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Main Authors: Li, Jinli, Long, Shiyu, Han, Minglian
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2508.17609
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author Li, Jinli
Long, Shiyu
Han, Minglian
author_facet Li, Jinli
Long, Shiyu
Han, Minglian
contents In industrial big data scenarios, high-dimensional sparse matrices (HDI) are widely used to characterize high-order interaction relationships among massive nodes. The stochastic gradient descent-based latent factor analysis (SGD-LFA) method can effectively extract deep feature information embedded in HDI matrices. However, existing SGD-LFA methods exhibit significant limitations: their parameter update process relies solely on the instantaneous gradient information of current samples, failing to incorporate accumulated experiential knowledge from historical iterations or account for intrinsic correlations between samples, resulting in slow convergence speed and suboptimal generalization performance. Thus, this paper proposes a PILF model by developing a PI-accelerated SGD algorithm by integrating correlated instances and refining learning errors through proportional-integral (PI) control mechanism that current and historical information; Comparative experiments demonstrate the superior representation capability of the PILF model on HDI matrices
format Preprint
id arxiv_https___arxiv_org_abs_2508_17609
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle A Proportional-Integral Controller-Incorporated SGD Algorithm for High Efficient Latent Factor Analysis
Li, Jinli
Long, Shiyu
Han, Minglian
Machine Learning
In industrial big data scenarios, high-dimensional sparse matrices (HDI) are widely used to characterize high-order interaction relationships among massive nodes. The stochastic gradient descent-based latent factor analysis (SGD-LFA) method can effectively extract deep feature information embedded in HDI matrices. However, existing SGD-LFA methods exhibit significant limitations: their parameter update process relies solely on the instantaneous gradient information of current samples, failing to incorporate accumulated experiential knowledge from historical iterations or account for intrinsic correlations between samples, resulting in slow convergence speed and suboptimal generalization performance. Thus, this paper proposes a PILF model by developing a PI-accelerated SGD algorithm by integrating correlated instances and refining learning errors through proportional-integral (PI) control mechanism that current and historical information; Comparative experiments demonstrate the superior representation capability of the PILF model on HDI matrices
title A Proportional-Integral Controller-Incorporated SGD Algorithm for High Efficient Latent Factor Analysis
topic Machine Learning
url https://arxiv.org/abs/2508.17609