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Implicit Influencing Group Discovery from Mobile Applications Usage

机译:从移动应用程序使用中隐式影响组发现

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摘要

This paper presents an algorithmic approach to acquiring the influencing relationships among users by discovering implicit influencing group structure from smartphone usage. The method assumes that a time series of users' application downloads and activations can be represented by individual inter-personal influence factors. To achieve better predictive performance and also to avoid over-fitting, a latent feature model is employed. The method tries to extract the latent structures by monitoring cross validating predictive performances on approximated influence matrices with reduced ranks, which are generated based on an initial influence matrix obtained from a training set. The method adopts Nonnegative Matrix Factorization (NMF) to reduce the influence matrix dimension and thus to extract the latent features. To validate and demonstrate its ability, about 160 university students voluntarily participated in a mobile application usage monitoring experiment. An empirical study on real collected data reveals that the influencing structure consisted of six influencing groups with two types of mutual influence, i.e. intra-group influence and inter-group influence. The results also highlight the importance of sparseness control on NMF for discovering latent influencing groups. The obtained influencing structure provides better predictive performance than state-of-the-art collaborative filtering methods as well as conventional methods such as user-based collaborative filtering techniques and simple popularity.
机译:本文提出了一种通过从智能手机使用中发现隐式影响群体结构来获取用户之间影响关系的算法。该方法假定用户的应用程序下载和激活的时间序列可以由各个人际影响因素来表示。为了获得更好的预测性能并避免过度拟合,采用了潜在特征模型。该方法试图通过监视基于降低的秩的近似影响矩阵的交叉验证预测性能来提取潜在结构,该近似影响矩阵是基于从训练集中获得的初始影响矩阵生成的。该方法采用非负矩阵分解(NMF)来减小影响矩阵维,从而提取潜在特征。为了验证和演示其功能,约160名大学生自愿参加了移动应用程序使用情况监视实验。对真实收集的数据进行的实证研究表明,影响结构由六个影响组组成,具有两个相互影响的类型,即组内影响和组间影响。结果还强调了对NMF进行稀疏控制对于发现潜在影响群体的重要性。与最新的协作过滤方法以及常规方法(例如基于用户的协作过滤技术和简单的流行度)相比,所获得的影响结构提供了更好的预测性能。

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