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Optimal structure and parameter learning of Ising models

机译:Ising模型的最佳结构和参数学习

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摘要

Reconstruction of the structure and parameters of an Ising model from binary samples is a problem of practical importance in a variety of disciplines, ranging from statistical physics and computational biology to image processing and machine learning. The focus of the research community shifted toward developing universal reconstruction algorithms that are both computationally efficient and require the minimal amount of expensive data. We introduce a new method, interaction screening, which accurately estimates model parameters using local optimization problems. The algorithm provably achieves perfect graph structure recovery with an information-theoretically optimal number of samples, notably in the low-temperature regime, which is known to be the hardest for learning. The efficacy of interaction screening is assessed through extensive numerical tests on synthetic Ising models of various topologies with different types of interactions, as well as on real data produced by a D-Wave quantum computer. This study shows that the interaction screening method is an exact, tractable, and optimal technique that universally solves the inverse Ising problem.
机译:从二值样本重构Ising模型的结构和参数在从统计物理学和计算生物学到图像处理和机器学习的许多学科中都是具有实际重要性的问题。研究社区的重点转向开发通用的重建算法,该算法既计算效率高,又需要少量的昂贵数据。我们引入了一种新的方法,即交互筛选,它可以使用局部优化问题来准确估算模型参数。该算法通过信息理论上最优的样本数量,特别是在低温条件下,证明是学习最困难的算法,可证明实现了完美的图形结构恢复。通过对具有不同类型相互作用的各种拓扑的合成Ising模型进行广泛的数值测试,以及通过D-Wave量子计算机生成的实际数据,可以通过大量的数值测试来评估相互作用筛选的效果。这项研究表明,相互作用筛选方法是一种精确,易处理且最佳的技术,可以普遍解决反伊辛问题。

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