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A Systematic Review of Cross-Lingual Sentiment Analysis: Tasks, Strategies, and Prospects

Published: 09 April 2024 Publication History

Abstract

Traditional methods for sentiment analysis, when applied in a monolingual context, often yield less than optimal results in multilingual settings. This underscores the need for a more thorough exploration of cross-lingual sentiment analysis (CLSA) methodologies to improve analytical effectiveness. CLSA, confronted with obstacles such as linguistic disparities and a lack of resources, seeks to evaluate sentiments across a range of languages. First, the research background, challenges, existing solution ideas, and evaluation tasks of CLSA are summarized. Subsequently, new perspectives including different granularity levels, machine translation support, and sentiment transfer strategies perspectives are highlighted. Finally, potential avenues for future research are discussed.

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  • (2024)A Hybrid Frequency Based, Syntax, and Conditional Random Field Method for Implicit and Explicit Aspect ExtractionIEEE Access10.1109/ACCESS.2024.340347912(72361-72373)Online publication date: 2024

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  1. A Systematic Review of Cross-Lingual Sentiment Analysis: Tasks, Strategies, and Prospects

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      cover image ACM Computing Surveys
      ACM Computing Surveys  Volume 56, Issue 7
      July 2024
      1006 pages
      EISSN:1557-7341
      DOI:10.1145/3613612
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      Publication History

      Published: 09 April 2024
      Online AM: 08 February 2024
      Accepted: 31 January 2024
      Revised: 18 December 2023
      Received: 20 April 2022
      Published in CSUR Volume 56, Issue 7

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      1. Cross-lingual sentiment analysis
      2. coarse- and fine-grained sentiment analysis
      3. machine translation
      4. sentiment transfer strategy
      5. summary research

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      • National Natural Science Foundation of China
      • Ministry of Education Chunhui Plan Cooperation Project
      • Shanxi Federation of Social Sciences 2023-2024 Key Project
      • Centralized Guided Local Science and Technology Development Funds Project
      • Shanxi Province Basic Research Plan
      • Outstanding Innovation Project for Graduate Students in Shanxi Province

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      • (2024)A Hybrid Frequency Based, Syntax, and Conditional Random Field Method for Implicit and Explicit Aspect ExtractionIEEE Access10.1109/ACCESS.2024.340347912(72361-72373)Online publication date: 2024

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