面向情感识别的印尼推特数据预处理

Ekasari Nugraheni
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引用次数: 8

摘要

2019年印尼总统大选引发了尖锐的政治两极分化。两大阵营之间的争论在社交媒体上展开。可以很容易地找到显示人们如何思考和行动的公众舆论的各个方面。Twitter作为最受欢迎的微博平台,提供了一个表达各种想法和观点的场所。这使得Twitter成为一个意见挖掘的来源,可以用来检测人们对事件的情感感受。本文探讨了基于与印尼总统候选人辩论相关的Twitter对话的情感识别文本分类的预处理阶段。数据预处理是情感分析的一个重要步骤,因为分析结果受到所提供数据质量的强烈影响。使用印度尼西亚Twitter数据集进行了综合数据处理。使用深度学习模型MLP和LSTM来测试分析的准确性。结果表明,采用适当的预处理技术可以提高精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Indonesian Twitter Data Pre-processing for the Emotion Recognition
The 2019 Presidential Election in Indonesia causes sharp political polarization. The battle of discourse between two massive camps took place on social media. Various aspects of public opinion showing how people think and act can be found easily. Twitter as the most popular microblogging platform, offers a place to express a variety of thoughts and opinions. This makes Twitter as a source of opinion mining that can be used to detect people's emotional feelings about an event. This paper explores the pre-processing stages of text classification for the emotion recognition based on Twitter conversations that correlate with the debate of Indonesian presidential candidates. Data pre-processing is an important step in sentiment analysis because the results of the analysis are strongly affected by the quality of the data provided. A combination of data processing has been carried out using Indonesian Twitter datasets. The accuracy of the analysis was tested using a deep learning model MLP and LSTM. The results show that the use of appropriate pre-processing techniques can improve accuracy.
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