A Regularization-adaptive Non-negative Latent Factor Analysis-based Model For Recommender Systems

Jiufang Chen, Xin Luo, Mengchu Zhou
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引用次数: 2

Abstract

Non-negative latent factor analysis (NLFA) can high-efficiently extract useful information from high dimensional and sparse (HiDS) matrices often encountered in recommender systems (RSs). However, an NLFA-based model requires careful tuning of regularization coefficients, which is highly expensive in both time and computation. To address this issue, this study proposes an adaptive NLFA-based model whose regularization coefficients become self-adaptive via particle swarm optimization. Experimental results on two HiDS matrices indicate that owing to such self-adaptation, it outperforms an NLFA model in terms of both convergence rate and prediction accuracy for missing data estimation.
基于正则化自适应非负潜因子分析的推荐系统模型
非负潜因子分析(NLFA)可以从推荐系统中经常遇到的高维稀疏矩阵中高效地提取有用信息。然而,基于nlfa的模型需要仔细调整正则化系数,这在时间和计算上都是非常昂贵的。为了解决这一问题,本文提出了一种基于nlfa的自适应模型,该模型的正则化系数通过粒子群优化实现自适应。在两个HiDS矩阵上的实验结果表明,由于这种自适应,它在缺失数据估计的收敛速度和预测精度方面都优于NLFA模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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