使用自然语言处理的推特情感分析

Suhashini Chaurasia, S. Sherekar, Vilas Thakare
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引用次数: 0

摘要

社交媒体是用户生成的最丰富的文本来源。因此,有必要将该系统自动化,以帮助组织和分类发布在社交媒体网站上的意见。提出了一种基于双向长短期记忆的人工循环神经网络(ARNN)的情感分类方法框架。描述了具有双向LSTM的RNN的结构。使用双向LSTM模型分析了美国航空公司Twitter情绪数据集。实验采用不同长度的文本。本文用图形表示了分析结果。混淆矩阵显示了结果。最后得出结论,对情绪进行了分析,并将其分为积极、消极或中性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Twitter Sentiment Analysis using Natural Language Processing
Social media is the richest source of text generated by the user. So there is a necessity to automate the system to help organizing and classifying the opinions posted on social media sites. Proposed methodology framework using Artificial Recurrent Neural Network (ARNN) with bi-directional long short term memory (LSTM) has been used for the classification of sentiments. Structure for RNN with bidirectional LSTM is depicted. US airline Twitter sentiment dataset has been analysed using bidirectional LSTM model. Text with varying length is taken for the experiment. Graphical representation of the analysis has been depicted in this paper. Confusion matrix shows the result. At the end it is concluded that the sentiments are analysed and classified as positive, negative or neutral.
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