ATPP : A Mobile App Prediction System Based on Deep Marked Temporal Point Processes

Author:

Yang Kang1ORCID,Zhao Xi2ORCID,Zou Jianhua2ORCID,Du Wan1ORCID

Affiliation:

1. University of California, Merced, USA

2. Xi’an Jiaotong University, Xi’an, China

Abstract

Predicting the next application (app) a user will open is essential for improving the user experience, e.g., app pre-loading and app recommendation. Unlike previous solutions that only predict which app the user will open, this article predicts both the next app and the time to open it. Time prediction is essential to avoid loading the next app too early and consuming unnecessary resources on smartphones. To predict the next app and open time jointly, we model the app usage sequence as a marked temporal point process (MTPP), whose conditional intensity function can capture the probability of a new app usage event. We develop a novel data-driven MTPP-based app prediction system, named ATPP (App Temporal Point Process), which adopts a recurrent neural network architecture to learn the MTPP conditional intensity function for app prediction. ATPP adopts a set of techniques to incorporate the unique features of app prediction in our RNN architecture, including learning the correlated usage behavior of different apps by representation learning, the temporal dependency of app usage by an attention mechanism, and the location-related app usage behavior by feature extraction and fusion layer. We conduct extensive experiments on a large-scale anonymized app usage dataset to verify ATPP’s effectiveness.

Publisher

Association for Computing Machinery (ACM)

Subject

Computer Networks and Communications

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