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Non-convex Multi-species Hopfield Models

机译:非凸多种Hopfield模型

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In this work we introduce a multi-species generalization of the Hopfield model for associative memory, where neurons are divided into groups and both inter-groups and intra-groups pair-wise interactions are considered, with different intensities. Thus, this system contains two of the main ingredients of modern deep neural-network architectures: Hebbian interactions to store patterns of information and multiple layers coding different levels of correlations. The model is completely solvable in the low-load regime with a suitable generalization of the Hamilton–Jacobi technique, despite the Hamiltonian can be a non-definite quadratic form of the Mattis magnetizations. The family of multi-species Hopfield model includes, as special cases, the 3-layers Restricted Boltzmann Machine with Gaussian hidden layer and the Bidirectional Associative Memory model.
机译:在这项工作中,我们介绍了联想记忆Hopfield模型的一个多物种推广,其中神经元被分成组,组间和组内的成对相互作用都被考虑,强度不同。因此,这个系统包含了现代深层神经网络架构的两个主要组成部分:存储信息模式的Hebbian交互和编码不同级别相关性的多层。尽管哈密顿量可以是马蒂斯磁化的非定二次形式,但该模型在低负荷状态下完全可解,并适当推广了哈密顿-雅可比技术。作为特例,多物种Hopfield模型族包括具有高斯隐层的三层受限Boltzmann机和双向联想记忆模型。

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