比较意见挖掘:综述

Comparative opinion mining: A review

Journal of the Association for Information Science and Technology (JASIST) · 2016
被引 48
ABS 3

中文导读

这篇综述专门回顾比较意见挖掘这一子领域,从技术和比较意见要素两个角度梳理现有研究,并汇总预处理工具和数据集,对从事相关研究的学者有参考价值。

Abstract

Opinion mining refers to the use of natural language processing, text analysis, and computational linguistics to identify and extract subjective information in textual material. Opinion mining, also known as sentiment analysis, has received a lot of attention in recent times, as it provides a number of tools to analyze public opinion on a number of different topics. Comparative opinion mining is a subfield of opinion mining which deals with identifying and extracting information that is expressed in a comparative form (e.g., “paper X is better than the Y”). Comparative opinion mining plays a very important role when one tries to evaluate something because it provides a reference point for the comparison. This paper provides a review of the area of comparative opinion mining. It is the first review that cover specifically this topic as all previous reviews dealt mostly with general opinion mining. This survey covers comparative opinion mining from two different angles. One from the perspective of techniques and the other from the perspective of comparative opinion elements. It also incorporates preprocessing tools as well as data set that were used by past researchers that can be useful to future researchers in the field of comparative opinion mining.

意见挖掘情感分析自然语言处理计算语言学