POLYHEDRAL COMBINATORICS AND NEURAL NETWORKS

被引:46
作者
GEE, AH
PRAGER, RW
机构
关键词
D O I
10.1162/neco.1994.6.1.161
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
The often disappointing performance of optimizing neural networks can be partly attributed to the rather ad hoc manner in which problems are mapped onto them for solution. In this paper a rigorous mapping is described for quadratic 0-1 programming problems with linear equality and inequality constraints, this being the most general class of problem such networks can solve. The problem's constraints define a polyhedron P containing all the valid solution points, and the mapping guarantees strict confinement of the network's state vector to P. However, forcing convergence to a 0-1 point within P is shown to be generally intractable, rendering the Hopfield and similar models inapplicable to the vast majority of problems. A modification of the tabu learning technique is presented as a more coherent approach to general problem solving with neural networks. When tested on a collection of knapsack problems, the modified dynamics produced some very encouraging results.
引用
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页码:161 / 180
页数:20
相关论文
共 33 条
[1]   THE RELAXATION METHOD FOR LINEAR INEQUALITIES [J].
AGMON, S .
CANADIAN JOURNAL OF MATHEMATICS-JOURNAL CANADIEN DE MATHEMATIQUES, 1954, 6 (03) :382-392
[2]  
Aiyer S B, 1990, IEEE Trans Neural Netw, V1, P204, DOI 10.1109/72.80232
[3]  
AIYER SVB, 1991, CUEDFINFENGTR89 CAMB
[4]  
BEYER DA, 1991, P INT JOINT C NEURAL
[5]  
BEYER DA, 1990, TABU LEARNING NEURAL
[6]  
BILBRO G, 1989, ADV NEURAL INFORMATI, V1, P91
[7]  
Birkhoff G., 1946, U NAC TUCUMAN REV A, V5, P147
[8]   COMPETITIVE NEURAL ARCHITECTURE FOR HARDWARE SOLUTION TO THE ASSIGNMENT PROBLEM [J].
EBERHARDT, SP ;
DAUD, T ;
KERNS, DA ;
BROWN, TX ;
THAKOOR, AP .
NEURAL NETWORKS, 1991, 4 (04) :431-442
[9]  
Garey M. R., 1979, COMPUTERS INTRACTABI
[10]  
GEE AH, 1992, CUEDFINFENGRTR95 CAM