Complexity-Regularized Tree-Structured Partition for Mutual Information Estimation
Artículo
Open/ Download
Publication date
2012-03Metadata
Show full item record
Cómo citar
Silva, Jorge F.
Cómo citar
Complexity-Regularized Tree-Structured Partition for Mutual Information Estimation
Author
Abstract
A new histogram-based mutual information estimator using data-driven tree-structured partitions (TSP) is presented in this paper. The derived TSP is a solution to a complexity regularized empirical information maximization, with the objective of finding a good tradeoff between the known estimation and approximation errors. A distribution-free concentration inequality for this tree-structured learning problem as well as finite sample performance bounds for the proposed histogram-based solution is derived. It is shown that this solution is density-free strongly consistent and that it provides, with an arbitrary high probability, an optimal balance between the mentioned estimation and approximation errors. Finally, for the emblematic scenario of independence, I(X;Y), it is shown that the TSP estimate converges to zero with O(e(-n1/3+log log n)).
General note
Artículo de publicación ISI
Patrocinador
National Commission for Scientific and Technological Research (CONICYT), Chile, under FONDECYT
1110145
Quote Item
IEEE TRANSACTIONS ON INFORMATION THEORY Volume: 58 Issue: 3 Pages: 1940-1952 Published: MAR 2012
Collections