In this paper, we deal with promising crossover operators developed in the genetic algorithm (GA) and analyze the performance of these crossovers on the traveling salesman problem (TSP) which is one of the most popular NP-hard problems. Many crossovers that efficiently generate good solutions have b
โฆ LIBER โฆ
The effects of two new crossover operators on genetic algorithm performance
โ Scribed by Mustafa Kaya
- Publisher
- Elsevier Science
- Year
- 2011
- Tongue
- English
- Weight
- 698 KB
- Volume
- 11
- Category
- Article
- ISSN
- 1568-4946
No coin nor oath required. For personal study only.
๐ SIMILAR VOLUMES
Performance analysis for crossover opera
โ
Kengo Katayama; Hisayuki Hirabayashi; Hiroyuki Narihisa
๐
Article
๐
1999
๐
John Wiley and Sons
๐
English
โ 717 KB
A study of genetic crossover operations
โ
K.C. Chan; H. Tansri
๐
Article
๐
1994
๐
Elsevier Science
๐
English
โ 957 KB
On the effect of selection in genetic al
โ
Christian Mazza; Didier Piau
๐
Article
๐
2001
๐
John Wiley and Sons
๐
English
โ 148 KB
๐ 1 views
Adaptation of genetic operators and para
โ
Koichi Hatta; Shin'ichi Wakabayashi; Tetsushi Koide
๐
Article
๐
2000
๐
John Wiley and Sons
๐
English
โ 210 KB
๐ 2 views
Effect of the Genetic Algorithm Paramete
โ
Silvia R. M. Pereira; Frederic Clerc; David Farrusseng; Jan C. Van der Waal; Tho
๐
Article
๐
2005
๐
John Wiley and Sons
โ 8 KB
๐ 1 views
The effect of location, strategy, and op
โ
Susan Meyer Goldstein; Peter T Ward; G.Keong Leong; Timothy W Butler
๐
Article
๐
2001
๐
Elsevier Science
๐
English
โ 98 KB
## Abstract Hospitals in the US are faced with challenges in how to compete and remain viable in an increasingly competitive environment. Using data from a primary survey of hospitals and from various secondary sources, we investigate the incremental effects on hospital performance of location, str