Convergence of meta-controlled Boltzmann machine and its application for bilevel programming problem
Date
2012-02-27Author
Nishiigami, Wataru
Watada, Junzo, Prof. Dr.
Shamshul Bahar, Yakoob, Assoc. Prof. Dr.
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In this paper, meta controlled Boltzmann machine; the double-layered Boltzmann machine consisting of upper (Hopfield network) and lower (Boltzmann network) layers, is efficiently applied to solve mean-variance problem using mathematical programming with two objectives: the minimization of risk and the maximization of expected return. It is demonstrated that the proposed structural learning method has various advantages in a way such as an investment for a power system. As a result, it was shown that the structural learning can provide an alternative solution for decision makers to select the best solution from their respective point of view, as a numerical example shows. The simulation also showed that computational cost is significantly decreased compared with a conventional BM. The obtained results showed that the selection, investment expense rate to substations, and reduced computation time can be prolonged to increase cost savings.
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