TY - JOUR
T1 - Optimal competitive hopfield network with stochastic dynamics for maximum cut problem
AU - Jiahai, Wang
AU - Zheng, Tang
AU - Cao, Qiping
AU - Ronglong, Wang
PY - 2004
Y1 - 2004
N2 - In this paper, introducing stochastic dynamics into an optimal competitive Ilopfield network model (OCHOM), we propose a new algorithm that permits temporary energy increases which helps the OCHOM escape from local minima. The goal of the maximum cut problem, which is an NP-complete problem, is to partition the node set of an undirected graph into two parts in order to maximize the cardinality of the set of edges cut by the partition. The problem has many important applications including the design of VLSI circuits and design of communication networks. Recently, Galan-Marfn et al. proposed the OCHOM, which can guarantee convergence to a global/local minimum of the energy function, and performs better than the other competitive neural approaches. However, the OCHOM has no mechanism to escape from local minima. The proposed algorithm introduces stochastic dynamics which helps the OCHOM escape from local minima, and it is applied to the maximum cut problem. A number of instances have been simulated to verify the proposed algorithm.
AB - In this paper, introducing stochastic dynamics into an optimal competitive Ilopfield network model (OCHOM), we propose a new algorithm that permits temporary energy increases which helps the OCHOM escape from local minima. The goal of the maximum cut problem, which is an NP-complete problem, is to partition the node set of an undirected graph into two parts in order to maximize the cardinality of the set of edges cut by the partition. The problem has many important applications including the design of VLSI circuits and design of communication networks. Recently, Galan-Marfn et al. proposed the OCHOM, which can guarantee convergence to a global/local minimum of the energy function, and performs better than the other competitive neural approaches. However, the OCHOM has no mechanism to escape from local minima. The proposed algorithm introduces stochastic dynamics which helps the OCHOM escape from local minima, and it is applied to the maximum cut problem. A number of instances have been simulated to verify the proposed algorithm.
KW - Maximum cut problem
KW - Optimal competitive hopfield model
KW - Stochastic dynamistic
UR - http://www.scopus.com/inward/record.url?scp=16644380358&partnerID=8YFLogxK
U2 - 10.1142/S0129065704002029
DO - 10.1142/S0129065704002029
M3 - 学術論文
C2 - 15372703
AN - SCOPUS:16644380358
SN - 0129-0657
VL - 14
SP - 257
EP - 265
JO - International Journal of Neural Systems
JF - International Journal of Neural Systems
IS - 4
ER -