Abstract

We present a new self-organized neural model that we term ReST (Resilient Self-organizing Tissue). ReST can be run as a convolutional neural network (CNN), possesses a \(C^\infty \) energy function as well as a probabilistic interpretation of neural activities, which arises from the constraint of log-normal activity distribution over time that is enforced during learning. We discuss the advantages of a \(C^\infty \) energy function and present experiments demonstrating the self-organization and self-adaptation capabilities of ReST. In addition, we provide a performance benchmark for the publicly available TensorFlow-implementation.

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