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A new mechanical approach to handle generalized Hopfield neural networks

机译:一种处理广义Hopfield神经网络的新机械方法

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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 and mimics the non-relativistic counterpart, the so-called classical limit). 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. Further, on the numerical side, we test the performances of our proposal with extensive Monte Carlo 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 that prune them massively. (C) 2018 Elsevier Ltd. All rights reserved.
机译:我们提出了修改Hopfield模型的成本函数,其潮汐特征在其泰勒扩展中闪耀的亮相,并导致与交替标志的配对相互作用,这表明具有深入学习和网络修剪的统一框架。在我们的分析中,我们依赖于汉密尔顿 - 雅各的对应与机械系统相关的统计模型。在这张照片中,我们的模型只不过是原始Hopfield模型的相对论延伸(其成本函数是Mattis磁化中的二次形式,并模仿非相对论的对应物,所谓的经典极限)。我们专注于低储存的制度,通过利用机械类比来分析地解决模型,从而获得热力学极限中的自由能和相关的自我一致性方程的完整表征。此外,在数值方面,我们用广泛的蒙特卡罗模拟测试我们提案的表现,表明伪状态的稳定性(限制了标准的Hebbian结构的能力)是明智地减少了由于没有学习贡献,这些贡献是大规模修剪的不学习贡献。 (c)2018年elestvier有限公司保留所有权利。

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