Regulatory Networks and Genomic Algorithms
نویسنده
چکیده
We propose steps toward enhancing evolutionary computation via mechanisms from molecular biology, in particular the ideas of regulatory networks and embryogenesis. First we survey key facts and developments in bioinformatics and molecular genetics, followed by speculations on future implementations in evolutionary computation. We then focus on computational implementations of the mechanisms of regulatory networks and embryogenesis, surveying previous work in the field and showing the potential of these methods through analysis and analogy. Connections and applications of the regulatory network idea to other fields are also discussed.
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