情感分析的机器学习和基于词汇的技术结合

Seydeh Akram Saadat Neshan, R. Akbari
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引用次数: 7

摘要

今天,数以百万计的网络用户在互联网上发表他们对各种话题的看法。开发自动将这些观点分为积极、消极或中立的方法是很重要的。观点挖掘或情感分析被称为使用自然语言处理和信息检索方法对文本、聊天等的行为、观点和情感进行挖掘。本文旨在研究在情感分析的元分类器中结合机器学习方法的效果。机器学习方法使用基于词典的技术输出。这样,就可以计算出SentiWordNet词典的分数、Liu’s sentiment list、SentiStrength和sentiment words ratio,并将其作为机器学习技术的输入。意见的形容词、副词和动词用于意见建模,并从词汇中提取这些词的分数。实验结果表明,与本文评估的四种机器学习技术相比,元分类器对亚马逊和IMDB评论的分类准确率分别提高了0.9%和1.09%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Combination of Machine Learning and Lexicon Based Techniques for Sentiment Analysis
Today millions of web users put their opinions on the internet about various topics. Development of methods that automatically categorize these opinions to positive, negative or neutral is important. Opinion mining or sentiment analysis is known as mining of behavior, opinions and sentiments of the text, chat, etc. using natural language processing and information retrieval methods. The paper is aimed to study the effect of combining machine learning methods in a meta-classifier for sentiment analysis. The machine learning methods use the output of lexicon-based techniques. In this way, the score of SentiWordNet dictionary, Liu's sentiment list, SentiStrength and sentimental words ratios are computed and used as the input of machine learning techniques. Adjectives, adverbs and verbs of an opinion are used for opinion modeling and score of these words are extracted from lexicons. Experimental results show that the meta-classifier improve the accuracy of classification 0.9% and 1.09% for Amazon and IMDB reviews in comparison with the four machine learning techniques evaluated here.
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