Twitter based model for emotional state classification

Ravinder Ahuja, Rohan Gupta, Saurabh Sharma, A. Govil, Karthik Venkataraman
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引用次数: 5

Abstract

With the advent and the subsequent rise of social network, there has been a surge of users expressing their emotions and daily feelings leveraging the social media platform. Each unit time, such data that is generated in monumental sizes, can be utilized to accurately detect one's emotional state. Twitter tweets is seen as a great source of information that can be exploited to build highly accurate and relevant emotion classifiers [1]. Through this paper, we aim to propose a model to classify an individual's recent emotional state into eight predefined states. We also subsequently compare the results and accuracy of SVM, KNN, Decision Tree & Naive Bayes algorithm to implement and justify our prescribed approach.
基于Twitter的情绪状态分类模型
随着社交网络的出现和兴起,越来越多的用户利用社交媒体平台来表达自己的情绪和日常感受。每一个单位时间,这样的数据产生了巨大的规模,可以用来准确地检测一个人的情绪状态。Twitter tweets被视为一个重要的信息来源,可以用来构建高度准确和相关的情感分类器[1]。通过本文,我们旨在提出一个模型,将个人最近的情绪状态划分为八个预定义的状态。随后,我们还比较了支持向量机、KNN、决策树和朴素贝叶斯算法的结果和准确性,以实现和证明我们规定的方法。
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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