自适应神经网络的五个实例“基于应答者”的条件作用

M. Commons, P. Miller, Simran Malhotra, Shutong Wei
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引用次数: 1

摘要

通过减少内存和计算量,神经网络可以变得更快、更高效。本文介绍了一种新型的神经网络——自适应神经网络。所提出的神经网络由五个独特的事件对组成。每个配对都是一个模块,这些模块在单个神经网络中连接。配对是对被调查者条件反射的模拟。模拟并不一定代表实际生物体中的条件作用。在这里提出的理论中,应答条件反射中的配对聚集在一起,形成操作性条件反射的基础。具体的配对如下。第一个配对是强化物和引发行为的神经刺激之间的配对。这种配对加强并突出了引起神经刺激的因素。第二种配对是现在显着的神经刺激与先于操作行为的外部环境刺激的配对。三是环境刺激事件与强化刺激事件的配对。四是驱动引发的刺激与强化事件配对,改变强化物的强度。第五种配对是在重复暴露后,外部环境刺激与驱动刺激配对。这种驱动刺激是由一种强化的驱动产生的。在每个模块中,“0”表示没有出现刺激a的配对a,“1”表示出现刺激a的配对a。同样,“0”表示没有出现配对,“1”表示出现配对B,以此类推,对所有5对配对。为了得到一个输出,将配对的值乘以e。在一次试验或实例中,所有5对配对都会出现。然后将乘法的结果累加并除以实例数。使用这些简单的应答配对作为神经网络的基础可以减少错误。文中还列举了一些可以通过这种网络解决的问题。
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Adaptive Neural Networks Accounted for by Five Instances of “Respondent-Based” Conditioning
Neural Networks may be made much faster and more efficient by reducing the amount of memory and computation used. In this paper, a new type of neural network called an Adaptive Neural Network is introduced. The proposed neural network is comprised of five unique pairings of events. Each pairing is a module and the modules are connected within a single neural network. The pairings are a simulation of respondent conditioning. The simulations do not necessarily represent conditioning in actual organisms. In the theory presented here, the pairings in respondent conditioning become aggregated together to form a basis for operant conditioning. The specific pairings are as follows. The first pairing is between the reinforcer and the neural stimulus that elicits the behavior. This pairing strengthens and makes salient that eliciting neural stimulus. The second pairing is that of the now salient neural stimulus with the external environmental stimulus that precedes the operant behavior. The third is the pairing of the environmental stimulus event with the reinforcing stimulus. The fourth is the pairing of the stimulus elicited by the drive with the reinforcement event, changing the strength of the reinforcer. The fifth pairing is that after repeated exposure the external environmental stimulus is paired with the drive stimulus. This drive stimulus is generated by an intensifying drive. Within each module, a “0” means no occurrence of a pairing A of Stimuli A and a “1” means an occurrence of a pairing A of Stimuli A. Similarly, a “0” means no occurrence of a pairing Band a “1” means an occurrence of a pairing B, and so on for all 5 pairings. To obtain an output one multiplies the values of pairings through E. In one trial or instance, all 5 pairings will occur. The results of the multiplications are then accumulated and divided by the number of instances. The use of these simple respondent pairings as a basis for neural networks reduces errors. Examples of problems that may be addressable by such networks are included.
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