Title of article :
A diversity maintaining population-based incremental learning algorithm
Author/Authors :
Mario Ventresca، نويسنده , , Hamid R. Tizhoosh، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2008
Pages :
19
From page :
4038
To page :
4056
Abstract :
In this paper we propose a new probability update rule and sampling procedure for population-based incremental learning. These proposed methods are based on the concept of opposition as a means for controlling the amount of diversity within a given sample population. We prove that under this scheme we are able to asymptotically guarantee a higher diversity, which allows for a greater exploration of the search space. The presented probabilistic algorithm is specifically for applications in the binary domain. The benchmark data used for the experiments are commonly used deceptive and attractor basin functions as well as 10 common travelling salesman problem instances. Our experimental results focus on the effect of parameters and problem size on the accuracy of the algorithm as well as on a comparison to traditional population-based incremental learning. We show that the new algorithm is able to effectively utilize the increased diversity of opposition which leads to significantly improved results over traditional population-based incremental learning.
Keywords :
Diversity control , Diversity maintenance , Population-based incremental learning , Opposition-based computing
Journal title :
Information Sciences
Serial Year :
2008
Journal title :
Information Sciences
Record number :
1213436
Link To Document :
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