2007 NIPS NeurIPS 2007

Adaptive Embedded Subgraph Algorithms using Walk-Sum Analysis

Abstract

We consider the estimation problem in Gaussian graphical models with arbitrary structure. We analyze the Embedded Trees algorithm, which solves a sequence of problems on tractable subgraphs thereby leading to the solution of the estimation problem on an intractable graph. Our analysis is based on the recently developed walk-sum interpretation of Gaussian estimation. We show that non-stationary iterations of the Embedded Trees algorithm using any sequence of subgraphs converge in walk-summable models. Based on walk-sum calculations, we develop adaptive methods that optimize the choice of subgraphs used at each iteration with a view to achieving maximum reduction in error. These adaptive procedures provide a significant speedup in convergence over stationary iterative methods, and also appear to converge in a larger class of models.

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📈 Trend Setter — Continuous Optimization
🧭 Keyword Pioneer — walk-sum analysis
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🐣 Hot Topic Early Bird — convergence analysis