Support Vector Machine based Word Embedding and Feature Reduction for Sentiment Analysis-A Study

P. P. Shelke, Ankita N. Korde
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引用次数: 4

Abstract

Sentiment analysis (SA), also called as opinion mining is the technique used to bring together the opinions of a specific entity or feature from reviews dataset. The opinions of other users help in performing the decision making process. This paper studies different methods that are aimed at performing sentiment analysis. These approaches vary from semantic based methods, machine learning, neural networks, and syntactical methods with each having its own strength. Although hybrid approach also exists, the main idea is to combine the strengths of two or more methods to increase the accuracy. A framework in which sentiment analysis is done by using the proposed word embedding and feature reduction techniques. Word embedding is a technique in which low-dimensional vector representation of words is provided. Feature reduction method employs a support vector machine (SVM) classifier. The framework will perform sentiment analysis of user opinions by using a machine learning approach and provides a recommendation system for the ease of decision making to users.
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基于支持向量机的词嵌入与特征约简情感分析研究
情感分析(SA),也称为意见挖掘,是一种用于从评论数据集中收集特定实体或特征的意见的技术。其他用户的意见有助于执行决策过程。本文研究了用于进行情感分析的不同方法。这些方法不同于基于语义的方法、机器学习、神经网络和语法方法,每种方法都有自己的优势。虽然混合方法也存在,但其主要思想是将两种或两种以上方法的优点结合起来以提高准确性。一种使用所提出的词嵌入和特征约简技术进行情感分析的框架。词嵌入是一种提供词的低维向量表示的技术。特征约简方法采用支持向量机(SVM)分类器。该框架将利用机器学习方法对用户意见进行情感分析,并为用户提供方便决策的推荐系统。
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