A Proposed Framework for Improving Analysis of Big Unstructured Data in Social Media

Mohamed Elsayed, A. Abdelwahab, Hatem Ahdelkader
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引用次数: 8

Abstract

With the rapid development of Big Data and the necessity for analyzing their huge volumes, the issue of Unstructured Data analysis in social media was appeared. The Data analysis process is very important in all fields as to make decisions at the right time and over certain facts. The usage of social media has become the latest trend in today's world in which users send, read posts known as ‘message’ and communicate with various groups. Users are sharing their regular life, posting their views on everything like products and locations. This data is extremely unstructured, making it hard to analyze. Machine learning technology offers important data preparation techniques for processing large-scale data to extract knowledge, e.g., classifying data. Extract useful information from social media data is essential to success in the big data age. Therefore, fresh strategies are needed for handling huge quantities of unstructured data and finding the hidden information in these data and achieving better data analysis outcomes, In this paper, the proposed framework recommends the construction of a machine-learning model capable of analyzing unstructured text data with highly accuracy compared to other machine learning algorithms.
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一种改进社交媒体大非结构化数据分析的建议框架
随着大数据的快速发展和对海量数据进行分析的需要,社交媒体中的非结构化数据分析问题应运而生。数据分析过程在所有领域都是非常重要的,因为它可以在正确的时间和特定的事实上做出决定。社交媒体的使用已经成为当今世界的最新趋势,用户在社交媒体上发送、阅读被称为“消息”的帖子,并与各种群体进行交流。用户正在分享他们的日常生活,发布他们对产品和地点等一切事物的看法。这些数据是非结构化的,很难分析。机器学习技术为处理大规模数据提取知识提供了重要的数据准备技术,例如对数据进行分类。从社交媒体数据中提取有用信息是在大数据时代取得成功的关键。因此,需要新的策略来处理大量的非结构化数据,并发现这些数据中的隐藏信息,从而获得更好的数据分析结果。本文提出的框架建议构建一种机器学习模型,与其他机器学习算法相比,该模型能够以较高的精度分析非结构化文本数据。
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