A Differentiable Neural Computer (DNC) is a neural network with an external memory which allows for iterative content modification via read, write and delete operations. We show that information theoretic properties of the memory contents play an important role in the performance of such architectures. We introduce a novel concept of memory demon to DNC architectures which modifies the memory contents implicitly via additive input encoding. The goal of the memory demon is to maximize the expected sum of mutual information of the consecutive external memory contents.
翻译:一个有差异的神经计算机(DNC)是一个具有外部内存的神经网络,它允许通过读、写和删除操作进行迭代内容修改。我们表明,内存内容的信息理论性能在这类结构的运行中起着重要作用。我们向DNC结构引入了记忆恶魔的新概念,通过添加输入编码暗含修改内存内容。内存恶魔的目标是最大限度地增加连续外部内存内容的预期相互信息总和。