Ensemble of Classifiers and Term Weighting Schemes for Sentiment Analysis in Turkish

Aytuğ Onan
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引用次数: 31

Abstract

With the advancement of information and communication technology, social networking and microblogging sites have become a vital source of information. Individuals can express their opinions, grievances, feelings, and attitudes about a variety of topics. Through microblogging platforms, they can express their opinions on current events and products. Sentiment analysis is a significant area of research in natural language processing because it aims to define the orientation of the sentiment contained in source materials. Twitter is one of the most popular microblogging sites on the internet, with millions of users daily publishing over one hundred million text messages (referred to as tweets). Choosing an appropriate term representation scheme for short text messages is critical. Term weighting schemes are critical representation schemes for text documents in the vector space model. We present a comprehensive analysis of Turkish sentiment analysis using nine supervised and unsupervised term weighting schemes in this paper. The predictive efficiency of term weighting schemes is investigated using four supervised learning algorithms (Naive Bayes, support vector machines, the k-nearest neighbor algorithm, and logistic regression) and three ensemble learning methods (AdaBoost, Bagging, and Random Subspace). The empirical evidence suggests that supervised term weighting models can outperform unsupervised term weighting models.
土耳其语情感分析的分类器集成和术语加权方案
随着信息通信技术的进步,社交网络和微博网站已经成为一个重要的信息来源。个人可以对各种话题表达自己的意见、不满、感受和态度。通过微博平台,他们可以表达对时事和产品的看法。情感分析是自然语言处理的一个重要研究领域,因为它旨在定义源材料中包含的情感取向。Twitter是互联网上最受欢迎的微博网站之一,每天有数百万用户发布超过1亿条短信(称为tweets)。为短文本消息选择合适的术语表示方案至关重要。术语加权方案是向量空间模型中文本文档的关键表示方案。我们提出了一个全面的分析土耳其情绪分析使用九个监督和无监督期限加权方案在本文中。使用四种监督学习算法(朴素贝叶斯、支持向量机、k近邻算法和逻辑回归)和三种集成学习方法(AdaBoost、Bagging和Random Subspace)研究了术语加权方案的预测效率。实证证据表明,监督项加权模型优于非监督项加权模型。
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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