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Real-Time Streaming Data Analysis Using a Three-Way Classification Method for Sentimental Analysis

机译:使用三向分类法进行实时流数据分析的情感分析

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This article describes how recent advances in computing have led to an increase in the generation of data in fields such as social media, medical, power and others. With the rapid increase in internet users, social media has given power for sentiment analysis or opinion mining. It is a highly challenging task for storing, querying and analyzing such types of data. This article aims at providing a solution to store, query and analyze streaming data using Apache Kafka as the platform and twitter data as an example for analysis. A three-way classification method is proposed for sentimental analysis of twitter data that combines both the approaches for knowledge-based and machine-learning using three stages namely emotion classification, word classification and sentiment classification. The hybrid three-way classification approach was evaluated using a sample of five query strings on twitter and compared with existing emotion classifier, polarity classifier and Naïve Bayes classifier for sentimental analysis. The accuracy of the results of the proposed approach is superior when compared to existing approaches.
机译:本文介绍了最新的计算进展如何导致社交媒体,医疗,电力等领域的数据生成量增加。随着互联网用户的快速增长,社交媒体已经具备了进行情感分析或观点挖掘的能力。存储,查询和分析此类数据是一项极富挑战性的任务。本文旨在提供一种使用Apache Kafka作为平台并使用Twitter数据作为分析示例来存储,查询和分析流数据的解决方案。提出了一种用于Twitter数据情感分析的三向分类方法,该方法将情感分类,单词分类和情感分类三个阶段结合了基于知识的学习方法和机器学习方法。使用Twitter上五个查询字符串的样本对混合三向分类方法进行了评估,并将其与现有的情感分类器,极性分类器和朴素贝叶斯分类器进行了情感分析。与现有方法相比,该方法结果的准确性更高。

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