Amrita-CEN-SentiDB: Twitter Dataset for Sentimental Analysis and Application of Classical Machine Learning and Deep Learning

K. Naveenkumar, R. Vinayakumar, K. Soman
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引用次数: 2

Abstract

Social media is a platform in which the data is generated each and every day in an abundance manner. The data is so large that cannot be easily understood, so this has paved a path to a new field in the information technology which is natural language processing. In this paper, we use the text data for classification of tweets that determines the state of the person according of the sentiments which is positive, negative and neutral. Emotions are common between humans which has a way to express it that decides the person’s feelings which has a high influence on the decision making tasks. Here we have proposed the text representation, Term Frequency Inverse Document Frequency (tfidf), Keras embedding along with the machine learning and deep learning algorithms for classification of the sentiments, out of which Logistics Regression machine learning based methods out performs well when the features is taken in the limited amount as the features increases Support Vector Machine (SVM) that belongs to machine learning algorithm out performs well making a benchmark accuracy for this dataset as the 75.8%. The dataset is made publically available for research purpose.
Amrita-CEN-SentiDB:用于情感分析和经典机器学习和深度学习应用的Twitter数据集
社交媒体是一个每天以丰富的方式生成数据的平台。数据是如此之大,以至于不容易理解,因此这为信息技术的一个新领域铺平了道路,即自然语言处理。在本文中,我们使用文本数据对推文进行分类,根据积极、消极和中性的情绪来确定人的状态。情绪是人类之间常见的,它有一种表达方式,决定了一个人的感受,对决策任务有很大的影响。在这里,我们提出了文本表示、术语频率逆文档频率(tfidf)、Keras嵌入以及用于情感分类的机器学习和深度学习算法。其中,基于logistic回归的机器学习方法在特征数量有限时表现良好,因为特征增加了,属于机器学习算法的支持向量机(SVM)表现良好,该数据集的基准准确率为75.8%。该数据集是为研究目的而公开的。
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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