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Accelerated Latent Factor Analysis for Recommender Systems via PID Controller

机译:通过PID控制器对推荐系统进行加速的潜在因子分析

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High-dimensional and sparse (HiDS) matrices generated by recommender systems (RSs) contain rich knowledge. A latent factor (LF) model can address such data effectively. Stochastic gradient descent (SGD) is an efficient algorithm for building a LF model on an HiDS matrix. However, it suffers slow convergence. To address this issue, this study proposes to implement a LF model with a proportional integral derivative (PID) controller. The main idea is to continuously apply a correction for SGD to accelerate the training process. Based on such design, a PID-based LF (PLF) model is proposed. Empirical studies on two HiDS matrices from RSs indicate that a PLF model outperforms an LF model in terms of both convergence rate and prediction accuracy for missing data.
机译:推荐系统(RS)生成的高维和稀疏(HiDS)矩阵包含丰富的知识。潜在因子(LF)模型可以有效处理此类数据。随机梯度下降(SGD)是一种在HiDS矩阵上建立LF模型的有效算法。但是,它的收敛速度很慢。为了解决这个问题,本研究建议采用带比例积分微分(PID)控制器的LF模型。主要思想是不断对SGD进行更正,以加快培训过程。基于这种设计,提出了一种基于PID的低频(PLF)模型。对来自RS的两个HiDS矩阵的实证研究表明,就丢失数据的收敛速度和预测准确性而言,PLF模型优于LF模型。

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