A System for Extracting Sentiment from Large-Scale Arabic Social Data

Hao Wang, Vijay R. Bommireddipalli, Ayman Hanafy, Mohamed Bahgat, Sara Noeman, O. Emam
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引用次数: 12

Abstract

Social media data in Arabic language is becoming more and more abundant. It is a consensus that valuable information lies in social media data. Mining this data and making the process easier are gaining momentum in the industries. This paper describes an enterprise system we developed for extracting sentiment from large volumes of social data in Arabic dialects. First, we give an overview of the Big Data system for information extraction from multilingual social data from a variety of sources. Then, we focus on the Arabic sentiment analysis capability that was built on top of the system including normalizing written Arabic dialects, building sentiment lexicons, sentiment classification, and performance evaluation. Lastly, we demonstrate the value of enriching sentiment results with user profiles in understanding sentiments of a specific user group.
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从大规模阿拉伯社会数据中提取情感的系统
阿拉伯语的社交媒体数据越来越丰富。有价值的信息存在于社交媒体数据中,这是一个共识。挖掘这些数据并简化流程的势头正在各行业中得到加强。本文描述了我们开发的一个企业系统,用于从大量阿拉伯方言的社会数据中提取情感。首先,我们概述了从各种来源的多语言社交数据中提取信息的大数据系统。然后,我们重点研究了建立在系统之上的阿拉伯语情感分析能力,包括阿拉伯语方言规范化、情感词典构建、情感分类和性能评估。最后,我们展示了用用户资料丰富情感结果在理解特定用户群体情感方面的价值。
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