IRMay 25, 2016

Structural Analysis of User Choices for Mobile App Recommendation

arXiv:1605.07980v133 citations
Originality Incremental advance
AI Analysis

This work addresses the problem of app discovery for users in mobile markets, offering an incremental improvement by incorporating structural app characteristics into recommendations.

The paper tackles the challenge of personalized mobile app recommendation by developing a Structural User Choice Model (SUCM) that exploits hierarchical taxonomy and competitive relationships among apps, resulting in significant performance improvements over state-of-the-art methods.

Advances in smartphone technology have promoted the rapid development of mobile apps. However, the availability of a huge number of mobile apps in application stores has imposed the challenge of finding the right apps to meet the user needs. Indeed, there is a critical demand for personalized app recommendations. Along this line, there are opportunities and challenges posed by two unique characteristics of mobile apps. First, app markets have organized apps in a hierarchical taxonomy. Second, apps with similar functionalities are competing with each other. While there are a variety of approaches for mobile app recommendations, these approaches do not have a focus on dealing with these opportunities and challenges. To this end, in this paper, we provide a systematic study for addressing these challenges. Specifically, we develop a Structural User Choice Model (SUCM) to learn fine-grained user preferences by exploiting the hierarchical taxonomy of apps as well as the competitive relationships among apps. Moreover, we design an efficient learning algorithm to estimate the parameters for the SUCM model. Finally, we perform extensive experiments on a large app adoption data set collected from Google Play. The results show that SUCM consistently outperforms state-of-the-art top-N recommendation methods by a significant margin.

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