Learning without gradient descent encoded by the dynamics of a neurobiological model

George, Vivek Kurien, Morar, Vikash, Yang, Weiwei, Larson, Jonathan, Tower, Bryan, Mahajan, Shweti, Gupta, Arkin, White, Christopher, Silva, Gabriel A.

arXiv.org Artificial Intelligence 

The success of state-of-the-art machine learning is essentially all based on different variations of gradient descent algorithms that minimize some version of a cost or loss function. A fundamental limitation, however, is the need to train these systems in either supervised or unsupervised ways by exposing them to typically large numbers of training examples. Here, we introduce a fundamentally novel conceptual approach to machine learning that takes advantage of a neurobiologically derived model of dynamic signaling, constrained by the geometric structure of a network. We show that MNIST images can be uniquely encoded and classified by the dynamics of geometric networks with nearly state-of-the-art accuracy in an unsupervised way, and without the need for any training.

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