Dense Hopfield networks in the teacher-student setting

IF 4.6 2区 物理与天体物理 Q1 PHYSICS, MULTIDISCIPLINARY SciPost Physics Pub Date : 2024-08-08 DOI:10.21468/scipostphys.17.2.040
Robin Thériault, Daniele Tantari
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Abstract

Dense Hopfield networks with $p$-body interactions are known for their feature to prototype transition and adversarial robustness. However, theoretical studies have been mostly concerned with their storage capacity. We derive the phase diagram of pattern retrieval in the teacher-student setting of $p$-body networks, finding ferromagnetic phases reminiscent of the prototype and feature learning regimes. On the Nishimori line, we find the critical amount of data necessary for pattern retrieval, and we show that the corresponding ferromagnetic transition coincides with the paramagnetic to spin-glass transition of $p$-body networks with random memories. Outside of the Nishimori line, we find that the student can tolerate extensive noise when it has a larger $p$ than the teacher. We derive a formula for the adversarial robustness of such a student at zero temperature, corroborating the positive correlation between number of parameters and robustness in large neural networks. Our model also clarifies why the prototype phase of $p$-body networks is adversarially robust.
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师生环境中的密集霍普菲尔德网络
具有 $p$ 体相互作用的密集 Hopfield 网络以其从特征到原型的转换和对抗鲁棒性而著称。然而,理论研究主要关注其存储能力。我们推导出了 p$体网络师生设置下的模式检索相图,发现了与原型和特征学习状态相似的铁磁相。在西森线上,我们找到了模式检索所需的临界数据量,并证明相应的铁磁转变与具有随机存储器的p$体网络的顺磁到自旋玻璃转变相吻合。在西森线之外,我们发现当学生的 p$ 大于教师时,学生可以容忍大量噪音。我们推导出了这样一个学生在零温度下的对抗鲁棒性公式,证实了大型神经网络中参数数量与鲁棒性之间的正相关关系。我们的模型还阐明了为什么p$体网络的原型阶段具有对抗鲁棒性。
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来源期刊
SciPost Physics
SciPost Physics Physics and Astronomy-Physics and Astronomy (all)
CiteScore
8.20
自引率
12.70%
发文量
315
审稿时长
10 weeks
期刊介绍: SciPost Physics publishes breakthrough research articles in the whole field of Physics, covering Experimental, Theoretical and Computational approaches. Specialties covered by this Journal: - Atomic, Molecular and Optical Physics - Experiment - Atomic, Molecular and Optical Physics - Theory - Biophysics - Condensed Matter Physics - Experiment - Condensed Matter Physics - Theory - Condensed Matter Physics - Computational - Fluid Dynamics - Gravitation, Cosmology and Astroparticle Physics - High-Energy Physics - Experiment - High-Energy Physics - Theory - High-Energy Physics - Phenomenology - Mathematical Physics - Nuclear Physics - Experiment - Nuclear Physics - Theory - Quantum Physics - Statistical and Soft Matter Physics.
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