A Dynamic Linear Bias Incorporation Scheme for Nonnegative Latent Factor Analysis
Yurong Zhong, Zhe Xie, Weiling Li, Xin Luo

TL;DR
This paper introduces a dynamic linear bias scheme for nonnegative latent factor analysis, improving scalability and representation accuracy for high-dimensional, incomplete data in real-world applications.
Contribution
It proposes a novel dynamic bias incorporation scheme that extends linear biases into matrices with binary switching, enhancing NLFA model scalability and effectiveness.
Findings
Outperforms state-of-the-art models in representation accuracy
Achieves high computational efficiency
Effective on real HDI datasets
Abstract
High-Dimensional and Incomplete (HDI) data is commonly encountered in big data-related applications like social network services systems, which are concerning the limited interactions among numerous nodes. Knowledge acquisition from HDI data is a vital issue in the domain of data science due to their embedded rich patterns like node behaviors, where the fundamental task is to perform HDI data representation learning. Nonnegative Latent Factor Analysis (NLFA) models have proven to possess the superiority to address this issue, where a linear bias incorporation (LBI) scheme is important in present the training overshooting and fluctuation, as well as preventing the model from premature convergence. However, existing LBI schemes are all statistic ones where the linear biases are fixed, which significantly restricts the scalability of the resultant NLFA model and results in loss of…
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Taxonomy
TopicsFace and Expression Recognition · Data Mining Algorithms and Applications · Gene expression and cancer classification
