组合阈值线性网络的稳定定点

IF 1 3区 数学 Q3 MATHEMATICS, APPLIED Advances in Applied Mathematics Pub Date : 2023-12-13 DOI:10.1016/j.aam.2023.102652
Carina Curto, Jesse Geneson, Katherine Morrison
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引用次数: 0

摘要

组合阈值线性网络(CTLN)是一类特殊的递归神经网络,其动态受底层有向图的严格控制。长期以来,循环网络一直被用作联想记忆和模式补全的模型,网络中的稳定固定点扮演着存储记忆模式的角色。在之前的工作中,我们证明了图的无目标小块对应于动力学的稳定固定点,并猜想这些是唯一可能的稳定固定点 [19], [8]。在本文中,我们证明了猜想在各种特殊情况下都成立,包括具有极强抑制性的网络和大小为 n≤4 的图。我们还进一步证明了稀疏图和近似小块的图永远不可能支持稳定的固定点,从而为猜想提供了证据。最后,我们转化了极值组合学的一些结果,得到了在猜想成立的情况下 CTLN 的稳定固定点数量的上限。
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Stable fixed points of combinatorial threshold-linear networks

Combinatorial threshold-linear networks (CTLNs) are a special class of recurrent neural networks whose dynamics are tightly controlled by an underlying directed graph. Recurrent networks have long been used as models for associative memory and pattern completion, with stable fixed points playing the role of stored memory patterns in the network. In prior work, we showed that target-free cliques of the graph correspond to stable fixed points of the dynamics, and we conjectured that these are the only stable fixed points possible [19], [8]. In this paper, we prove that the conjecture holds in a variety of special cases, including for networks with very strong inhibition and graphs of size n4. We also provide further evidence for the conjecture by showing that sparse graphs and graphs that are nearly cliques can never support stable fixed points. Finally, we translate some results from extremal combinatorics to obtain an upper bound on the number of stable fixed points of CTLNs in cases where the conjecture holds.

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来源期刊
Advances in Applied Mathematics
Advances in Applied Mathematics 数学-应用数学
CiteScore
2.00
自引率
9.10%
发文量
88
审稿时长
85 days
期刊介绍: Interdisciplinary in its coverage, Advances in Applied Mathematics is dedicated to the publication of original and survey articles on rigorous methods and results in applied mathematics. The journal features articles on discrete mathematics, discrete probability theory, theoretical statistics, mathematical biology and bioinformatics, applied commutative algebra and algebraic geometry, convexity theory, experimental mathematics, theoretical computer science, and other areas. Emphasizing papers that represent a substantial mathematical advance in their field, the journal is an excellent source of current information for mathematicians, computer scientists, applied mathematicians, physicists, statisticians, and biologists. Over the past ten years, Advances in Applied Mathematics has published research papers written by many of the foremost mathematicians of our time.
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