IRLGDec 2, 2019

A Fast Matrix-Completion-Based Approach for Recommendation Systems

arXiv:1912.00600v21 citations
Originality Incremental advance
AI Analysis

This is an incremental improvement for recommendation systems, addressing efficiency and adaptability issues in matrix completion.

The paper tackles the challenge of applying Singular Value Threshold (SVT) to recommendation systems where matrix dimensions change, by proposing a probability completion model (PCM) that reduces computation time while maintaining data trend approximation, with results showing higher LCS scores and efficiency than SVT.

Matrix completion is widely used in machine learning, engineering control, image processing, and recommendation systems. Currently, a popular algorithm for matrix completion is Singular Value Threshold (SVT). In this algorithm, the singular value threshold should be set first. However, in a recommendation system, the dimension of the preference matrix keeps changing. Therefore, it is difficult to directly apply SVT. In addition, what the users of a recommendation system need is a sequence of personalized recommended results rather than the estimation of their scores. According to the above ideas, this paper proposes a novel approach named probability completion model~(PCM). By reducing the data dimension, the transitivity of the similar matrix, and singular value decomposition, this approach quickly obtains a completion matrix with the same probability distribution as the original matrix. The approach greatly reduces the computation time based on the accuracy of the sacrifice part, and can quickly obtain a low-rank similarity matrix with data trend approximation properties. The experimental results show that PCM can quickly generate a complementary matrix with similar data trends as the original matrix. The LCS score and efficiency of PCM are both higher than SVT.

Foundations

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