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Negation Handling using Stacking Ensemble Method

机译:使用堆叠集成方法进行否定处理

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摘要

Polarity shift is the major problem in the Bag-of-words model. Polarity shifting occurs when the polarity of the sentence is different from the polarity expressed by the sum of the content words in the sentence. Polarity shift reverses the sentiment polarity of the text. It affects the classification performance of the machine learning algorithms. Negation, contrast and sentiment inconsistency are the three different types of polarity shifts. The proposed system consists of four modules namely preprocessing, polarity shift detection and elimination, sentiment classification, and stacking ensemble method. Polarity shift detection is a hybrid approach. It is a combination of rule and statistic based method. Linear Support Vector Machine, Logistic Regression and Naive Bayes are used for sentiment classification. The Weka tool is used for the implementation of the machine learning algorithms. Stacking ensemble method combines the output of the base classifiers and gives the integrated model. The paper focuses on the document level sentiment analysis. Stacking ensemble method helps to increase the accuracy of the machine learning algorithms. The system is analyzed using airline reviews. Airline reviews are taken from Skytrax website. Reviews are categorized into four types namely airline, airport, lounge, and seat. Best airline of the year can be identified by the proposed system.
机译:极性移动是“词袋”模型中的主要问题。当句子的极性与句子中内容词之和表示的极性不同时,就会发生极性转换。极性转换会反转文本的情感极性。它影响机器学习算法的分类性能。否定,对比和情感不一致是极性转移的三种不同类型。所提出的系统由四个模块组成,即预处理,极性移位检测和消除,情感分类和堆叠集成方法。极性偏移检测是一种混合方法。它是基于规则和统计的方法的组合。线性支持向量机,逻辑回归和朴素贝叶斯用于情感分类。 Weka工具用于实现机器学习算法。堆叠集成方法结合了基本分类器的输出并给出了集成模型。本文着重于文档层面的情感分析。堆栈集成方法有助于提高机器学习算法的准确性。使用航空公司评论对系统进行分析。航空公司的评论来自Skytrax网站。评论分为四种类型,分别是航空公司,机场,休息室和座位。所建议的系统可以确定年度最佳航空公司。

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