000856687 000__ 04668cam\a2200529Ii\4500 000856687 001__ 856687 000856687 005__ 20230306145149.0 000856687 006__ m\\\\\o\\d\\\\\\\\ 000856687 007__ cr\un\nnnunnun 000856687 008__ 181130s2018\\\\si\a\\\\ob\\\\001\0\eng\d 000856687 019__ $$a1076740821 000856687 020__ $$a9789811086427$$q(electronic book) 000856687 020__ $$a9811086427$$q(electronic book) 000856687 020__ $$z9789811086410 000856687 020__ $$z9811086419 000856687 0247_ $$a10.1007/978-981-10-8642-7$$2doi 000856687 035__ $$aSP(OCoLC)on1076574353 000856687 035__ $$aSP(OCoLC)1076574353$$z(OCoLC)1076740821 000856687 040__ $$aGW5XE$$beng$$erda$$epn$$cGW5XE$$dEBLCP$$dYDX 000856687 049__ $$aISEA 000856687 050_4 $$aQA402.5 000856687 08204 $$a519.6$$223 000856687 1001_ $$aRakshit, Pratyusha,$$eauthor. 000856687 24510 $$aPrinciples in noisy optimization :$$bapplied to multi-agent coordination /$$cPratyusha Rakshit, Amit Konar. 000856687 264_1 $$aSingapore :$$bSpringer,$$c2018. 000856687 300__ $$a1 online resource (xvi, 367 pages) :$$billustrations 000856687 336__ $$atext$$btxt$$2rdacontent 000856687 337__ $$acomputer$$bc$$2rdamedia 000856687 338__ $$aonline resource$$bcr$$2rdacarrier 000856687 4901_ $$aCognitive intelligence and robotics,$$x2520-1956 000856687 504__ $$aIncludes bibliographical references and index. 000856687 5050_ $$aIntro; Preface; Contents; About the Authors; 1 Foundation in Evolutionary Optimization; 1.1 Optimization Problem-A Formal Definition; 1.2 Optimization Problems with and Without Constraints; 1.2.1 Handling Equality Constraints; 1.2.2 Handling Inequality Constraints; 1.3 Traditional Calculus-Based Optimization Techniques; 1.3.1 Gradient Descent Algorithm; 1.3.2 Steepest Descent Algorithm; 1.3.3 Newton's Method; 1.3.4 Quasi-Newton's Method; 1.4 Optimization of Discontinuous Function Using Evolutionary Algorithms; 1.4.1 Limitations of Derivative-Based Techniques 000856687 5058_ $$a1.4.2 Emergence of Evolutionary Algorithms1.5 Selective Evolutionary Algorithms; 1.5.1 Genetic Algorithm; 1.5.2 Differential Evolution; 1.5.3 Particle Swarm Optimization; 1.6 Constraint Handling in Evolutionary Optimization; 1.7 Handling Multiple Objectives in Evolutionary Optimization; 1.7.1 Weighted Sum Approach; 1.7.2 Pareto Dominance Criteria; 1.7.3 Non-dominated Sorting Genetic Algorithm-II; 1.8 Performance Analysis of Evolutionary Algorithms; 1.8.1 Benchmark Functions and Evaluation Metrics for Single-Objective Evolutionary Algorithms 000856687 5058_ $$a1.8.2 Benchmark Functions and Evaluation Metrics for Multi-objective Evolutionary Algorithms1.9 Applications of Evolutionary Optimization Algorithms; 1.10 Summary; References; 2 Agents and Multi-agent Coordination; 2.1 Defining Agent; 2.2 Agent Perception; 2.3 Performance Measure of Agent; 2.4 Agent Environment; 2.5 Agent Architecture; 2.5.1 Logic-based Architecture; 2.5.2 Subsumption Architecture; 2.5.3 Belief-Desire-Intention Architecture; 2.5.4 Layered Architecture; 2.6 Agent Classes; 2.6.1 Simple Reflex Agent; 2.6.2 Model-based Reflex Agent; 2.6.3 Goal-based Agent 000856687 5058_ $$a2.6.4 Utility-based Agent2.6.5 Learning Agent; 2.7 Multi-agent System; 2.8 Multi-agent Coordination; 2.9 Multi-agent Planning; 2.10 Multi-agent Learning; 2.11 Evolutionary Optimization Approach to Multi-agent Robotics; 2.12 Evolutionary Optimization Approach to Multi-agent Robotics in the Presence of Measurement Noise; 2.13 Summary; References; 3 Recent Advances in Evolutionary Optimization in Noisy Environment- A Comprehensive Survey; 3.1 Introduction; 3.2 Noisy Optimization Using Explicit Averaging; 3.2.1 Time-Based Sampling; 3.2.2 Domination Strength-Based Sampling 000856687 5058_ $$a3.2.3 Rank-Based Sampling3.2.4 Standard Error Dynamic Resampling (SEDR); 3.2.5 m-Level Dynamic Resampling (mLDR); 3.2.6 Fitness-Based Dynamic Resampling (FBDR); 3.2.7 Hybrid Sampling; 3.2.8 Sampling Based on Fitness Variance in Local Neighborhood; 3.2.9 Progress-Based Dynamic Sampling; 3.2.10 Distance-Based Dynamic Sampling; 3.2.11 Confidence-Based Dynamic Resampling (CDR); 3.2.12 Noise Analysis Selection; 3.2.13 Optimal Computing Budget Allocation (OCBA); 3.3 Effective Fitness Estimation; 3.3.1 Expected Fitness Estimation Using Uniform Fitness Interval 000856687 506__ $$aAccess limited to authorized users. 000856687 588__ $$aOnline resource; title from PDF title page (SpringerLink, viewed November 30, 2018). 000856687 650_0 $$aMathematical optimization. 000856687 650_0 $$aMultiagent systems. 000856687 7001_ $$aKonar, Amit,$$eauthor. 000856687 77608 $$iPrint version: $$z9811086419$$z9789811086410$$w(OCoLC)1022077706 000856687 830_0 $$aCognitive intelligence and robotics. 000856687 852__ $$bebk 000856687 85640 $$3SpringerLink$$uhttps://univsouthin.idm.oclc.org/login?url=http://link.springer.com/10.1007/978-981-10-8642-7$$zOnline Access$$91397441.1 000856687 909CO $$ooai:library.usi.edu:856687$$pGLOBAL_SET 000856687 980__ $$aEBOOK 000856687 980__ $$aBIB 000856687 982__ $$aEbook 000856687 983__ $$aOnline 000856687 994__ $$a92$$bISE