社交网络中双语事件数据的意见分析

I. Javed, H. Afzal
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引用次数: 9

摘要

在这个互联网时代,社交媒体平台已经成为连接人们的首选媒介。Twitter已经成为一个受欢迎的平台,允许用户分享他们对当前事件和政治组织的看法,提供丰富的政治信息。本研究的目的是利用自然语言处理技术来分析从Twitter中提取的数据集。这包括从Twitter上检索数据,使用深度学习方法执行情感分析,以及创建一个Python库,将输入文本分类为积极或消极。本研究使用的训练数据包括罗马-乌尔都语,包含89793个条目。使用各种分类模型对情绪进行分类,最终使用集合技术确定结果。LSTM分类器的准确率达到87%,而Bert模型的准确率达到90%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Opinion Analysis of Bi-Lingual Event Data from Social Networks
Social media platforms have become the go-to medium for connecting people in this era of the internet. Twitter has emerged as a popular platform that allowsusers to share their views on current events and political organizations, providing a wealth of political information. The aim of this study is to utilize natural language processing techniques to analyze a dataset extracted from Twitter. This involves retrieving data from Twitter, performing sentiment analysis using deeplearning approaches, and creating a Python library that classifiesinput texts as either positive or negative. The training data used in this study included the Roman-Urdu language, comprising 89793 entries. Various classification models were employed to categorize emotions, with the ensemble technique ultimately used to determine the results. The LSTM classifier achieved an accuracy of 87%, while the Bert model performed the best with 90% accuracy.
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