Sentiment Analysis: Linguistic Potential of Preprocessing Regimentation

A. Barkovich
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引用次数: 1

Abstract

The article deals with the sentiment analysis regimentation as a relevant direction in automated natural language processing and its linguistic potential. Despite its impressive practical significance, the sentiment analysis still lacks reliable theoretical foundation. Although information technologies develop very fast, their fundamental foundations correlate with the linguistic system of knowledge. In fact, the methodological priority of the applied linguistics has no alternative with regard to the interdisciplinary specificity of the modern communication. The complex nature of this research made the authors appeal to the computer linguistics in order to provide a meta-description on the algorithmization and modeling of sentiment evaluation. The effectiveness of the relevant practice was conditioned by the optimal configuration of the procedure and an appropriate material evaluation. The preprocessing included identifying the meta-structure, defining its referentiality and level orientation, and choosing the analysis model. The authors described these main steps of the preprocessing algorithm, as well as the relevant practice. The study contributes to productive theoretical optimization of text sentiment analysis. In a broad context, the expedient disclosure of linguistic potential is relevant to the whole sphere of automated natural language processing.
情感分析:预处理规范的语言潜力
本文论述了情感分析规范化作为自动化自然语言处理的一个相关方向及其语言学潜力。尽管情感分析具有重要的现实意义,但仍然缺乏可靠的理论基础。虽然信息技术发展非常迅速,但其基本基础与知识的语言系统有关。事实上,对于现代交际的跨学科特殊性,应用语言学的方法论优先权是无可替代的。由于该研究的复杂性,作者呼吁计算机语言学为情感评价的算法化和建模提供元描述。相关实践的有效性取决于程序的最佳配置和适当的材料评估。预处理包括识别元结构、定义元结构的参考意义和层次取向、选择元结构的分析模型。作者描述了这些预处理算法的主要步骤,以及相关的实践。该研究有助于文本情感分析的理论优化。在广泛的背景下,语言潜力的权宜之计披露与自动化自然语言处理的整个领域有关。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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