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EXPERIMENTS OF FAST LEARNING WITH HIGH ORDER BOLTZMANN MACHINES

机译:高阶Boltzmann机器的快速学习实验

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This work reports the results obtained with the application of High Order Boltzmann Machines without hidden units to construct classifiers for some problems that represent different learning paradigms. The Boltzmann Machine weight updating algorithm remains the same even when some of the units can take values in a discrete set or in a continuous interval. The absence of hidden units and the restriction to classification problems allows for the estimation of the connection statistics, without the computational cost involved in the application of simulated annealing. In this setting, the learning process can be sped up several orders of magnitude with no appreciable loss of quality of the results obtained. [References: 67]
机译:这项工作报告了通过使用不带隐藏单元的高阶玻尔兹曼机器来构建代表某些代表不同学习范例的问题的分类器而获得的结果。即使某些单位可以采用离散集或连续间隔的值,玻尔兹曼机器权重更新算法也保持不变。隐藏单元的缺乏和对分类问题的限制允许估计连接统计信息,而无需进行模拟退火应用中的计算成本。在这种情况下,学习过程可以加快几个数量级,而不会明显降低所获得结果的质量。 [参考:67]

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