参数连通性:约束权空间中学习的可行性

T. Caudell
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引用次数: 3

摘要

考虑了当特定的人工神经模型受到约束时对所选学习算法性能的影响。考虑的特定约束模型是参数连接(PC),其中传入链路的权重被约束为相对较少的参数的函数。原则上,这可以在电光系统中实现,使用光电探测器、微型电光电池和激光二极管等设备。低分辨率全息镜可用于指导网络体系结构的全局结构。利用PC机进行了仿真。目前,正在研究实现简单逻辑功能的分层PC网络。测量使用PCU (PC unit)的网络的性能。PC被结合到广义delta规则和遗传算法中来测量学习能力。PC在充分利用光学系统性能的同时,几乎可以实现网络的通用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Parametric connectivity: feasibility of learning in constrained weight space
Consideration is given to the impact on the performance of selected learning algorithms when specific artificial neural models are constrained. The particular model of constraint under consideration is parametric connectivity (PC), in which the weights of the incoming links are constrained to be a function of a relatively small number of parameters. This can, in principle, be implemented in an electrooptical system, using such devices as photodetectors, miniature electrooptical cells, and laser diodes. Low-resolution holographic mirrors may be used to direct the global structure of the network architecture. A simulation using PC has been developed. Currently, layered PC networks that implement simple logic functions are being investigated. The performance of networks that use PC units (PCU) is measured. PC is incorporated into the generalized delta rule and into genetic algorithms to measure learning capacity. PC allows almost complete generality in network implementation, while taking advantage of optical system performance.<>
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