Metzler R, Kinzel W, Kanter I
Institut für Theoretische Physik, Universität Würzburg, Am Hubland, D-97074 Würzburg, Germany.
Phys Rev E Stat Phys Plasmas Fluids Relat Interdiscip Topics. 2000 Aug;62(2 Pt B):2555-65. doi: 10.1103/physreve.62.2555.
Several scenarios of interacting neural networks which are trained either in an identical or in a competitive way are solved analytically. In the case of identical training each perceptron receives the output of its neighbor. The symmetry of the stationary state as well as the sensitivity to the used training algorithm are investigated. Two competitive perceptrons trained on mutually exclusive learning aims and a perceptron which is trained on the opposite of its own output are examined analytically. An ensemble of competitive perceptrons is used as decision-making algorithms in a model of a closed market (El Farol Bar problem or the Minority Game. In this game, a set of agents who have to make a binary decision is considered.); each network is trained on the history of minority decisions. This ensemble of perceptrons relaxes to a stationary state whose performance can be better than random.
对以相同方式或竞争方式训练的几种相互作用神经网络的情况进行了解析求解。在相同训练的情况下,每个感知器接收其邻居的输出。研究了稳态的对称性以及对所使用训练算法的敏感性。对在相互排斥的学习目标上训练的两个竞争感知器以及在与其自身输出相反的目标上训练的一个感知器进行了解析研究。在一个封闭市场模型(爱尔法鲁酒吧问题或少数者博弈。在这个博弈中,考虑一组必须做出二元决策的主体)中,一组竞争感知器被用作决策算法;每个网络根据少数派决策的历史进行训练。这组感知器会松弛到一个稳态,其性能可能优于随机性能。