首页> 外文会议>Eighth Neural Computation and Psychology Workshop; 20030828-30; University of Kent(GB) >A TEMPORAL ATTRACTOR FRAMEWORK FOR THE DEVELOPMENT OF ANALOGICAL COMPLETION
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A TEMPORAL ATTRACTOR FRAMEWORK FOR THE DEVELOPMENT OF ANALOGICAL COMPLETION

机译:模拟完成发展的临时吸引人框架

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The current model is an adaptation of, extending it to draw more complex and abstract analogies. Units are connected by two types of modifiable connections: fast connections which transmit the current activation of the units and slow connections which implement a delay transmitting an earlier activation state of the network. The fast connections drive the network into attractor states corresponding to objects. The slow connections implement transformations between states by pushing the network out of its stable state and into another attractor basin. The fast and slow connections work together to move the network from one attractor state to another in an ordered way. Since the network can learn transformations between more than two objects we suggest how the network could draw analogies involving more than two objects.
机译:当前模型是对它的改编,将其扩展为绘制更复杂和抽象的类比。单元通过两种类型的可修改连接进行连接:快速连接(用于传输单元的当前激活状态)和慢速连接(用于延迟传输网络的较早激活状态)。快速连接将网络驱动到与对象相对应的吸引子状态。慢速连接通过将网络从其稳定状态推入另一个吸引域来实现状态之间的转换。快速连接和慢速连接共同作用,以有序方式将网络从一个吸引子状态移动到另一个吸引子状态。由于网络可以学习两个以上对象之间的转换,因此我们建议网络如何绘制涉及两个以上对象的类比。

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