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Classification of massive mobile web log URLs for customer profiling analytics

机译:海量移动Web日志URL的分类,用于客户分析和分析

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Many telecommunication companies today have actively started to transform the way they do business, going beyond communication infrastructure providers are repositioning themselves as data-driven service providers to create new revenue streams. In this paper, we present a novel industrial application where a scalable Big data approach combined with deep learning is used successfully to classify massive mobile web log data, to get new aggregated insights on customer web behaviors that could be applied to various industry verticals.
机译:如今,许多电信公司已经积极地开始改变其业务方式,超越了通信基础设施提供商,他们将自己重新定位为数据驱动的服务提供商,以创造新的收入流。在本文中,我们提出了一种新颖的工业应用程序,其中成功地使用可扩展的大数据方法与深度学习相结合来对海量移动Web日志数据进行分类,以获取有关可应用于各种垂直行业的客户Web行为的新汇总见解。

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