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Learning and Intelligent Optimization [[electronic resource] ] : 9th International Conference, LION 9, Lille, France, January 12-15, 2015. Revised Selected Papers / / edited by Clarisse Dhaenens, Laetitia Jourdan, Marie-Eléonore Marmion
Learning and Intelligent Optimization [[electronic resource] ] : 9th International Conference, LION 9, Lille, France, January 12-15, 2015. Revised Selected Papers / / edited by Clarisse Dhaenens, Laetitia Jourdan, Marie-Eléonore Marmion
Edizione [1st ed. 2015.]
Pubbl/distr/stampa Cham : , : Springer International Publishing : , : Imprint : Springer, , 2015
Descrizione fisica 1 online resource (XI, 313 p. 92 illus.)
Disciplina 006.31
Collana Theoretical Computer Science and General Issues
Soggetto topico Algorithms
Computer science
Artificial intelligence
Numerical analysis
Computer simulation
Computer Science Logic and Foundations of Programming
Artificial Intelligence
Numerical Analysis
Theory of Computation
Computer Modelling
ISBN 3-319-19084-9
Formato Materiale a stampa
Livello bibliografico Monografia
Lingua di pubblicazione eng
Nota di contenuto Benchmark problems and performance measures -- Tracking moving optima -- Dynamic multiobjective optimization -- Adaptation, learning, and anticipation -- Handling noisy fitness functions -- Using fitness approximations -- Searching for robust optimal solutions -- Comparative studies -- Hybrid approaches -- Theoretical analysis -- Real-world applications.
Record Nr. UNISA-996198341003316
Cham : , : Springer International Publishing : , : Imprint : Springer, , 2015
Materiale a stampa
Lo trovi qui: Univ. di Salerno
Opac: Controlla la disponibilità qui
Learning and Intelligent Optimization : 9th International Conference, LION 9, Lille, France, January 12-15, 2015. Revised Selected Papers / / edited by Clarisse Dhaenens, Laetitia Jourdan, Marie-Eléonore Marmion
Learning and Intelligent Optimization : 9th International Conference, LION 9, Lille, France, January 12-15, 2015. Revised Selected Papers / / edited by Clarisse Dhaenens, Laetitia Jourdan, Marie-Eléonore Marmion
Edizione [1st ed. 2015.]
Pubbl/distr/stampa Cham : , : Springer International Publishing : , : Imprint : Springer, , 2015
Descrizione fisica 1 online resource (XI, 313 p. 92 illus.)
Disciplina 006.31
Collana Theoretical Computer Science and General Issues
Soggetto topico Algorithms
Computer science
Artificial intelligence
Numerical analysis
Computer simulation
Computer Science Logic and Foundations of Programming
Artificial Intelligence
Numerical Analysis
Theory of Computation
Computer Modelling
ISBN 3-319-19084-9
Formato Materiale a stampa
Livello bibliografico Monografia
Lingua di pubblicazione eng
Nota di contenuto Benchmark problems and performance measures -- Tracking moving optima -- Dynamic multiobjective optimization -- Adaptation, learning, and anticipation -- Handling noisy fitness functions -- Using fitness approximations -- Searching for robust optimal solutions -- Comparative studies -- Hybrid approaches -- Theoretical analysis -- Real-world applications.
Record Nr. UNINA-9910484196303321
Cham : , : Springer International Publishing : , : Imprint : Springer, , 2015
Materiale a stampa
Lo trovi qui: Univ. Federico II
Opac: Controlla la disponibilità qui
Metaheuristics for big data . volume 5 / / Clarisse Dhaenens, Laetitia Jourdan
Metaheuristics for big data . volume 5 / / Clarisse Dhaenens, Laetitia Jourdan
Autore Dhaenens Clarisse
Pubbl/distr/stampa London, [England] ; ; Hoboken, New Jersey : , : ISTE : , : Wiley, , 2016
Descrizione fisica 1 online resource (216 p.)
Disciplina 620.0042015118
Collana Computer Engineering Series : Metaheuristics Set
Soggetto topico Engineering design - Mathematical models
Cluster analysis
Combinatorial optimization
ISBN 1-119-34760-2
1-119-34756-4
1-119-34758-0
Formato Materiale a stampa
Livello bibliografico Monografia
Lingua di pubblicazione eng
Nota di contenuto 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. Conclusion
2. 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 approach
2.3.5. 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 concepts
3.2.2. 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 measures
4.3.3. 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 rules
5.3.3. Evolutionary algorithms for quantitative association rules
Record Nr. UNINA-9910137073903321
Dhaenens Clarisse  
London, [England] ; ; Hoboken, New Jersey : , : ISTE : , : Wiley, , 2016
Materiale a stampa
Lo trovi qui: Univ. Federico II
Opac: Controlla la disponibilità qui
Metaheuristics for big data . volume 5 / / Clarisse Dhaenens, Laetitia Jourdan
Metaheuristics for big data . volume 5 / / Clarisse Dhaenens, Laetitia Jourdan
Autore Dhaenens Clarisse
Pubbl/distr/stampa London, [England] ; ; Hoboken, New Jersey : , : ISTE : , : Wiley, , 2016
Descrizione fisica 1 online resource (216 p.)
Disciplina 620.0042015118
Collana Computer Engineering Series : Metaheuristics Set
Soggetto topico Engineering design - Mathematical models
Cluster analysis
Combinatorial optimization
ISBN 1-119-34760-2
1-119-34756-4
1-119-34758-0
Formato Materiale a stampa
Livello bibliografico Monografia
Lingua di pubblicazione eng
Nota di contenuto 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. Conclusion
2. 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 approach
2.3.5. 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 concepts
3.2.2. 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 measures
4.3.3. 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 rules
5.3.3. Evolutionary algorithms for quantitative association rules
Record Nr. UNINA-9910813734603321
Dhaenens Clarisse  
London, [England] ; ; Hoboken, New Jersey : , : ISTE : , : Wiley, , 2016
Materiale a stampa
Lo trovi qui: Univ. Federico II
Opac: Controlla la disponibilità qui