The All Stars There are currently 3 main paradigms in EA research: GENETIC ALGORITHMs, EVOLUTIONARY PROGRAMMING, and EVOLUTION STRATEGIEs. CLASSIFIER SYSTEMs and GENETIC PROGRAMMING are OFFSPRING of the GA community. Besides this leading crop, there are numerous other different approaches, alongside hybrid experiments, i.e. there exist pieces of software residing in some researchers computers, that have been described in papers in conference proceedings, and may someday prove useful on certain tasks. To stay in EA slang, we should think of these evolving strands as BUILDING BLOCKs, that when recombined someday, will produce new offspring and give birth to new EA paradigm(s). Promising Rookies As far as "solving complex function and COMBINATORIAL OPTIMIZATION tasks" is concerned, Davis' work on real-valued representations and adaptive operators should be mentioned (Davis 89). Moreover Whitley's Genitor system incorporating ranking and "steady state" mechanism (Whitley 89), Goldberg's "messy GAs", involves adaptive representations (Goldberg 91), and Eshelman's CHC algorithm (Eshelman 91). For "the design of robust learning systems", i.e. the field characterized by CFS, Holland's (1986) CLASSIFIER SYSTEM, with it's state-of-the-art implementation CFS-C (Riolo 88), we should note recent developments in SAMUEL (Grefenstette 89), GABIL (De Jong & Spears 91), and GIL (Janikow 91). References Davis, L. (1989) "Adapting operator probabilities in genetic algorithms", [ICGA89], 60-69. Whitley, D. et al. (1989) "The GENITOR algorithm and SELECTION pressure: why rank-based allocation of reproductive trials is best", [ICGA89], 116-121. Goldberg, D. et al. (1991) "Don't worry, be messy", [ICGA91], 24-30. Eshelman, L.J. et al. (1991) "Preventing premature convergence in GENETIC ALGORITHMs by preventing incest", [ICGA91], 115-122. Holland, J.H. (1986) "Escaping brittleness: The possibilities of general-purpose learning algorithms applied to parallel rule-based systems". In R. Michalski, J. Carbonell, T. Mitchell (eds), Machine Learning: An ARTIFICIAL INTELLIGENCE Approach. Los Altos: Morgan Kaufmann. Riolo, R.L. (1988) "CFS-C: A package of domain independent subroutines for implementing CLASSIFIER SYSTEMs in arbitrary, user- defined environments". Logic of computers group, Division of computer science and engineering, University of Michigan. Grefenstette, J.J. (1989) "A system for learning control strategies with genetic algorithms", [ICGA89], 183-190. De Jong K.A. & Spears W. (1991) "Learning concept classification rules using genetic algorithms". Proc. 12th IJCAI, 651-656, Sydney, Australia: Morgan Kaufmann. Janikow C. (1991) "Inductive learning of decision rules from attribute-based examples: A knowledge-intensive GENETIC ALGORITHM approach". TR91-030, The University of North Carolina at Chapel Hill, Dept. of Computer Science, Chapel Hill, NC.Go Back Up