Negative Dependence as a toolbox for machine learning : review and new developments
Hoang-Son Tran, Vladimir Petrovic, Remi Bardenet, Subhroshekhar Ghosh

TL;DR
This paper reviews the role of negative dependence in advancing machine learning, highlighting models like DPPs and their applications across various challenges, and introduces new results on neural network representations.
Contribution
It provides a comprehensive review of negative dependence in machine learning and presents new findings on DPP applications in neural network modeling.
Findings
Negative dependence models outperform traditional independence-based methods in several tasks.
DPPs and related models are effective in sampling, optimization, and signal processing.
New applications of DPPs to neural network representations are demonstrated.
Abstract
Negative dependence is becoming a key driver in advancing learning capabilities beyond the limits of traditional independence. Recent developments have evidenced support towards negatively dependent systems as a learning paradigm in a broad range of fundamental machine learning challenges including optimization, sampling, dimensionality reduction and sparse signal recovery, often surpassing the performance of current methods based on statistical independence. The most popular negatively dependent model has been that of determinantal point processes (DPPs), which have their origins in quantum theory. However, other models, such as perturbed lattice models, strongly Rayleigh measures, zeros of random functions have gained salience in various learning applications. In this article, we review this burgeoning field of research, as it has developed over the past two decades or so. We also…
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Taxonomy
TopicsAnomaly Detection Techniques and Applications
MethodsFocus · Coresets
