Architecture for enduring knowledge-extraction from online social networks

A. Mussina, S. Aubakirov, P. Trigo
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Abstract

Nowadays social networks and media play significant role in daily life. All our life in the real world is recorded in the digital space as well. Scientists have enormous potential in researching issues such as social influence ontop news and top news influence on society. Its impact on daily life spans such diverse areas as digital marketing, publicopinion analysis, political monitoring and disaster notification. Any task of processing such a large data stream needs acoherent architecture that will fit the analyzed resource. In the presented work, we set ourselves the task of creating ahighly loaded, fault-tolerant, scalable system for extracting and processing data from various social networks and analyzing data in real time. The solution is architecture in the form of a set of modules. Modules have their own characteristics depending on the work performed, from collecting textual data to direct processing and extraction of knowledge.
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从在线社交网络中持久提取知识的架构
如今,社交网络和媒体在日常生活中发挥着重要作用。我们在现实世界中的所有生活也都记录在数字空间中。科学家在研究热点新闻的社会影响和热点新闻对社会的影响等问题上具有巨大的潜力。它对日常生活的影响涵盖了数字营销、民意分析、政治监测和灾难通知等各个领域。处理如此大的数据流的任何任务都需要适合所分析资源的一致架构。在本文中,我们的任务是创建一个高负载、容错、可扩展的系统,用于从各种社交网络中提取和处理数据,并实时分析数据。解决方案是一组模块形式的体系结构。从收集文本数据到直接处理和提取知识,每个模块都有自己的特点,这取决于所执行的工作。
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