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                                                    | Committees and Program Tracks |  
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                                                    | GECCO Organizers |  
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                                                                                | Conference Chair: | Mike Cattolico |  
                                                                                | Proceedings Editor-in-Chief: | Maarten Keijzer |  
                                                                                | Business Committee: | David E. GoldbergErik Goodman
 John R. Koza
 Una-May O'Reilly
 Mike Cattolico
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                                                                                | Workshops Chair: | Jano van Hemert |  
                                                                                | Late Breaking Papers Chair: | Jörn Grahl |  
                                                                                | Competitions Chair: | Riccardo Poli |  
                                                                                | Student Workshop Chair: | Terry Soule |  
                                                                                | Evolutionary Computation in Practice Chair:    | Cem Baydar,   Tina Yu, Memorial University
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                                                                                | Publicity Chair: | John Koza |  |  |  
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                                                    | Program Tracks and Chairs |  
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                                                                                | A-Life, Evolutionary Robotics and Adaptive Behavior:
 This track examines evolutionary computation as model for understanding natural 
                                                                                        systems and for generating biologically-inspired artificial systems. From artificial models of biological systems, to the synthesis of "life" on 
                                                                                        artificial media; from self-organizing, self-replicating, and self-learning structures, to bio-inspired adaptive robots and mobile agents; This area deals with 
                                                                                        algorithmic, synthetic, empirical, and theoretical advances in artificial systems inspired by evolution, biology, and life.
 
 
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                                                                                | Ant Colony Optimization and Swarm Intelligence:
 
 Swarm intelligence (SI) algorithms take their inspiration from the collective 
                                                                                        behaviour of social insects such as ants, bees, and wasps, as well as from other animal societies such as flocks of birds, or fish schools. Examples are 
                                                                                        algorithms for clustering and data mining inspired by ants' cemetery building behaviour, or dynamic task allocation algorithms inspired by the behaviour of 
                                                                                        wasp colonies. The advantage of these approaches over traditional techniques is often their robustness and flexibility.
 
 Two popular swarm intelligence 
                                                                                        techniques for optimization are ant colony optimization (ACO) and particle swarm optimization (PSO).
 The inspiring source of ACO is the foraging behavior of 
                                                                                        real ants, whereas PSO is inspired by the social behaviour of fish schools and bird flocks.
 
 Submissions of original and previously unpublished work in 
                                                                                        the following areas of ACO/SI research are encouraged:
 - applications of ACO/SI algorithms to real-world problems- applications of ACO/SI algorithms to scientific test cases
 - new theoretical results on ACO/SI
 - new SI techniques
 - new hybrids between ACO/SI algorithms and other methods for
 optimization
 - biological foundations of ACO/SI
 - models of the behavior of social insects
 
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                                                                                | Artificial Immune Systems:
 
 The field of artificial immune systems (AIS) is an emerging area, which explores and 
                                                                                        employs different immunological mechanisms in order to solve computational problems. This special track will provide a great opportunity for presenting and 
                                                                                        disseminating latest work in the field of Artificial Immune Systems. Papers in this track would include (but are not limited to):
  ·  Computational models of the Immune System,
                                                                                      ·  Extensions or improvements of existing AIS models,
                                                                                      ·   Applications of Immunity-Based Techniques,
                                                                                      ·  Combination of AIS with other soft computing paradigms
                                                                                      ·  Hardware implementations of AIS
                                                                                     · Immunoinformatics, etc.
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                                                                                | Biological Applications:
 The scope of this track will be any research applying genetic and evolutionary 
                                                                                        computation to biological hypotheses and data. GEC uses the process of evolution as an algorithmic heuristic, and so GEC provides an algorithmic approach to 
                                                                                        answering biological questions. All "flavors" of GEC are included in this scope: genetic algorithms, genetic programming, evolution strategies, 
                                                                                        evolutionary programming, and hybrid systems with any of these components.
 
 Some specific appropriate biological issues that GEC may address include:
 
 • Data mining in biological data bases• Sequence alignment
 • Phylogenetic reconstruction
 • Gene expression and regulation, alternative splicing
 • Functional diversification through gene duplication and exon
 shuffling
 • Structure prediction for biological molecules (structural
 genomics
 and proteomics)
 • Network reconstruction for development, expression, catalysis
 etc.
 • Dynamical system approaches to biological systems
 • Simulation of cells, viruses, organisms and whole ecologies
 • Sensitivity of speciation to variations in evolutionary
 processes
 • Relationships between evolved systems and their environment
 (phylogeography, e.g.)
 • Relationships within evolved communities (cooperation,
 coevolution,
 symbiosis, etc.)
 
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                                                                                | Coevolution:
 Coevolution offers the potential to address problems for which no accurate evaluation function is 
                                                                                        known. Rather than following a fixed approximation of the unknown true evaluation function for a problem, the coevolutionary evaluation of an individual 
                                                                                        depends on other evolving individuals. The optimization process can thereby adaptively construct its own evaluation function.
 
 Coevolution can be an 
                                                                                        effective approach for problems where performance can be measured using tests, as well as for problems in which multiple components that make up a whole are to 
                                                                                        be co-adapted. In addition to these forms of optimization, the adaptive nature of the evaluation process in coevolution may in principle give rise to a 
                                                                                        self-propelled and open-ended evolutionary process.
 
 It has been found early on that the dynamic evaluation of coevolution can lead to unreliability. In 
                                                                                        recent years however, the possible goals for coevolutionary algorithms have become better understood, and for several algorithms theoretical properties have 
                                                                                        been provided. These developments generate the exciting prospect that practical reliable algorithms for coevolution may now be within reach.
 
 The 
                                                                                        Coevolution Track of the 2005 Genetic and Evolutionary Computation Conference provides a venue where researchers from all directions and approaches to 
                                                                                        coevolution can meet. Submissions on any aspect of coevolution are encouraged, including but not limited to the following:
 * Applications* Measuring progress
 * Game-theoretic studies
 * New coevolutionary algorithms
 * The structure of coevolution problems
 * Empirical studies of coevolutionary methods
 * Behavioral dynamics of coevolutionary setups
 * Theoretical guarantees for coevolutionary algorithms
 * Empirical comparisons between coevolutionary and other methods
 For detailed information, see  http://www.eecs.harvard.edu/~sevan/gecco_coev/ 
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                                                                                | Estimation of Distribution Algorithms:
 Estimation of distribution algorithms (EDAs) replace traditional variation 
                                                                                        operators of genetic and evolutionary algorithms, such as mutation and crossover, by building a probabilistic model of promising solutions and sampling the 
                                                                                        built model to generate new candidate solutions. Using probabilistic models for exploration in genetic and evolutionary algorithms enables the use of advanced 
                                                                                        methods of machine learning and statistics for automated identification and exploitation of problem regularities for broad classes of problems. As a result, 
                                                                                        EDAs provide a robust and scalable solution to many important classes of optimization problems with only little problem specific knowledge.
 This track invites submissions that present original work on EDAs with the focus on 
                                                                                        theory and applications of EDAs, the design of new EDAs, and the improvement of existing EDAs. More specifically, submissions in the following areas of EDA 
                                                                                        research are encouraged: - EDA theory (modeling, prediction, limitations)
 - EDA applications (interesting artificial and real-world problems)
 - efficiency enhancement of EDAs
 - empirical studies of EDAs
 - theoretical and empirical comparison of EDAs and other optimization
 methods
 - design of new EDAs
 - design of hybrid methods by combining EDAs with other optimization
 methods
 - adaptation of operators/parameters in EDAs
 
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                                                                                | Evolutionary Combinatorial Optimization:
 Evolutionary algorithms have often been shown to be effective for difficult 
                                                                                        combinatorial optimization problems appearing in various industrial, economical, and scientific domains. Prominent examples of such problems are scheduling, 
                                                                                        timetabling, network design, transportation and distribution problems, vehicle routing, traveling salesperson, other graph problems, satisfiability, packing 
                                                                                        problems, planning problems, and general mixed integer programming.
 
 Topics of interest include, but are not limited to:
 - Applications of 
                                                                                        evolutionary algorithms and related nature-inspired meta-heuristics like memetic algorithms or ant colony optimization to combinatorial optimization problems;
 - hybrid methods and hybridization techniques;
 - representation techniques;
 - evolutionary operators;
 - constraint-handling techniques;
 - parallelization;
 - theoretical developments;
 - search space analyses;
 - comparisons to other (also non-evolutionary) techniques.
 
 
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                                                                                | Evolutionary Multiobjective Optimization
 
 Although most real-world problems have several (and normally conflicting) objectives 
                                                                                        that have to be satisfied at the same time, for the sake of simplicity, we tend to transform all but one of those objectives into constraints in order to 
                                                                                        simplify the optimization task.
 Vilfredo Pareto stated in 1896 a concept (known today as "Pareto optimum") 
                                                                                        that constitutes the origin of research in multiobjective optimization. According to this concept, the solution to a multiobjective optimization problem is 
                                                                                        normally not a single value, but instead a set of values (also called the Pareto set). The interest of applying evolutionary computation techniques to multiobjective 
                                                                                        optimization dates back to the 1960s, with Rosenberg's doctoral dissertation. One of the reasons why evolutionary algorithms are so suitable for multiobjective 
                                                                                        optimization is because they can generate a whole set of solutions (the Pareto set) in a single run rather than requiring an iterative process like traditional 
                                                                                        mathematical programming techniques. The interest on Evolutionary Multiobjective Optimization (EMO) is reflected by the 
                                                                                        high volume of publications in this topic in the last few years (over 128 PhD theses, more than 545 journal papers, and more than 1236 conference papers). So, 
                                                                                        the aim of this track organized within the 2006 Genetic and Evolutionary Computation Conference (GECCO'2006) is to provide a forum to exchange ideas and 
                                                                                        discuss current research on all aspects of evolutionary multiobjective optimization. Both experts and newcomers working on EMO are welcome to submit their 
                                                                                        original papers on all aspects of evolutionary multiobjective optimization, which include (but are not limited to) the following topics: Real-world applications of EMO algorithms Test functions for EMO algorithms
 New EMO techniques
 Metrics for EMO algorithms
 Techniques to keep diversity in the population of an EMO algorithm
 Comparison of EMO techniques
 Theoretical aspects of EMO algorithms
 Uncertainty management in EMO algorithms
 Parallel issues of EMO algorithms
 Interactive EMO techniques
 Hybridization of EMO algorithms with mathematical programming techniques
 
 http://www.cs.cinvestav.mx/~EVOCINV/gecco2006/
 
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                                                                                | Evolutionary Strategies, Evolutionary Programming:
 Both evolution strategies (ES) and evolutionary programming (EP) are 
                                                                                        nature-inspired optimization paradigms that generally operate on the " natural" problem representation (i.e., without a genotype-phenotype mapping). 
                                                                                        For example, when used in connection with real-valued problems, both ES and EP use real-valued representations of search points. Moreover, both may rely on 
                                                                                        sophisticated mechanisms for the adaptation of their strategy parameters. ES and EP owe much of their success to their universal applicability, ease of use, 
                                                                                        and robustness.
 
 This track invites submissions that present original work on ES/EP that may include, but is not limited to, theoretical and empirical 
                                                                                        evaluations of ES/EP, improvements and modifications to the algorithms, and applications of ES/EP to benchmark problems and test function suites. Particularly 
                                                                                        encouraged are submissions with focus on
 - adaptation mechanisms- interesting ES/EP applications
 - ES/EP theory
 - ES/EP in uncertain and/or changing environments
 - comparisons of ES/EP with other optimization methods
 - hybrid strategies
 - meta-strategies
 - constrained and/or multimodal problems
 
 
 
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                                                                                | Evolvable Hardware:
 Evolvable hardware techniques enable self-reconfigurability and adaptability of programmable 
                                                                                        devices and thus have the potential to significantly increase the functionality of deployed hardware systems. Evolvable Hardware is expected to have major 
                                                                                        impact on future system designs. Evolvable hardware is also expected to greatly enrich the area of commercial applications in which adaptive information 
                                                                                        processing is needed; such applications range from human-oriented hardware interfaces and internet adaptive hardware to automotive applications.
 
 Evolvable Hardware is an emerging field that applies evolution to automate design and adaptation of physical structures such as electronic systems, antennas, 
                                                                                        MEMS and robots. The aim of this track is to bring together leading researchers from the evolvable hardware community, representatives of the automated design 
                                                                                        and programmable/ reconfigurable hardware communities, and end-users from the aerospace, military and commercial sectors. Contributions dealing with theory, 
                                                                                        techniques, and performance evaluation, are solicited, but not limited to, the following:
  - Intrinsic and on-line evolution- Hardware/software co-evolution
 - Novel devices, testbeds and tools supporting evolvable hardware
 - Adaptive computing and adaptive hardware
 - Real-world applications of evolvable hardware.
 
 
 
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                                                                                | Genetic Algorithms :
 This track invites submissions that present original work on genetic algorithms. We welcome 
                                                                                        submissions on theory, design of new GAs (including representations and operators), improvements of existing algorithms, comparisons with other methods, 
                                                                                        empirical evaluations, and other topics relevant to GAs.
 
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                                                                                | Genetic Programming:
 Genetic Programming (GP) is the automatic induction of computer programs and other variable-size 
                                                                                        structures representing executable programs or computable functions from a high-level statement of a  Authors interested in submitting manuscripts are 
                                                                                        encouraged to look at previous years' papers. A sample of papers of papers from the GP track for GECCO-2004 includes: "pi Grammatical Evolution" by 
                                                                                        Michael O'Neill et al. "Evolving Caching Strategies for the Internet" by Juergen Branke et al., "A Descriptive Encoding Language for Evolving 
                                                                                        Modular Neural Networks" by Jae-Yoon Jung and James A. Reggia, and "Evolving Quantum Circuits and Programs through Genetic Programming" by Paul 
                                                                                        Massey et al.
 
 
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                                                                                | Learning Classifier Systems and Other Genetics-Based Machine Learning:
 Since the inception of learning classifier systems (LCS) by John Holland in the 
                                                                                        1970s, learning paradigms driven by genetic algorithms (GA) have shown their competence on a broad spectrum of fields and applications. Genetics-based machine 
                                                                                        learning (GBML) systems have successfully tackled the creation of classification and prediction systems, control architectures, cognitive models, and adaptive 
                                                                                        behavior, just to mention a few. Recently, GBML has been experiencing a strong renaissance thanks to three key factors: (1) advancements in GA theory have not 
                                                                                        only deepened the understanding of evolutionary learning and optimization but have also enabled the successful analysis of GBML systems; (2) advancements in 
                                                                                        machine learning theory and understanding have enabled further successful and robust combinations of machine learning with evolutionary computation 
                                                                                        techniques(3) successful applications of GBML systems to real-world problems such as datamining and control problems h ave confirmed thestrength, robustness, 
                                                                                        and broad applicability of the GBML approach.  During GECCO 2006, the LCS&GBML track is designed to encompass researchers from 
                                                                                        machine learning applyingevolutionary computation techniques in their systems as well as researches from evolutionary computation that utilize other machine 
                                                                                        learning techniques in their systems. The exchange of expertise is highly encouraged. The track sessions during the conference will focus on the hybrid and 
                                                                                        interactive nature of the presented systems.  Submissions The LCS and other GBML track encourages submissions encompassing, but not 
                                                                                        limited to, one or more of the areas suggested below. 
                                                                                        Theoretical Advances in LCS and GBML
                                                                                            Theoretical analysis of mechanisms and systemsIdentification of learning and scalability boundsConnections and combinations with machine learning theoryAnalysis and robustness in stochastic (or noisy) enviro nmentsComplexity analysis in MDP and PoMDP problemsEvolutionary algorithm combined with reinforcement learning or other 
                                                                                                estimation techniques Systems and Frameworks
                                                                                            Incremental evolutionary rule learning, including but not limited to:
                                                                                            
                                                                                                Michigan style (SCS, NewBoole, EpiCS, ZCS, XCS...)Pittsburgh style (GABIL, GIL, COGIN, REGAL, GA-Miner, GALE, MOLCS, 
                                                                                                    GAssist...)Anticipatory LCS (ACS, ACS2, XACS, YACS, MACS...) Genetic-based inductive learningGenetic fuzzy systemsLearning using evolutionary estimation of distribution algorithms
                                                                                            Evolution of Neural NetworksOther hybrids combining evolutionary techniques with other machine learning 
                                                                                                techniques System Enhancements
                                                                                            Competent operator design and implementationEncapsulation and niching techniquesHierarchical architecturesDefault hierarchiesKnowledge representations, extraction and inferenceData sampling(Sub-)Structure (building block) identification and linkage learning for 
                                                                                                GBML systemsIntegration of other machine learning techniques Application Areas
                                                                                            Data miningBioinformatics and life sciencesRobotics, engineering, hardware/software design, and controlCognitive systemsRapid application development frameworks for GBMLDynamic environmentsTime series and sequence learning Further information:http://www-illigal.ge.uiuc.edu/~butz/LCSaoGBML2006/ 
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                                                                                | Real World Applications
 The Real World Applications (RWA) track invites submissions that present rigorous applications of Evolutionary Computation (EC) to real world problems. Of particular interest are:
 (1) Papers that describe advances in the field of EC for implementation purposes.(2) Papers that present rigorous comparisons across techniques in a real world application.
 (3) Papers that present novel uses of EC in the real world.
 (4) Papers that present new applications of EC to real world problems.
 Domains of applications include all industries (e.g., automobile, biotech, 
                                                                                        chemistry, defense, oil and gas, telecommunications, etc.) and functional areas include all functions of relevance to real world problems (logistics, 
                                                                                        scheduling, timetabling, design, pattern recognition, data mining, process control, predictive modeling, etc.). The RWA track differs from the Evolutionary Computation Practice (ECP) workshop in that
                                                                                     (1) RWA only accepts papers with the same high technical and scientific quality as 
                                                                                        that of the rest of the GECCO track papers. ECP is generally (2) Papers accepted in the RWA track will be published in the GECCO 2006 
                                                                                        Proceedings. Therefore, if publication is important to you, we suggest you submit your papers to RWA.
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                                                                                | Search-based Software Engineering:
 The goals of the GECCO SBSE track are to:
 * develop and extend the emerging community working on Search-Based 
                                                                                    Software Engineering * continue to inform researchers in Evolutionary Computation about problems in 
                                                                                    Software Engineering
 * Increase awareness and uptake of Evolutionary computation technology 
                                                                                    within the Software Engineering community
 * Provide definitions of representations, fitness/cost functions, 
                                                                                    operators and search strategies for Software Engineering problems.
 Topics include (but are not limited to) the application of search- based algorithms to: 
                                                                                      Requirements engineering System and software design
 Implementation
 Network design and monitoring
 Software security
 System and software integration
 Quality assurance and testing
 Project management, control, prediction, administration and organization
 Maintenance, change management, optimization and transformation
 Development processes
 
 As an indication, `search- based' techniques are taken to include (but are not limited to):
 * Genetic Algorithms
 * Genetic Programming
 * Evolution Strategies
 * Evolutionary Programming
 * Simulated Annealing
 * Tabu Search
 * Ant Colony Optimization
 * Particle Swarm Optimization 
                                                                                    Papers should address a problem in the software engineering domain and  
                                                                                    should approach the solution to the problem using a heuristic search st 
                                                                                    rategy. Papers may also address the use of methods and techniques for i 
                                                                                    mproving the applicability and efficacy of search-based techniques when applied to software engineering problems. While experim 
                                                                                    ental results are  important, papers that do not contain results, but rather 
                                                                                    present new approaches, concepts and/ or theory will also be considered. Below is a list of the best papers from GECCO 
                                                                                    2002 and 2003. GECCO 2002: Improving Evolutionary Testing by Flag Removal, Mark Harman, Lin Hu, Robert Hierons, Andre Baresel, Harmen Sthamer GECCO 2003: Modeling 
                                                                                    the Search Landscape of Metaheuristic Software Clustering Algorithms, Brian Mitchell, Spiros Mancoridis
 
 http://www.dcs.shef.ac.uk/~phil/sbse2006/
 
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