21 / 2017-11-11 11:55:03
Application of Evolution in Path Searching and Program Generation
Genetic programming; Grammatical evolution; Finite state transition; Genetic operators
Draft Rejected
孝如 陈 / 广州大学华软软件学院
The problem with performance of genetic programming (GP) comes in part from what descrip-tion tool we use and what convenience it may offer. As random search technologies, a major challenge GP must face is to get ideal approaches for depicting the search space and evolution rules. To this end, model ap-proaches aiming to delineate relationships among given components or constructors is initiated under finite state transition systems, and a deep investigation into efficient implementation of genetic operators is carried out. To make it more convincing, we also conduct experiments with classical regression problems, obtaining positive result from comparisons between the present approach and an important GP variant like grammatical evolution.
Important Date
  • Conference Date

    Dec 16

    2017

    to

    Dec 17

    2017

  • Nov 10 2017

    Draft paper submission deadline

  • Dec 17 2017

    Registration deadline

Sponsored By
国际注册工程师协会
广州大学华软软件学院
衡阳师范学院计算机科学与技术学院
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