基于特征的情感分析,基于混合Bag-Boost算法的移动评论预测

Siva Kumar Pathuri, N. Anbazhagan, G. Prakash
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引用次数: 4

摘要

情感分析或观点挖掘是NLP(自然语言处理)的主要挑战之一。业务分析在当前场景中扮演着关键角色,因为人们认为他们想要增强他们的企业。特别是,这些人依靠商品的反馈来抵御竞争和知识挖掘,这可以让他们对未来的预期有一个出色的看法。很少的单词或短语可以决定结果或结果。因为这些人中的大多数寻求推动他们的公司,以便通过提供优质商品来实现充分的利益。在这方面,情感分析近年来获得了很多关注。SA是NLP的一个研究领域,用于对文本中特定特征的观点或观点进行分类。本文是基于不同的方法来识别一个特定的文本根据用户的意见传达,即是否个人的整体情绪是消极的,积极的或中立的。我们还研究了采用的两种先进方法(通过极性分类追求特征分类)以及实验结果。最后,本文比较了3种ML分类技术:1)Logistic回归,2)Hybid Bag-Boost算法,3)SVM,其中混合算法比其他3 ML算法具有更高的准确率。提出的方法的主要目的是预测用户评论,以便使用几种分类算法选择最佳移动设备。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Feature Based Sentimental Analysis for Prediction of Mobile Reviews Using Hybrid Bag-Boost algorithm
Sentiment analysis or opinion mining is one of the major challenge of NLP (natural language processing). Business Analytics plays a key role in the current scenario with a perception that people wants to enhance their enterprise. In particular, these people rely on feedback of their goods to withstand the competition and knowledge mining that can give them an outstanding view into what to expect in the future. Few words or phrases may decide results or outcomes. As a majority of these people seek to boost their company in order to achieve full benefit by providing premium goods. In this aspect, sentiment analysis has gained a lot of interest in the current years. SA is an area of research of NLP that is used to classify a specific feature's opinion or perspective within a text. This paper is based on the different methods used to identify a particular text according to the opinions conveyed by the user's i.e. whether the overall sentiment of a individual is negative or positive or neutral. We are also looking at the two advance approaches adopted (feature classification pursued by polarity classification) along with the experimental results. Finally in this paper we compared 3 ML classification techniques 1) Logistic Regression, 2) Hybid Bag-Boost algorithm 3) SVM in which hybrid algorithm provides more accuracy compared to the other 3 ML algorithms. The Main objective of the proposed method is to predict the user reviews for choosing a best mobile using several classification Algorithms.
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