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Exploiting Usage to Predict Instantaneous App Popularity: Trend Filters and Retention Rates

机译:利用用法预测瞬时应用程序流行度:趋势过滤器和保留率

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Popularity of mobile apps is traditionally measured by metrics such as the number of downloads, installations, or user ratings. A problem with these measures is that they reflect usage only indirectly. Indeed, retention rates, i.e., the number of days users continue to interact with an installed app, have been suggested to predict successful app lifecycles. We conduct the first independent and large-scale study of retention rates and usage trends on a dataset of app-usage data from a community of 339,842 users and more than 213,667 apps. Our analysis shows that, on average, applications lose 65% of their users in the first week, while very popular applications (top 100) lose only 35%. It also reveals, however, that many applications have more complex usage behaviour patterns due to seasonality, marketing, or other factors. To capture such effects, we develop a novel app-usage trend measure which provides instantaneous information about the popularity of an application. Analysis of our data using this trend filter shows that roughly 40% of all apps never gain more than a handful of users (Marginal apps). Less than 0.1% of the remaining 60% are constantly popular (Dominant apps), 1% have a quick drain of usage after an initial steep rise (Expired apps), and 6% continuously rise in popularity (Hot apps). From these, we can distinguish, for instance, trendsetters from copycat apps. We conclude by demonstrating that usage behaviour trend information can be used to develop better mobile app recommendations.
机译:移动应用的普及传统上由指标衡量,例如下载,安装或用户评级。这些措施的问题是它们仅间接反映使用。实际上,保留率,即用户继续与已安装的应用程序互动的天数,以预测成功的应用程序生命周期。我们通过339,842个用户的社区和超过213,667个应用程序的应用程序使用数据的数据集和使用趋势进行第一个独立和大规模的保留率和使用趋势。我们的分析表明,平均而言,应用程序在第一周中损失了65%的用户,而非常流行的应用程序(前100名)只损失35%。然而,它还揭示了许多应用因季节性,营销或其他因素而具有更复杂的使用行为模式。要捕获此类效果,我们开发了一种新颖的应用程序使用趋势措施,提供了有关应用程序普及的瞬时信息。使用此趋势过滤器的数据分析,显示大约40%的应用程序永远不会超过少数用户(边缘应用程序)。剩下的60%的0.1%不断流行(主导应用),在初步急剧上升(过期的应用程序)后,1%的使用量快速使用,并且普及(热门应用程序)连续上升6%。从这些中,我们可以区分,例如,来自CopyCat应用程序的潮流剂。我们通过展示使用行为趋势信息来结束,可以用于开发更好的移动应用程序建议。

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