04765nam 2200625 450 991081373460332120220330170649.01-119-34760-21-119-34756-41-119-34758-0(CKB)3710000000831080(EBL)4648718(MiAaPQ)EBC4648718(Au-PeEL)EBL4648718(CaPaEBR)ebr11249682(CaONFJC)MIL949830(OCoLC)957318039(PPN)24518659X(EXLCZ)99371000000083108020160906h20162016 uy 0engur|n|---|||||rdacontentrdamediardacarrierMetaheuristics for big datavolume 5 /Clarisse Dhaenens, Laetitia JourdanLondon, [England] ;Hoboken, New Jersey :ISTE :Wiley,2016.©20161 online resource (216 p.)Computer Engineering Series : Metaheuristics SetDescription based upon print version of record.1-84821-806-0 Includes bibliographical references and index.Cover; Title Page ; Copyright ; Contents; Acknowledgments; Introduction; 1. Optimization and Big Data; 1.1. Context of Big Data; 1.1.1. Examples of situations; 1.1.2. Definitions; 1.1.3. Big Data challenges; 1.1.4. Metaheuristics and Big Data; 1.2. Knowledge discovery in Big Data; 1.2.1. Data mining versus knowledge discovery; 1.2.2. Main data mining tasks; 1.2.3. Data mining tasks as optimization problems; 1.3. Performance analysis of data mining algorithms ; 1.3.1. Context; 1.3.2. Evaluation among one or several dataset(s); 1.3.3. Repositories and datasets; 1.4. Conclusion2. Metaheuristics - A Short Introduction2.1. Introduction; 2.1.1. Combinatorial optimization problems; 2.1.2. Solving a combinatorial optimization problem; 2.1.3. Main types of optimization methods; 2.2. Common concepts of metaheuristics; 2.2.1. Representation/encoding; 2.2.2. Constraint satisfaction; 2.2.3. Optimization criterion/objective function; 2.2.4. Performance analysis; 2.3. Single solution-based/local search methods; 2.3.1. Neighborhood of a solution; 2.3.2. Hill climbing algorithm; 2.3.3. Tabu Search; 2.3.4. Simulated annealing and threshold acceptance approach2.3.5. Combining local search approaches2.4. Population-based metaheuristics; 2.4.1. Evolutionary computation; 2.4.2. Swarm intelligence; 2.5. Multi-objective metaheuristics; 2.5.1. Basic notions in multi-objective optimization; 2.5.2. Multi-objective optimization using metaheuristics; 2.5.3. Performance assessment in multi-objective optimization; 2.6. Conclusion; 3. Metaheuristics and Parallel Optimization; 3.1. Parallelism; 3.1.1. Bit-level; 3.1.2. Instruction-level parallelism; 3.1.3. Task and data parallelism; 3.2. Parallel metaheuristics ; 3.2.1. General concepts3.2.2. Parallel single solution-based metaheuristics3.2.3. Parallel population-based metaheuristics; 3.3. Infrastructure and technologies for parallel metaheuristics ; 3.3.1. Distributed model; 3.3.2. Hardware model; 3.4. Quality measures ; 3.4.1. Speedup; 3.4.2. Efficiency; 3.4.3. Serial fraction; 3.5. Conclusion; 4. Metaheuristics and Clustering; 4.1. Task description; 4.1.1. Partitioning methods; 4.1.2. Hierarchical methods; 4.1.3. Grid-based methods; 4.1.4. Density-based methods; 4.2. Big Data and clustering; 4.3. Optimization model; 4.3.1. A combinatorial problem; 4.3.2. Quality measures4.3.3. Representation4.4. Overview of methods; 4.5. Validation; 4.5.1. Internal validation; 4.5.2. External validation; 4.6. Conclusion; 5. Metaheuristics and Association Rules; 5.1. Task description and classical approaches ; 5.1.1. Initial problem; 5.1.2. A priori algorithm; 5.2. Optimization model; 5.2.1. A combinatorial problem; 5.2.2. Quality measures; 5.2.3. A monoor a multi-objective problem?; 5.3. Overview of metaheuristics for the association rules mining problem; 5.3.1. Generalities; 5.3.2. Metaheuristics for categorical association rules5.3.3. Evolutionary algorithms for quantitative association rulesEngineering designMathematical modelsCluster analysisCombinatorial optimizationEngineering designMathematical models.Cluster analysis.Combinatorial optimization.620.0042015118Dhaenens Clarisse1631264Jourdan LaetitiaMiAaPQMiAaPQMiAaPQBOOK9910813734603321Metaheuristics for big data3969985UNINA