Search results for "Genetic programming"

showing 2 items of 32 documents

A Cooperative Coevolution Framework for Parallel Learning to Rank

2015

We propose CCRank, the first parallel framework for learning to rank based on evolutionary algorithms (EA), aiming to significantly improve learning efficiency while maintaining accuracy. CCRank is based on cooperative coevolution (CC), a divide-and-conquer framework that has demonstrated high promise in function optimization for problems with large search space and complex structures. Moreover, CC naturally allows parallelization of sub-solutions to the decomposed sub-problems, which can substantially boost learning efficiency. With CCRank, we investigate parallel CC in the context of learning to rank. We implement CCRank with three EA-based learning to rank algorithms for demonstration. E…

ta113Cooperative coevolutionTheoretical computer scienceLearning to RankComputer sciencebusiness.industryRank (computer programming)Genetic ProgrammingEvolutionary algorithmContext (language use)Genetic programmingImmune ProgrammingMachine learningcomputer.software_genreEvolutionary computationComputer Science ApplicationsComputational Theory and MathematicsCooperative CoevolutionInformation RetrievalBenchmark (computing)Learning to rankArtificial intelligencebusinesscomputerInformation SystemsIEEE Transactions on Knowledge and Data Engineering
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Genetic programming through bi-objective genetic algorithms with a study of a simulated moving bed process involving multiple objectives

2013

A new bi-objective genetic programming (BioGP) technique has been developed for meta-modeling and applied in a chromatographic separation process using a simulated moving bed (SMB) process. The BioGP technique initially minimizes training error through a single objective optimization procedure and then a trade-off between complexity and accuracy is worked out through a genetic algorithm based bi-objective optimization strategy. A benefit of the BioGP approach is that an expert user or a decision maker (DM) can flexibly select the mathematical operations involved to construct a meta-model of desired complexity or accuracy. It is also designed to combat bloat - a perennial problem in genetic …

ta113Mathematical optimizationMeta-optimizationArtificial neural networkComputer scienceta111Evolutionary algorithmGenetic programmingOverfittingMulti-objective optimizationSimulation-based optimizationGenetic algorithmMetaheuristicSoftwareApplied Soft Computing
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