun 6, 2023

A Survey of Quantum-Cognitively Inspired Sentiment Analysis Models

arXiv:2306.03608v131 citationsh-index: 30
AI Analysis

It provides an overview of cross-disciplinary research for researchers in sentiment analysis and quantum cognition, but it is incremental as it surveys existing work rather than presenting new results.

This survey reviews quantum-cognitively inspired models for sentiment analysis, which leverage quantum probability and deep neural networks to address uncertainty and non-classical characteristics in human cognition, showing that these models perform well in this domain.

Quantum theory, originally proposed as a physical theory to describe the motions of microscopic particles, has been applied to various non-physics domains involving human cognition and decision-making that are inherently uncertain and exhibit certain non-classical, quantum-like characteristics. Sentiment analysis is a typical example of such domains. In the last few years, by leveraging the modeling power of quantum probability (a non-classical probability stemming from quantum mechanics methodology) and deep neural networks, a range of novel quantum-cognitively inspired models for sentiment analysis have emerged and performed well. This survey presents a timely overview of the latest developments in this fascinating cross-disciplinary area. We first provide a background of quantum probability and quantum cognition at a theoretical level, analyzing their advantages over classical theories in modeling the cognitive aspects of sentiment analysis. Then, recent quantum-cognitively inspired models are introduced and discussed in detail, focusing on how they approach the key challenges of the sentiment analysis task. Finally, we discuss the limitations of the current research and highlight future research directions.

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