A systematic review and research contributions on aspect-based sentiment analysis using twitter data

Pub Date : 2023-11-20 DOI:10.3233/idt-220063
N.S. Ninu Preetha, G. Brammya, Mahbub Arab Majumder, M.K. Nagarajan, M. Therasa
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Abstract

Recently, Aspect-based Sentiment Analysis (ABSA) is considered a more demanding research topic that tries to discover the sentiment of particular aspects of the text. The key issue of this model is to discover the significant contexts for diverse aspects in an accurate manner. There will be variation among the sentiment of a few contexts based on their aspect, which stands as another challenging point that puts off the high performance. The major intent of this paper is to plan an analysis of ABSA using twitter data. The review is concentrated on a detailed analysis of diverse models performing the ABSA. Here, the main challenges and drawbacks based on ABSA baseline approaches are analyzed from the past 10 years’ references. Moreover, this review will also focus on analyzing different tools, and different data utilized by each contribution. Additionally, diverse machine learning is categorized according to their existence. This survey also points out the performance metrics and best performance values to validate the effectiveness of entire contributions. Finally, it highlights the challenges and research gaps to be addressed in modeling and learning about effectual, competent, and vigorous deep-learning algorithms for ABSA and pays attention to new directions for effective future research.
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基于方面的twitter数据情感分析的系统回顾和研究贡献
近年来,基于方面的情感分析(ABSA)被认为是一个要求更高的研究课题,它试图发现文本特定方面的情感。该模型的关键问题是准确地发现不同方面的重要上下文。一些上下文的情绪会根据其方面而变化,这是另一个阻碍高性能的挑战点。本文的主要目的是计划使用twitter数据对ABSA进行分析。本综述集中于对执行ABSA的各种模型的详细分析。本文从过去10年的参考文献中分析了基于ABSA基线方法的主要挑战和缺点。此外,本综述还将重点分析不同的工具,以及每个贡献使用的不同数据。此外,不同的机器学习根据它们的存在进行分类。本调查还指出了绩效指标和最佳绩效值,以验证整个贡献的有效性。最后,本文强调了在建模和学习有效、有效和有力的ABSA深度学习算法方面需要解决的挑战和研究差距,并关注了未来有效研究的新方向。
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