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Intraday-scale Long Interval Methodof Classifying Intramonth-ScaleRevisiting Mobile Users

机译:日间重访移动用户分类的日间长间隔方法

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Penetration of the mobile Internet has increased its visibility worldwide. This enables analysis of detailed time-dimensional user behavior data. It also increases the industry need to identify and retain mobile users with strong loyalty to a particular mobile Web site. The author proposes an intramonth-scale revisit classification method for identifying intramonth-scale, revisiting mobile users. The author performs a case study and the result shows that the proposed method shows 87 % classifier accuracy. The author discusses a trade-off between classifier accuracy and a true positive ratio.
机译:移动互联网的渗透已提高了其在世界范围内的知名度。这使得可以分析详细的时维用户行为数据。这也增加了行业对识别和保留忠于特定移动网站的移动用户的需求。作者提出了一种月内量表重访分类方法,用于识别月内量表,重新访问移动用户。作者进行了案例研究,结果表明,该方法显示了87%的分类器准确性。作者讨论了分类器准确性与真实正比之间的折衷。

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