DIS-NNNEMLJan 5, 2018

A relativistic extension of Hopfield neural networks via the mechanical analogy

arXiv:1801.01743v12 citations
Originality Incremental advance
AI Analysis

This work addresses a specific bottleneck in neural network memory models, offering an incremental theoretical extension with potential applications in deep learning and pruning.

The authors tackled the problem of spurious states limiting Hopfield networks by proposing a relativistic extension of the model, which analytically reduces spurious state stability and numerically shows improved performance in the low-storage regime.

We propose a modification of the cost function of the Hopfield model whose salient features shine in its Taylor expansion and result in more than pairwise interactions with alternate signs, suggesting a unified framework for handling both with deep learning and network pruning. In our analysis, we heavily rely on the Hamilton-Jacobi correspondence relating the statistical model with a mechanical system. In this picture, our model is nothing but the relativistic extension of the original Hopfield model (whose cost function is a quadratic form in the Mattis magnetization which mimics the non-relativistic Hamiltonian for a free particle). We focus on the low-storage regime and solve the model analytically by taking advantage of the mechanical analogy, thus obtaining a complete characterization of the free energy and the associated self-consistency equations in the thermodynamic limit. On the numerical side, we test the performances of our proposal with MC simulations, showing that the stability of spurious states (limiting the capabilities of the standard Hebbian construction) is sensibly reduced due to presence of unlearning contributions in this extended framework.

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