识别基于主题的评论情感值的机器学习方法

N. De Mel, H. H. Hettiarachchi, W. Madusanka, G. L. Malaka, A. Perera, U. Kohomban
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引用次数: 1

摘要

由于参与在线点评旅游相关实体(如酒店、城市和景点)的人数越来越多,网上有丰富的文本信息。然而,要对某个实体做出决定,就必须手动阅读许多这样的评论,这很不方便。要理解这些评论,关键的第一步是理解其中的语义。本文讨论了一个系统,该系统使用基于机器学习的分类器将文本中找到的实体标记为本体中定义的语义概念。开发了一个精度为0.785的主题分类器和一个相关系数为0.9423的情感分类器,为该系统的主题分类和情感评价提供了足够的精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine learning approach to recognize subject based sentiment values of reviews
Due to the increase in the number of people participating online on reviewing travel related entities such as hotels, cities and attractions, there is a rich corpus of textual information available online. However, to make a decision on a certain entity, one has to read many such reviews manually, which is inconvenient. To make sense of the reviews, the essential first step is to understand the semantics that lie therein. This paper discusses a system that uses machine learning based classifiers to label the entities found in text into semantic concepts defined in an ontology. A subject classifier with a precision of 0.785 and a sentiment classifier with a correlation coefficient of 0.9423 was developed providing sufficient accuracy for subject categorization and sentiment evaluation in the proposed system.
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