迈向移动健康和健身应用的自动分类

Qiang Xu, George Ibrahim, Rong Zheng, N. Archer
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引用次数: 4

摘要

近年来,随着智能手机设备的爆炸式普及,移动健康和健身应用程序越来越多地被医疗从业人员和公众使用,以管理电子健康记录、慢性医疗状况、饮食参考等。尽管各种平台上的移动和健身应用数量快速增长,但对这些应用进行定量和定性评估以指导用户选择的工作却很少。移动健康和健身应用程序的自动分类是朝着这个方向迈出的第一步。在本文中,我们报告了2013年11月对1430个Android应用和62286个iOS应用的抓取结果。其中,1399个应用程序被人工分类为一个或多个类别,总共有11个类别。应用文本挖掘工具对应用的描述部分进行关键词提取、特征选择和自动分类。我们实验的分类器具有与线性SVC相当的性能,分别达到最高的精度,召回率和f1分数,分别为0.89,0.79和0.88。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Toward automated categorization of mobile health and fitness applications
In recent years, with the explosive adoption of smart phone devices, mobile health and fitness applications have been increasingly used by healthcare practitioners and the general public to manage electronic health records, chronic medical conditions, dietary references etc. Despite the rapid growth in the number of mobile and fitness applications on various platforms, very little work has been done to quantitatively and qualitatively assess these applications to guide users in the selection process. Automatic categorization of mobile health and fitness applications is the first step in this direction. In this paper, we report results from crawling 1,430 Android and 62,286 iOS apps in Nov. 2013. Among them, 1,399 apps were manually classified to one or multiple categories out of a total of 11 categories. Text mining tools were applied to the description section of the apps for keyword extraction, feature selection and automatic categorization. The classifiers we experimented with have comparable performance with Linear SVC achieving the highest precision, recall and f1 scores of 0.89, 0.79 and 0.88, respectively.
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