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Onto-based sentiment classification using machine learning techniques

机译:使用机器学习技术进行基于情感的分类

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Sentiment analysis is a methodology used to analyse the emotion or view of an individual to a situation or topic. In present scenario, Social media is the source for the collection of individual's feedbacks, user's emotions, reviews and personal experiences which lead to a need for efficient mining of the text to derive knowledge. An optimal classification of text based on emotion is an unsolved problem in text mining. To extract knowledge from text many machine learning tools and techniques were proposed. An onto-based process is proposed to analyse the customer's emotion in this paper. The input emotional text that needs to be classified is given as input to the NLP and processed and an emotional ontology is created for better understanding of the semantics and relationships. When adding new instances, Ontology can be automatically classify them based on emotional relationship. The Emowords from ontology can be further classified using any of the standard machine learning techniques which definitively gives a better performance. This paper is a review of all the machine learning techniques that can be applied on the semantic analysis of sentiments.
机译:情感分析是一种用于分析个人对情况或主题的情感或看法的方法。在当前情况下,社交媒体是收集个人反馈,用户情绪,评论和个人经历的来源,这导致需要有效挖掘文本以获取知识。基于情感的文本最佳分类是文本挖掘中尚未解决的问题。为了从文本中提取知识,提出了许多机器学习工具和技术。本文提出了一个基于本体的过程来分析客户的情绪。将需要分类的输入情感文本作为NLP的输入,进行处理,并创建情感本体以更好地理解语义和关系。添加新实例时,本体可以根据情感关系自动对它们进行分类。可以使用任何标准的机器学习技术对来自本体的词进行进一步分类,这些技术可以最终提供更好的性能。本文是对可用于情感语义分析的所有机器学习技术的综述。

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