arXivDaily arXiv每日学术速递 周一至周五更新
2606.20187 2026-06-19 cond-mat.dis-nn quant-ph 新提交

Truncated Wigner dynamics of biclique quantum spin glasses

双团簇量子自旋玻璃的截断维格纳动力学

Dries Sels

AI总结 研究双团簇量子自旋玻璃的近绝热动力学,使用离散截断维格纳近似(TWA)方法,在较大系统尺寸下高保真度恢复样本波动和临界指数,计算成本低,可扩展至数万量子比特。

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AI中文摘要

量子自旋玻璃常被视为研究量子优化算法的试验平台,并因此成为各种量子优势主张的主题。本文在(离散)截断维格纳近似(TWA)框架下研究双团簇量子自旋玻璃的近绝热动力学。小系统基准测试表明,在广泛的退火时间范围内,TWA 能够恢复 Edwards-Anderson 序参量的样本间波动,且随着系统尺寸增大保真度提高。我们根据理论预期从 Binder 累积量中提取临界指数,重现了最近的量子实验。该方法的计算成本极低,可轻松应用于数万个量子比特。

英文摘要

Quantum spin glasses are often considered testbeds for studying quantum optimization algorithms and as such have been the subject of various quantum advantage claims. Here we investigate the near adiabatic dynamics of biclique quantum spin glasses within the (discrete) truncated Wigner approximation (TWA). Benchmarks on small systems show that TWA recovers sample-to-sample fluctuations of the Edwards-Anderson order parameter, over a wide range of annealing times, with increasing fidelity when the system size increases. We extract critical exponents from the Binder cumulant in line with theoretical expectations, reproducing recent quantum experiments. The computational cost of the method is minimal and it can easily be applied to tens of thousands of qubits.

2606.19436 2026-06-19 cond-mat.dis-nn cond-mat.mes-hall cond-mat.other 新提交

Observation of complete delocalization in disordered photonic lattices

无序光子晶格中完全去局域化的观测

Biplab Pal, Rodrigo A. Vicencio

AI总结 本文在完全无序的钻石点链中观察到安德森局域化的完全缺失和粒子的完美传输,通过几何条件产生的透明窗口证明了该现象,并通过数值模拟和飞秒激光写入的光子晶格实验验证,同时展示了π有效磁通下极端局域化的可能性。

Comments Main Text (5 pages, 4 figures); Supplemental Material (11 pages, 10 figures); Supplemental Material is added as an Ancillary file; Comments are welcome

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AI中文摘要

我们展示了在完全无序的钻石点链中,安德森局域化完全缺失以及粒子完美传输的异常现象。我们基于几何条件产生的透明窗口,解析地证明了观测到这一异常现象的条件。我们通过数值模拟和飞秒激光写入的钻石点光子晶格中光传输概率的直接实验观测,支持了我们的理论预测。我们还表明,对于π有效磁通,同一系统中可能发生光的极端局域化,而与具体几何结构无关。我们的结果为在完全无序的晶格系统中控制能量从弹道传输到零传输提供了一个极好的平台。

英文摘要

We present the exceptional phenomenon of complete absence of Anderson localization, and perfect transmission of particles, in a completely disordered diamond-dot chain. We analytically show a proof for the condition to observe this exceptional phenomenon, based on a transparent window emerging from a geometrical condition. We support our theoretical prediction by numerical simulations and direct experimental observation of the transmission probabilities of the light in a femtosecond laser-written diamond-dot photonic lattices. We additionally show that for a $π$ effective magnetic flux, extreme localization of the light in the same system may occur, independently on the specific geometry. Our results open up an excellent platform for controlling the transmission of energy from ballistic to zero transmission, in a completely disordered lattice system..

2606.20347 2026-06-19 cs.LG cond-mat.dis-nn 交叉投稿

Critical Percolation as a Synthetic Data Model for Interpretability

临界渗流作为可解释性的合成数据模型

Aryeh Brill, Tom Ingebretsen Carlson

AI总结 提出基于临界平均场渗流簇的层次函数合成数据集,具有稀疏、分形和幂律分布特性,支持几乎线性时间算法生成任意规模数据,可用于评估可解释性方法。

Comments 21 pages, 10 figures, accepted to the Mechanistic Interpretability Workshop at ICML 2026

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AI中文摘要

神经网络学习反映自然数据层次化、多尺度结构的特征。用于评估可解释性方法的合成数据集通常缺乏这种结构,限制了其作为现实玩具模型的价值。为弥补这一差距,我们引入了一系列合成数据集,由定义在高维数据空间中嵌入的临界平均场渗流簇上的层次函数组成。渗流数据由稀疏、低维的分形簇组成,具有幂律大小分布。模拟分类层次结构的潜变量生成每个数据点的目标值。该数据模型在分析上易于处理,具有已知的临界指数,无需超参数调整即可固定其属性。我们利用渗流簇、随机树和加法凝聚之间的映射,提出了一种几乎线性时间的算法,用于联合采样随机树及其层次潜变量分解,从而能够生成任意规模的数据。通过探测实验,我们发现模型的地面真值潜变量可以从神经网络激活中线性解码。稀疏性、自相似性、幂律统计和分析可处理性共同使临界渗流成为可解释性研究的原理性测试平台。

英文摘要

Neural networks learn features that reflect the hierarchical, multi-scale structure of natural data. Synthetic datasets used to evaluate interpretability methods typically lack this structure, limiting their value as realistic toy models. To close this gap, we introduce a family of synthetic datasets consisting of hierarchical functions defined on critical mean-field percolation clusters embedded in a high-dimensional data space. The percolation data consists of sparse, low-dimensional fractal clusters with a power-law size distribution. Latent variables modeling a taxonomic hierarchy generate each data point's target value. The data model is analytically tractable with known critical exponents that fix its properties without requiring hyperparameter tuning. We leverage a mapping between percolation clusters, random trees, and additive coalescence to propose an almost linear-time algorithm to jointly sample a random tree and its hierarchical latent decomposition, enabling data generation at arbitrary scale. Using probing experiments, we find that the model's ground-truth latent variables can be linearly decoded from neural network activations. Together, sparsity, self-similarity, power-law statistics, and analytical tractability make critical percolation a principled testbed for interpretability research.

2606.18752 2026-06-19 math-ph cond-mat.dis-nn math.MP 交叉投稿

Self-averaging of replica overlaps in the random field Edwards-Anderson model

随机场Edwards-Anderson模型中复制重叠的自平均性

C. Itoi, Y. Sakamoto

AI总结 证明任意维度随机场Edwards-Anderson模型中复制重叠在耦合常数空间几乎处处自平均,通过自由能密度对随机场强度的导数表示序参量,并利用Tasaki不等式证明方差消失。

Comments 12 pages, 2 figures

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AI中文摘要

在任意维度的随机场Edwards-Anderson (EA)模型中,几乎处处在耦合常数空间中证明了复制重叠的自平均性。EA序参量用自由能密度对随机场强度的导数表示,与边界条件无关。Tasaki关于有限维自旋玻璃模型的相关不等式表明,平方复制重叠的期望被平方EA序参量所界定。这些简单的评估使我们能够证明复制重叠的方差在无限体积极限下消失。此外,在没有随机场的高斯交换相互作用的EA模型中,也证明了复制键重叠的自平均性。短程自旋玻璃模型已被证明与具有RSB相的均值场自旋玻璃模型行为不同。

英文摘要

The self-averaging of the replica overlap is proven in the Edwards-Anderson (EA) model under random field almost everywhere in the coupling constant space in any dimension. The EA order parameter is represented in terms of the derivative of the free energy density with respect to the random field strength, regardless of boundary conditions. Tasaki's correlation inequality for finite-dimensional spin glass models shows that the expectation of the squared replica overlap is bounded by the squared EA order parameter. These simple evaluations enable us to prove that the variance of the replica overlap vanishes in the infinite-volume limit. The self-averaging of the replica bond overlap is proven also in the EA model with Gaussian exchange interaction without random field. Short-range spin glass models have been shown to behave differently from mean-field spin glass models with RSB phase.

2601.02149 2026-06-19 cond-mat.mes-hall cond-mat.dis-nn cs.AI 版本更新

AI-enhanced tuning of quantum dot Hamiltonians toward Majorana modes

基于人工智能的量子点哈密顿量调优以实现马约拉纳模式

Mateusz Krawczyk, Jarosław Pawłowski

发表机构 * Institute of Theoretical Physics, Wrocław University of Science and Technology(理论物理研究所,沃林大学技术学院)

AI总结 本文提出基于神经网络的模型,通过学习量子点模拟器的工作区域,利用输运测量自动调优设备以获得马约拉纳模式。模型在无监督条件下训练于导电图合成数据,采用融合马约拉纳零模关键性质的物理引导损失函数。

Comments 12 pages, 8 figures, 2 tables

Journal ref Phys. Rev. Applied 25, 064032 (2026)

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AI中文摘要

我们提出了一种基于神经网络的模型,能够学习量子点模拟器广泛的工作区域,并利用此知识通过输运测量自动调优这些设备,以在结构中获得马约拉纳模式。模型在无监督条件下训练于导电图合成数据,采用融合马约拉纳零模关键性质的物理引导损失函数。我们展示了通过适当训练,深度视觉变换器网络可以高效记忆哈密顿量参数与导电图之间的关系,并利用此提出量子点链参数更新,驱动系统进入拓扑相。从参数空间的广泛初始调谐范围开始,单步更新足以生成非平凡零模。此外,通过启用迭代调优过程——系统在每一步获得更新的导电图——我们证明该方法可以处理参数空间更大的区域。

英文摘要

We propose a neural network-based model capable of learning the broad landscape of working regimes in quantum dot simulators, and using this knowledge to autotune these devices - based on transport measurements - toward obtaining Majorana modes in the structure. The model is trained in an unsupervised manner on synthetic data in the form of conductance maps, using a physics-informed loss that incorporates key properties of Majorana zero modes. We show that, with appropriate training, a deep vision-transformer network can efficiently memorize relation between Hamiltonian parameters and structures on conductance maps and use it to propose parameters update for a quantum dot chain that drive the system toward topological phase. Starting from a broad range of initial detunings in parameter space, a single update step is sufficient to generate nontrivial zero modes. Moreover, by enabling an iterative tuning procedure - where the system acquires updated conductance maps at each step - we demonstrate that the method can address a much larger region of the parameter space.

2601.22300 2026-06-19 physics.optics cond-mat.dis-nn cs.ET cs.LG 版本更新

Toward all-optical unsupervised Hebbian learning in deep photonic neuromorphic networks

面向全光学无监督Hebbian学习的深度光子神经形态网络

Xi Li, Disha Biswas, Peng Zhou, Wesley H. Brigner, Anna Capuano, Joseph S. Friedman, Qing Gu

发表机构 * Department of Electrical and Computer Engineering, North Carolina State University(北卡罗来纳州立大学电气与计算机工程系) Department of Electrical and Computer Engineering, The University of Texas at Dallas(德克萨斯大学达拉斯分校电气与计算机工程系) Department of Materials Science and Engineering, North Carolina State University(北卡罗来纳州立大学材料科学与工程系) Department of Physics, North Carolina State University(北卡罗来纳州立大学物理系)

AI总结 提出一种基于相变材料突触和局部光反馈的深度光子神经形态网络架构,实现在线无监督Hebbian学习,实验验证了自适应突触演化和光学推理。

Comments 16 pages, 4 figures

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AI中文摘要

我们提出了一种基于相变材料(PCM)突触和局部光反馈的深度光子神经形态网络(PNN)架构,用于在线、无监督的Hebbian学习。该架构将光学矢量-矩阵乘法、非易失性PCM突触加权以及局部符合驱动的突触自适应结合在一个与光子集成电路兼容的多层光子交叉开关框架中。与依赖外部计算梯度、重复光电转换或全局反向传播的传统PNN不同,所提出的框架采用由突触前和突触后光学活动直接控制的局部Hebbian学习。为了研究所提出的学习机制的可行性,我们使用光纤组件、可编程可变光衰减器和包含PCM热动力学的实时软件控制实现了PNN设计。在离线和在线学习条件下,使用代表性图像识别任务实验评估了监督和无监督学习行为。实验结果表明,在现实光纤硬件条件下,通过局部Hebbian学习实现了自适应突触演化、成功的光学推理和自主模式编码。这些结果为未来能够实现可扩展和节能的在线Hebbian学习的集成光子神经形态系统铺平了道路。

英文摘要

We propose a deep photonic neuromorphic network (PNN) architecture based on phase-change material (PCM) synapses and local optical feedback for online, unsupervised Hebbian learning. The proposed architecture combines optical vector-matrix multiplication, non-volatile PCM synaptic weighting, and local coincidence-driven synaptic adaptation within a multilayer photonic crossbar framework compatible with photonic integrated circuits. Unlike conventional PNNs that rely on externally computed gradients, repeated optical-electrical-optical conversions, or global backpropagation, the proposed framework employs local Hebbian learning governed directly by correlated pre- and post-synaptic optical activity. To investigate the feasibility of the proposed learning mechanism, we implemented the PNN design using fiber-optic components, programmable variable optical attenuators, and real-time software control that incorporates PCM thermal dynamics. Supervised and unsupervised learning behaviors were experimentally evaluated under both offline and online learning conditions using representative image-recognition tasks. The experimental results demonstrate adaptive synaptic evolution, successful optical inference, and autonomous pattern encoding through local Hebbian learning under realistic fiber-optic hardware conditions. These results establish a pathway toward future integrated photonic neuromorphic systems capable of scalable and energy-efficient online Hebbian learning.

2509.10705 2026-06-19 cond-mat.stat-mech cond-mat.dis-nn cond-mat.soft physics.bio-ph 版本更新

Metastable phase separation and information retrieval in multicomponent mixtures

多组分混合物中的亚稳态相分离与信息检索

Rodrigo Braz Teixeira, Davide Marcato, Izaak Neri, Pablo Sartori

AI总结 本文发展了亚稳态相分离的热力学形式,应用于高阶相互作用二元混合物,并重点研究霍普菲尔德液体中的亚稳态相分离及其信息检索能力。

Comments 26 pages, 8 figures, 16 pages of supplement

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AI中文摘要

液体混合物可以分离成具有不同组成的相。由于其在复杂生物液体(如细胞质)中的作用,这一现象最近重新引起关注,这些液体包含数千种组分。对于简单的双组分混合物,相分离状态是全局自由能最小值。然而,局部自由能最小值,即亚稳态,已知在具有许多组分的复杂系统中起主导作用。例如,霍普菲尔德神经网络可以通过松弛到亚稳态从部分线索中检索信息。在什么条件下相分离状态可以是亚稳态的,这对多组分液体中的信息处理有何影响?在这项工作中,我们发展了亚稳态相分离的一般热力学形式。然后,我们将这种形式应用于一个受近期实验启发的说明性玩具示例,即具有高阶相互作用的二元混合物。最后,作为该形式的核心应用,我们研究了霍普菲尔德液体中的亚稳态,这是一类能够存储关于相组成信息的多组分混合物。我们表明,这些相可以通过亚稳态相分离从部分线索中检索出来。具有大量组分的液体的空间模拟与我们的解析解相匹配。我们的工作表明,复杂的生物混合物可以通过亚稳态相分离执行信息检索。

英文摘要

Liquid mixtures can separate into phases with distinct composition. This phenomenon has recently come back to prominence due to its role in complex biological liquids, such as the cytoplasm, which contain thousands of components. For simple two-component mixtures phase-separated states are global free energy minima. However, local free energy minima, i.e. metastable states, are known to play a dominant role in complex systems with many components. For example, Hopfield neural networks can retrieve information from partial cues via relaxation to metastable states. Under what conditions can phase separated states be metastable, and what are the implications for information processing in multicomponent liquids? In this work we develop the general thermodynamic formalism of metastable phase separation. We then apply this formalism to an illustrative toy example inspired by recent experiments, binary mixtures with high-order interactions. Finally, as core application of the formalism, we study metastability in Hopfield liquids, a class of multicomponent mixtures capable of storing information on the composition of phases. We show that these phases can be retrieved from partial cues via metastable phase separation. Spatial simulations of liquids with a large number of components match our analytical solution. Our work suggests that complex biological mixtures can perform information retrieval through metastable phase separation.