基于深度学习多任务模型的阿拉伯语社交媒体文本分类

Ali A. Jalil, Ahmed H. Aliwy
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引用次数: 0

摘要

社交网站及其用户群的激增导致每天产生的数据量呈指数级增长。文本内容是这些平台上常见的一种数据类型,它已被证明对个人、群体和国家层面的决策过程具有重大影响。这些数据中最重要和最大的一部分是表达人类意图、感受和状况的文本。理解这些文本是数据分析面临的最大挑战之一。它是理解人们,他们的取向,在很多情况下做出决定,从而预测他们的行为的支柱。在本文中,提出了一个模型来理解人们在社交媒体平台上写的文本,从而了解人们对特定主题的态度,这些人的情绪,积极,消极和中立。同时,它也能提取这些人的情感。在这种背景下,该系统解决了自然语言处理中的许多任务,因此它使用了许多技术,包括话题分类器、情感分析器、讽刺检测器和情感分类器。CNN-BiLSTM用于话题分类、情感分析、讽刺检测和情感分类,其中f-measure、准确率分别为(97,97.58)%、(84,86)%、(95,97)%和(82,81.6)%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Classification of Arabic Social Media Texts Based on a Deep Learning Multi-Tasks Model
The proliferation of social networking sites and their user base has led to an exponential increase in the amount of data generated on a daily basis. Textual content is one type of data that is commonly found on these platforms, and it has been shown to have a signi fi cant impact on decision-making processes at the individual, group, and national levels. One of the most important and largest part of this data are the texts that express human intentions, feelings and condition. Understanding these texts is one of the biggest challenges that facing data analysis. It is the backbone for understanding people, their orientations, and making decisions in many cases and thus predicting their behavior. In this paper, a model was proposed for understanding texts that written by people on social media platforms, and hence knowing people ' s attitudes within speci fi c topics, the emotion of those people, positivity, negativity, and neutrality. Also, it extracts emotion of those people. In this context, the system solves many tasks in natural language processing therefore it uses many techniques including topic classi fi er, sentiment analyzer, sarcasm detector and emotion classi fi er. CNN-BiLSTM was used for topic classi fi er, sentiment analyzer, sarcasm detector, and emotion classi fi er where (f-measure, accuracy) were (97,97.58) %, (84,86) %, (95,97) %, and (82,81.6) % respectively.
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