Revisiting Probabilistic Latent Semantic Analysis: Extensions, Challenges and Insights

IF 4.2 Q1 ENGINEERING, MULTIDISCIPLINARY Technologies Pub Date : 2024-01-03 DOI:10.3390/technologies12010005
Pau Figuera, Pablo García Bringas
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Abstract

This manuscript provides a comprehensive exploration of Probabilistic latent semantic analysis (PLSA), highlighting its strengths, drawbacks, and challenges. The PLSA, originally a tool for information retrieval, provides a probabilistic sense for a table of co-occurrences as a mixture of multinomial distributions spanned over a latent class variable and adjusted with the expectation–maximization algorithm. The distributional assumptions and the iterative nature lead to a rigid model, dividing enthusiasts and detractors. Those drawbacks have led to several reformulations: the extension of the method to normal data distributions and a non-parametric formulation obtained with the help of Non-negative matrix factorization (NMF) techniques. Furthermore, the combination of theoretical studies and programming techniques alleviates the computational problem, thus making the potential of the method explicit: its relation with the Singular value decomposition (SVD), which means that PLSA can be used to satisfactorily support other techniques, such as the construction of Fisher kernels, the probabilistic interpretation of Principal component analysis (PCA), Transfer learning (TL), and the training of neural networks, among others. We also present open questions as a practical and theoretical research window.
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重新审视概率潜语义分析:扩展、挑战和启示
本手稿对概率潜在语义分析(Probabilistic latent semantic analysis,PLSA)进行了全面探讨,突出强调了其优点、缺点和挑战。概率潜语义分析(PLSA)最初是一种信息检索工具,它为共同出现表提供了一种概率意义上的方法,将其视为跨潜类变量的多二项分布的混合物,并通过期望最大化算法进行调整。分布假设和迭代性质导致了模型的僵化,使热衷者和反对者各执一词。这些弊端导致了几种新的方法:将该方法扩展到正态数据分布,以及借助非负矩阵因式分解(NMF)技术获得的非参数方法。此外,理论研究与编程技术的结合缓解了计算问题,从而明确了该方法的潜力:它与奇异值分解(SVD)的关系,这意味着 PLSA 可用于令人满意地支持其他技术,如构建费雪核、主成分分析(PCA)的概率解释、迁移学习(TL)和神经网络训练等。我们还提出了一些开放性问题,作为实践和理论研究的窗口。
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