Twitter数据分析的有效信息检索框架

IF 0.5 Q4 COMPUTER SCIENCE, INFORMATION SYSTEMS International Journal of Information Retrieval Research Pub Date : 2023-07-14 DOI:10.4018/ijirr.325798
Ravindra Kumar Singh
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引用次数: 0

摘要

在更高的认知过程中,意见挖掘和情绪分析的广泛采用鼓励了对社交媒体数据的实时处理,以获取关于用户情绪极性、用户意见和当前趋势的见解。近年来,围绕数据的处理进行了大量的研究,以达到更高的准确性。但缩短处理时间仍然具有挑战性。后来,大数据技术应运而生,以解决这些挑战,但这些技术有其自身的复杂性,同时也给系统带来了硬件负担。本文的贡献是通过提供一个可跨越、快速和容错的框架来处理实时数据以提取隐藏的见解,从而触及上述挑战。该框架的通用性足以支持并行和分布式环境中的批处理以及实时数据流。对推特帖子上提出的框架进行的实验分析表明,与传统方法相比,该框架更快、更健壮、更容错、更准确。
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Effective Information Retrieval Framework for Twitter Data Analytics
The widespread adoption of opinion mining and sentiment analysis in higher cognitive processes encourages the need for real time processing of social media data to capture the insights about user's sentiment polarity, user's opinions, and current trends. In recent years, lots of studies were conducted around the processing of data to achieve higher accuracy. But reducing the time of processing still remained challenging. Later, big data technologies came into existence to solve these challenges but those have its own set of complexities along with having hardware deadweight on the system. The contribution of this article is to touch upon mentioned challenges by presenting a climbable, quick and fault tolerant framework to process real-time data to extract hidden insights. This framework is versatile enough to support batch processing along with real time data streams in parallel and distributed environment. Experimental analysis of proposed framework on twitter posts concludes it as quicker, robust, fault tolerant, and comparatively more accurate with traditional approaches.
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来源期刊
International Journal of Information Retrieval Research
International Journal of Information Retrieval Research COMPUTER SCIENCE, INFORMATION SYSTEMS-
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