Text Representation for Sentiment Analysis: From Static to Dynamic

P. M. Gavali, Suresh K. Shiragave
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Abstract

Text representation in a vector, known as embedding, is crucial for various classification tasks including sentiment analysis. It helps to process and understand natural language text more effectively. It has evolved from static approaches, such as bag-of-words and n-grams, to more dynamic approaches that consider the context and meaning of words, such as word embeddings and contextualized embeddings. Word embeddings use neural networks to learn vector representations of words based on their co-occurrence patterns in large text corpora. On the other hand, contextualized embeddings, such as BERT, consider the context of each word within a sentence or document to generate more nuanced representations. Numerous researchers have suggested modifying the original Word2Vec and BERT embeddings to include sentiment information. This paper provides a comprehensive overview of these methods by including a detailed discussion of various evaluation techniques. The paper also outlines several challenges related to embeddings that can be addressed in order to improve the results of sentiment analysis.
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情感分析的文本表示:从静态到动态
向量中的文本表示,即嵌入,对于包括情感分析在内的各种分类任务至关重要。它有助于更有效地处理和理解自然语言文本。它已经从静态方法,如词袋和n-grams,发展到考虑词的上下文和含义的更动态的方法,如词嵌入和上下文化嵌入。词嵌入使用神经网络来学习基于大型文本语料库中词的共现模式的向量表示。另一方面,上下文化嵌入,如BERT,考虑句子或文档中每个单词的上下文,以生成更细微的表示。许多研究人员建议修改原始的Word2Vec和BERT嵌入来包含情感信息。本文通过对各种评估技术的详细讨论,提供了这些方法的全面概述。本文还概述了与嵌入相关的几个挑战,这些挑战可以解决,以改善情感分析的结果。
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