Self-Organizing Maps with Optimized Latent Positions
Seiki Ubukata, Akira Notsu, Katsuhiro Honda

TL;DR
SOM-OLP introduces a scalable, objective-based topographic mapping method with continuous latent positions, improving efficiency and performance over traditional SOM variants.
Contribution
It proposes SOM-OLP, a novel objective-based SOM variant with continuous latent positions, offering efficient updates and improved scalability.
Findings
SOM-OLP achieves competitive neighborhood preservation and quantization.
It scales linearly with data points and latent nodes.
Outperforms existing methods on benchmark datasets.
Abstract
Self-Organizing Maps (SOM) are a classical method for unsupervised learning, vector quantization, and topographic mapping of high-dimensional data. However, existing SOM formulations often involve a trade-off between computational efficiency and a clearly defined optimization objective. Objective-based variants such as Soft Topographic Vector Quantization (STVQ) provide a principled formulation, but their neighborhood-coupled computations become expensive as the number of latent nodes increases. In this paper, we propose Self-Organizing Maps with Optimized Latent Positions (SOM-OLP), an objective-based topographic mapping method that introduces a continuous latent position for each data point. Starting from the neighborhood distortion of STVQ, we construct a separable surrogate local cost based on its local quadratic structure and formulate an entropy-regularized objective based on it.…
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