Abstract:
A major limitation in applying evolution strategies to black box optimization is the possibility of convergence into bad local optima. Many techniques address this proble...Show MoreMetadata
Abstract:
A major limitation in applying evolution strategies to black box optimization is the possibility of convergence into bad local optima. Many techniques address this problem, mostly through restarting the search. However, deciding the new start location is nontrivial since neither a good location nor a good scale for sampling a random restart position are known. A black box search algorithm can nonetheless obtain some information about this location and scale from past exploration. The method proposed here makes explicit use of such experience, through the construction of an archive of novel solutions during the run. Upon convergence, the most "novel" individual found so far is used to position the new start in the least explored region of the search space, actively looking for a new basin of attraction. We demonstrate the working principle of the method on two multi-modal test problems.
Published in: 2011 IEEE Congress of Evolutionary Computation (CEC)
Date of Conference: 05-08 June 2011
Date Added to IEEE Xplore: 14 July 2011
ISBN Information:
ISSN Information:
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- IEEE Keywords
- Index Terms
- Evolutionary Strategy ,
- Archive ,
- Black Box ,
- Search Algorithm ,
- Search Space ,
- Local Optimum ,
- Regions Of Space ,
- New Start ,
- Basin Of Attraction ,
- Black-box Optimization ,
- Objective Function ,
- Covariance Matrix ,
- Evolutionary Algorithms ,
- Fitness Function ,
- Global Optimization ,
- Stopping Criterion ,
- Scale-invariant ,
- Utility Value ,
- Fitness Landscape ,
- Parabola ,
- Monotonic Transformation ,
- Evolutionary Search ,
- Natural Gradient ,
- Invariance Property ,
- Dimension Of The Search Space
- Author Keywords
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- IEEE Keywords
- Index Terms
- Evolutionary Strategy ,
- Archive ,
- Black Box ,
- Search Algorithm ,
- Search Space ,
- Local Optimum ,
- Regions Of Space ,
- New Start ,
- Basin Of Attraction ,
- Black-box Optimization ,
- Objective Function ,
- Covariance Matrix ,
- Evolutionary Algorithms ,
- Fitness Function ,
- Global Optimization ,
- Stopping Criterion ,
- Scale-invariant ,
- Utility Value ,
- Fitness Landscape ,
- Parabola ,
- Monotonic Transformation ,
- Evolutionary Search ,
- Natural Gradient ,
- Invariance Property ,
- Dimension Of The Search Space
- Author Keywords