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Analytical Estimation of Average Entropy for Gaussian Mixture Distributions


Temel Kavramlar
The authors develop an analytical method to estimate the average differential entropy of a Gaussian mixture distribution, where the component means are i.i.d. Gaussian vectors. They obtain a series expansion in the ratio of the variances of the component means and the shared covariance matrix, providing an approximation with a quantifiable error bound.
Özet
The key highlights and insights from the content are: Analytically computing or estimating the differential entropy of a Gaussian mixture is a difficult problem. Previous work has focused on providing upper bounds or numerical approximations, without closed-form expressions. The authors consider a special case where the Gaussian mixture has equal weights and a shared covariance matrix, but the component means are i.i.d. Gaussian vectors. They derive a series expansion in the ratio of the variances of the component means and the shared covariance matrix, obtaining results up to the second order. The authors show that their method avoids the need for splitting Gaussian components, which was required in previous approximation techniques. This allows them to quantify the order of magnitude for the error in their expansion. The authors provide two approaches to obtain the series expansion - a brute-force method and a determinant-based method. Both approaches yield consistent results up to the first two orders in the expansion parameter. The authors discuss the advantages of their analytical estimation method compared to previous work, including providing an explicit expression for the average entropy rather than just bounds, and the ability to quantify the error in the approximation.
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Önemli Bilgiler Şuradan Elde Edildi

by Bash... : arxiv.org 04-12-2024

https://arxiv.org/pdf/2404.07311.pdf
Average entropy of Gaussian mixtures

Daha Derin Sorular

How would the authors' approach extend to the case of Gaussian mixtures with unequal weights or covariance matrices

The authors' approach could be extended to the case of Gaussian mixtures with unequal weights or covariance matrices by modifying the calculations to accommodate these variations. For unequal weights, the probabilities associated with each Gaussian component would need to be considered in the entropy calculations. This would involve adjusting the expressions for the average differential entropy to incorporate the different weights assigned to each component. Similarly, for Gaussian mixtures with unequal covariance matrices, the covariance matrix terms in the calculations would need to be adjusted accordingly. By incorporating the unequal weights and covariance matrices into the analytical framework, the authors could provide a more comprehensive estimation of the entropy for a wider range of Gaussian mixture distributions.

What are the potential applications of this analytical entropy estimation method for Gaussian mixtures, beyond the theoretical interest

The analytical entropy estimation method for Gaussian mixtures developed by the authors has potential applications beyond theoretical interest. One practical application could be in the field of data compression, where accurate estimation of entropy is crucial for efficient encoding and compression of data. By accurately estimating the entropy of Gaussian mixtures, the method could be used to optimize data compression algorithms, leading to improved compression ratios and reduced storage requirements. Additionally, in machine learning and pattern recognition, understanding the entropy of Gaussian mixtures can aid in model selection, clustering, and classification tasks. The method could also find applications in signal processing, image recognition, and information theory, where precise estimation of entropy is essential for various computational tasks.

Can the authors' techniques be generalized to other types of mixture distributions beyond the Gaussian case

While the authors' techniques are specifically tailored for Gaussian mixtures, they can be generalized to other types of mixture distributions beyond the Gaussian case. The fundamental principles of the analytical estimation method, such as leveraging small parameters for power expansions and manipulating integrals to simplify calculations, can be applied to other mixture distributions with appropriate modifications. For example, the approach could be adapted for mixture distributions with different underlying distributions, such as exponential, Poisson, or uniform distributions. By adjusting the expressions and calculations to suit the characteristics of the specific mixture distribution, the analytical method could be extended to provide entropy estimations for a broader range of mixture models.
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