LGMLJun 12, 2019

Coresets for Gaussian Mixture Models of Any Shape

arXiv:1906.04895v15 citations
Originality Highly original
AI Analysis

This work addresses the challenge of efficiently learning GMMs for arbitrary shapes, which is significant for data analysis and machine learning applications, representing a novel extension beyond previous results limited to semi-spherical Gaussians.

The paper tackles the problem of approximating Gaussian Mixture Models (GMMs) of arbitrary shapes by introducing the first coresets that approximate the negative log-likelihood for k-GMMs, achieving a coreset size of (log n)^{O(1)}/ε^2 and computation time near-linear in n with high probability.

An $\varepsilon$-coreset for a given set $D$ of $n$ points, is usually a small weighted set, such that querying the coreset \emph{provably} yields a $(1+\varepsilon)$-factor approximation to the original (full) dataset, for a given family of queries. Using existing techniques, coresets can be maintained for streaming, dynamic (insertion/deletions), and distributed data in parallel, e.g. on a network, GPU or cloud. We suggest the first coresets that approximate the negative log-likelihood for $k$-Gaussians Mixture Models (GMM) of arbitrary shapes (ratio between eigenvalues of their covariance matrices). For example, for any input set $D$ whose coordinates are integers in $[-n^{100},n^{100}]$ and any fixed $k,d\geq 1$, the coreset size is $(\log n)^{O(1)}/\varepsilon^2$, and can be computed in time near-linear in $n$, with high probability. The optimal GMM may then be approximated quickly by learning the small coreset. Previous results [NIPS'11, JMLR'18] suggested such small coresets for the case of semi-speherical unit Gaussians, i.e., where their corresponding eigenvalues are constants between $\frac{1}{2π}$ to $2π$. Our main technique is a reduction between coresets for $k$-GMMs and projective clustering problems. We implemented our algorithms, and provide open code, and experimental results. Since our coresets are generic, with no special dependency on GMMs, we hope that they will be useful for many other functions.

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