Recurrent neural networks with backtrack-points and negative reinforcement applied to cost-based abduction

Abduction is the process of proceeding from data describing a set of observations or events, to a set of hypotheses which best explains or accounts for the data. Cost-based abduction (CBA) is an AI formalism in which evidence to be explained is treated as a goal to be proven, proofs have costs based...

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Veröffentlicht in:Neural networks 2005-07, Vol.18 (5), p.755-764
Hauptverfasser: Abdelbar, Ashraf M., El-Hemaly, Mostafa A., Andrews, Emad A.M., Wunsch, Donald C.
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container_end_page 764
container_issue 5
container_start_page 755
container_title Neural networks
container_volume 18
creator Abdelbar, Ashraf M.
El-Hemaly, Mostafa A.
Andrews, Emad A.M.
Wunsch, Donald C.
description Abduction is the process of proceeding from data describing a set of observations or events, to a set of hypotheses which best explains or accounts for the data. Cost-based abduction (CBA) is an AI formalism in which evidence to be explained is treated as a goal to be proven, proofs have costs based on how much needs to be assumed to complete the proof, and the set of assumptions needed to complete the least-cost proof are taken as the best explanation for the given evidence. In this paper, we present two techniques for improving the performance of high order recurrent networks (HORN) applied to cost-based abduction. In the backtrack-points technique, we use heuristics to recognize early that the network trajectory is moving in the wrong direction; we then restore the network state to a previously stored point, and apply heuristic perturbations to nudge the network trajectory in a different direction. In the negative reinforcement technique, we add hyperedges to the network to reduce the attractiveness of local minima. We apply these techniques to a suite of six large CBA instances, systematically generated to be difficult.
doi_str_mv 10.1016/j.neunet.2005.06.026
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source MEDLINE; ScienceDirect Journals (5 years ago - present)
subjects Algorithms
Applied sciences
Artificial intelligence
Bayesian networks
Belief revision
Computer science
control theory
systems
Connectionism. Neural networks
cost-based abduction
Costs and Cost Analysis
Data Interpretation, Statistical
Exact sciences and technology
high-order networks
Models, Neurological
Neural Networks (Computer)
Reasoning under uncertainty
Recurrent networks
Reinforcement (Psychology)
title Recurrent neural networks with backtrack-points and negative reinforcement applied to cost-based abduction
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