使用自组织地图的无监督方面级情感分析

E. Chifu, Tiberiu St. Letia, V. Chifu
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引用次数: 7

摘要

提出了一种基于增长层次自组织图的面向方面层次情感分析的无监督方法。产品评论中的不同句子指的是被评论产品的不同方面。我们使用增长层次自组织图对复习句子进行分类。通过这种方式,我们可以确定目标实体(例如产品)的各个方面在评论句子中是否带有积极或消极的情绪。通过将句子根据领域特定的方面和与方面相关的情绪(积极/消极情绪)的树状本体分类法进行分类,我们真正地将句子中表达的关于目标对象不同方面的意见极性进行分类。所提出的方法已经在一系列产品评论上进行了测试,更确切地说,是关于相机的评论。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Unsupervised Aspect Level Sentiment Analysis Using Self-Organizing Maps
This paper presents an unsupervised method for aspect level sentiment analysis that uses the Growing Hierarchical Self-organizing Maps. Different sentences in a product review refer to different aspects of the reviewed product. We use the Growing Hierarchical Self-organizing Maps in order to classify the review sentences. This way we determine whether the various aspects of the target entity (e.g. a product) are opinionated with positive or negative sentiment in the review sentences. By classifying the sentences against a domain specific tree-like ontological taxonomy of aspects and sentiments associated with the aspects (positive/ negative sentiments), we really classify the opinion polarity as expressed in sentences about the different aspects of the target object. The approach proposed has been tested on a collection of product reviews, more exactly reviews about photo cameras.
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