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Unstructured Social Media Data Mining System Based on Emotional Database and Unstructured Information Management Architecture Framework

机译:基于情感数据库和非结构化信息管理架构框架的非结构化社交媒体数据挖掘系统

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摘要

We’re entering a new age of cloud and big data generated by social media and networks. Social media has become a popular tool that allows people to communicate and share information and the volume of data generated by social media continues to grow at a staggering rate in thesedays. Social media’s influence continues to grow and analyzing social media data is becoming an important issue for research and development and service to learn about what people think and how people feel. Social media data has properties different from traditional data. Thus, traditionaldata mining methods are not suitable for social media data and new data mining methods are needed to analyze them. In this paper, we develop a new social data mining system which consists of an emotional database and UIMA (Unstructured Information Management Architecture) analysis system.To build emotional database, we collect various unstructured data from social media and classify sentiment texts into eight emotions. UIMA analysis system performs a structure analysis on the social media data related to the keywords user type using the emotional database and provides thestatistical analysis result with graphs and numerical values in real time. We perform our experiments on tweet data from twitter to identify and predict sentiment on the topic user select.
机译:我们正在进入社交媒体和网络生成的云和大数据的新时代。社交媒体已成为一种流行的工具,允许人们沟通和共享信息以及社交媒体产生的数据量继续以惊人的速度在比赛中以惊人的速度增长。社交媒体的影响继续增长和分析社交媒体数据正在成为研究和开发和服务的重要问题,了解人们的思维和人们的感受。社交媒体数据具有与传统数据不同的属性。因此,传统的挖掘方法不适合社交媒体数据,并且需要新的数据挖掘方法来分析它们。在本文中,我们开发了一个新的社交数据挖掘系统,由情感数据库和UIMA(非结构化信息管理架构)分析系统组成。要构建情绪数据库,我们从社交媒体中收集各种非结构化数据,并将情绪文本分类为八个情绪。 UIMA分析系统使用情绪数据库对与关键字用户类型相关的社交媒体数据进行结构分析,并在实时向图形和数值提供统计分析结果。我们对来自Twitter的推文数据进行实验,以识别和预测主题用户选择的情绪。

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