Algorithms for Irrelevance-Based Partial MAPs

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📝 Original Info

  • Title: Algorithms for Irrelevance-Based Partial MAPs
  • ArXiv ID: 1303.5751
  • Date: 2013-03-26
  • Authors: Researchers from original ArXiv paper

📝 Abstract

Irrelevance-based partial MAPs are useful constructs for domain-independent explanation using belief networks. We look at two definitions for such partial MAPs, and prove important properties that are useful in designing algorithms for computing them effectively. We make use of these properties in modifying our standard MAP best-first algorithm, so as to handle irrelevance-based partial MAPs.

💡 Deep Analysis

Deep Dive into Algorithms for Irrelevance-Based Partial MAPs.

Irrelevance-based partial MAPs are useful constructs for domain-independent explanation using belief networks. We look at two definitions for such partial MAPs, and prove important properties that are useful in designing algorithms for computing them effectively. We make use of these properties in modifying our standard MAP best-first algorithm, so as to handle irrelevance-based partial MAPs.

📄 Full Content

Irrelevance-based partial MAPs are useful constructs for domain-independent explanation using belief networks. We look at two definitions for such partial MAPs, and prove important properties that are useful in designing algorithms for computing them effectively. We make use of these properties in modifying our standard MAP best-first algorithm, so as to handle irrelevance-based partial MAPs.

Reference

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