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Journal ArticleDOI

Constraint handling using tournament selection: Abductive inference in partly deterministic bayesian networks

TLDR
By considering abductive inference as a constraint optimization problem, the novel approach improves performance dramatically when a BN's conditional probability tables contain a significant number of zeros, and significantly outperforms the traditional approach.
Abstract
Constraints occur in many application areas of interest to evolutionary computation. The area considered here is Bayesian networks (BNs), which is a probability-based method for representing and reasoning with uncertain knowledge. This work deals with constraints in BNs and investigates how tournament selection can be adapted to better process such constraints in the context of abductive inference. Abductive inference in BNs consists of finding the most probable explanation given some evidence. Since exact abductive inference is NP-hard, several approximate approaches to this inference task have been developed. One of them applies evolutionary techniques in order to find optimal or close-to-optimal explanations. A problem with the traditional evolutionary approach is this: As the number of constraints determined by the zeros in the conditional probability tables grows, performance deteriorates because the number of explanations whose probability is greater than zero decreases. To minimize this problem, this paper presents and analyzes a new evolutionary approach to abductive inference in BNs. By considering abductive inference as a constraint optimization problem, the novel approach improves performance dramatically when a BN's conditional probability tables contain a significant number of zeros. Experimental results are presented comparing the performances of the traditional evolutionary approach and the approach introduced in this work. The results show that the new approach significantly outperforms the traditional one.

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Journal ArticleDOI

Associating visual textures with human perceptions using genetic algorithms

TL;DR: A constraint-based genetic algorithm approach is proposed, which is able to minimize a specific optimization problem containing constraints in form of band-widths for valid individuals (low level features extracted from textures) in a population.
Journal ArticleDOI

Parallel evolutionary algorithm for single and multi-objective optimisation: Differential evolution and constraints handling

TL;DR: An evolutionary algorithm employing differential evolution to solve nonlinear optimisation problems with (or without) constraints and multiple objectives and an algorithm to perform parallel evolution in a way that the diversity of the final population is preserved after migrations is proposed.
Proceedings ArticleDOI

Generalized crowding for genetic algorithms

TL;DR: This work presents a Generalized Crowding approach that allows selective pressure to be controlled in a simple way in the replacement phase of crowding, thus overcoming limitations of the other approaches.
Journal ArticleDOI

Adaptive generalized crowding for genetic algorithms

TL;DR: The present work investigates how the scaling factor should be adapted during the search process in order to effectively obtain optimal or near-optimal solutions, by developing and evaluating two methods for adapting, during search, the scaling factors.
Journal ArticleDOI

Portfolios in Stochastic Local Search: Efficiently Computing Most Probable Explanations in Bayesian Networks

TL;DR: Empirical results provide an improved understanding of the circumstances under which portfolio-based SLS outperforms clique tree clustering and vice versa, and are shown to be highly competitive in Bayesian networks with a high degree of determinism.
References
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Book

Genetic algorithms in search, optimization, and machine learning

TL;DR: In this article, the authors present the computer techniques, mathematical tools, and research results that will enable both students and practitioners to apply genetic algorithms to problems in many fields, including computer programming and mathematics.

Genetic algorithms in search, optimization and machine learning

TL;DR: This book brings together the computer techniques, mathematical tools, and research results that will enable both students and practitioners to apply genetic algorithms to problems in many fields.
Book

Adaptation in natural and artificial systems

TL;DR: Names of founding work in the area of Adaptation and modiication, which aims to mimic biological optimization, and some (Non-GA) branches of AI.
Book

Genetic Algorithms

Book

Probabilistic Reasoning in Intelligent Systems: Networks of Plausible Inference

TL;DR: Probabilistic Reasoning in Intelligent Systems as mentioned in this paper is a complete and accessible account of the theoretical foundations and computational methods that underlie plausible reasoning under uncertainty, and provides a coherent explication of probability as a language for reasoning with partial belief.
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