A multi-objective GP-PSO hybrid algorithm for gene regulatory network modeling

dc.contributor.authorCai, Xinye
dc.date.accessioned2009-05-19T13:54:08Z
dc.date.available2009-05-19T13:54:08Z
dc.date.graduationmonthMay
dc.date.issued2009-05-19T13:54:08Z
dc.date.published2009
dc.description.abstractStochastic algorithms are widely used in various modeling and optimization problems. Evolutionary algorithms are one class of population-based stochastic approaches that are inspired from Darwinian evolutionary theory. A population of candidate solutions is initialized at the first generation of the algorithm. Two variation operators, crossover and mutation, that mimic the real world evolutionary process, are applied on the population to produce new solutions from old ones. Selection based on the concept of survival of the fittest is used to preserve parent solutions for next generation. Examples of such algorithms include genetic algorithm (GA) and genetic programming (GP). Nevertheless, other stochastic algorithms may be inspired from animals’ behavior such as particle swarm optimization (PSO), which imitates the cooperation of a flock of birds. In addition, stochastic algorithms are able to address multi-objective optimization problems by using the concept of dominance. Accordingly, a set of solutions that do not dominate each other will be obtained, instead of just one best solution. This thesis proposes a multi-objective GP-PSO hybrid algorithm to recover gene regulatory network models that take environmental data as stimulus input. The algorithm infers a model based on both phenotypic and gene expression data. The proposed approach is able to simultaneously infer network structures and estimate their associated parameters, instead of doing one or the other iteratively as other algorithms need to. In addition, a non-dominated sorting approach and an adaptive histogram method based on the hypergrid strategy are adopted to address ‘convergence’ and ‘diversity’ issues in multi-objective optimization. Gene network models obtained from the proposed algorithm are compared to a synthetic network, which mimics key features of Arabidopsis flowering control system, visually and numerically. Data predicted by the model are compared to synthetic data, to verify that they are able to closely approximate the available phenotypic and gene expression data. At the end of this thesis, a novel breeding strategy, termed network assisted selection, is proposed as an extension of our hybrid approach and application of obtained models for plant breeding. Breeding simulations based on network assisted selection are compared to one common breeding strategy, marker assisted selection. The results show that NAS is better both in terms of breeding speed and final phenotypic level.
dc.description.advisorSanjoy Das
dc.description.degreeDoctor of Philosophy
dc.description.departmentDepartment of Electrical and Computer Engineering
dc.description.levelDoctoral
dc.description.sponsorshipNational Science Foundation
dc.identifier.urihttp://hdl.handle.net/2097/1492
dc.language.isoen_US
dc.publisherKansas State University
dc.rights© the author. This Item is protected by copyright and/or related rights. You are free to use this Item in any way that is permitted by the copyright and related rights legislation that applies to your use. For other uses you need to obtain permission from the rights-holder(s).
dc.rights.urihttp://rightsstatements.org/vocab/InC/1.0/
dc.subjectmulti-objective optimization
dc.subjectgenetic programming
dc.subjectparticle swarm optimization
dc.subjectgene regulatory network modeling
dc.subjectplant breeding simulation
dc.subjectNK fitness landscape models
dc.subject.umiArtificial Intelligence (0800)
dc.subject.umiComputer Science (0984)
dc.subject.umiInformation Science (0723)
dc.titleA multi-objective GP-PSO hybrid algorithm for gene regulatory network modeling
dc.typeDissertation

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