IRSep 11, 2017

A Broad Learning Approach for Context-Aware Mobile Application Recommendation

arXiv:1709.03621v120 citations
Originality Incremental advance
AI Analysis

This work addresses the problem of locating appropriate apps for users in crowded application stores, though it appears incremental as it builds on existing recommendation methods by incorporating context interactions.

The paper tackles the challenge of accurate mobile app recommendation by proposing a context-aware approach that integrates user preferences, app categories, and multi-view features using tensor analysis, achieving improved performance on real-world datasets.

With the rapid development of mobile apps, the availability of a large number of mobile apps in application stores brings challenge to locate appropriate apps for users. Providing accurate mobile app recommendation for users becomes an imperative task. Conventional approaches mainly focus on learning users' preferences and app features to predict the user-app ratings. However, most of them did not consider the interactions among the context information of apps. To address this issue, we propose a broad learning approach for \textbf{C}ontext-\textbf{A}ware app recommendation with \textbf{T}ensor \textbf{A}nalysis (CATA). Specifically, we utilize a tensor-based framework to effectively integrate user's preference, app category information and multi-view features to facilitate the performance of app rating prediction. The multidimensional structure is employed to capture the hidden relationships between multiple app categories with multi-view features. We develop an efficient factorization method which applies Tucker decomposition to learn the full-order interactions within multiple categories and features. Furthermore, we employ a group $\ell_{1}-$norm regularization to learn the group-wise feature importance of each view with respect to each app category. Experiments on two real-world mobile app datasets demonstrate the effectiveness of the proposed method.

Foundations

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