Sentiment-based search in digital libraries

Jin-Cheon Na, Christopher S. G. Khoo, Syin Chan, Norraihan Bte Hamzah
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引用次数: 9

Abstract

Several researchers have developed tools for classifying/ clustering Web search results into different topic areas (such as sports, movies, travel, etc.), and to help users identify relevant results quickly in the area of interest. This study follows a similar approach, but is in the area of sentiment classification - automatically classifying on-line review documents according to the overall sentiment expressed in them. This paper presents a prototype system that has been developed to perform sentiment categorization of Web search results. It assists users to quickly focus on recommended (or non-recommended) information by classifying Web search results into four categories: positive, negative, neutral, and non-review documents, by using an automatic classifier based on a supervised machine learning algorithm, support vector machine (SVM)
基于情感的数字图书馆搜索
一些研究人员开发了一些工具,用于将Web搜索结果分类/聚类到不同的主题领域(如体育、电影、旅游等),并帮助用户在感兴趣的领域快速识别相关结果。这项研究采用了类似的方法,但是在情感分类领域——根据在线评论文档中表达的整体情感自动分类。本文提出了一个对网络搜索结果进行情感分类的原型系统。它通过使用基于监督机器学习算法支持向量机(SVM)的自动分类器,将Web搜索结果分为四类:正面、负面、中性和非评论文档,从而帮助用户快速关注推荐(或非推荐)信息。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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