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Interpretive structure modelling(ISM) for feature dependency in sentiment analysis

机译:情感分析特征依赖性的解释性结构建模(ISM)

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Under the domain of text mining, Sentiment Analysis is a field that is in progress these days. Sentiment analysis is the calculative analysis of views, sentiments, opinions and positivity or negativity of a text. This paper identifies the factors that are responsible for the different sentiments of a person regarding a particular entity. In this work, the objective is to categorize the factors that influence the system of sentiment analysis due to varied sentiments of an individual. The methodology of Interpretative Structure Modeling has been employed for identifying the driving power and the dependent power of the various elements influencing sentiment analysis.
机译:在文本挖掘领域下,情绪分析是目前正在进行的领域。情绪分析是对文本的观点,情绪,意见和积极性或消极性的计算分析。本文确定了对特定实体的人不同情绪负责的因素。在这项工作中,该目标是将由于个体情绪变化的情绪为导致影响情绪分析系统的因素进行分类。解释性结构建模的方法学已用于识别影响情绪分析的各种元件的驱动力和依赖性。

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