Tank D W, Hopfield J J
Proc Natl Acad Sci U S A. 1987 Apr;84(7):1896-900. doi: 10.1073/pnas.84.7.1896.
An analog model neural network that can solve a general problem of recognizing patterns in a time-dependent signal is presented. The networks use a patterned set of delays to collectively focus stimulus sequence information to a neural state at a future time. The computational capabilities of the circuit are demonstrated on tasks somewhat similar to those necessary for the recognition of words in a continuous stream of speech. The network architecture can be understood from consideration of an energy function that is being minimized as the circuit computes. Neurobiological mechanisms are known for the generation of appropriate delays.
提出了一种能够解决在随时间变化的信号中识别模式这一普遍问题的模拟模型神经网络。这些网络使用一组有模式的延迟来共同将刺激序列信息聚焦到未来某个时刻的神经状态。该电路的计算能力在与连续语音流中单词识别所需任务有些相似的任务上得到了证明。通过考虑在电路计算时被最小化的能量函数,可以理解网络架构。已知存在产生适当延迟的神经生物学机制。