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首页> 外文期刊>Journal of statistical mechanics: Theory and Experiment >Machine learning algorithms based on generalized Gibbs ensembles
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Machine learning algorithms based on generalized Gibbs ensembles

机译:基于广义GIBBS合奏的机器学习算法

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摘要

Machine learning algorithms often take inspiration from the established results and knowledge from statistical physics. A prototypical example is the Boltzmann machine algorithm for supervised learning, which utilizes knowledge of classical thermal partition functions and the Boltzmann distribution. Recently, a quantum version of the Boltzmann machine was introduced by Amin et al, however, non-commutativity of quantum operators renders the training process by minimizing a cost function inefficient. Recent advances in the study of non-equilibrium quantum integrable systems, which never thermalize, have lead to the exploration of a wider class of statistical ensembles. These systems may be described by the so-called generalized Gibbs ensemble (GGE), which incorporates a number of 'effective temperatures'. We propose that these GGEs can be successfully applied as the basis of a Boltzmannmachine– like learning algorithm, which operates by learning the optimal values of effective temperatures. We show that the GGE algorithm is an optimal quantum Boltzmann machine: it is the only quantum machine that circumvents the quantum training-process problem. We apply a simplified version of the GGE algorithm, where quantum effects are suppressed, to the classification of handwritten digits in the MNIST database. While lower error rates can be found with other state-of-the-art algorithms, we find that our algorithm reaches relatively low error rates while learning a much smaller number of parameters than would be needed in a traditional Boltzmann machine, thereby reducing computational cost.
机译:机器学习算法通常从统计物理学中的成熟结果和知识中获取灵感。原型示例是用于监督学习的Boltzmann机器算法,其利用经典热分区功能和Boltzmann分布的知识。最近,通过Amin等人引入了Qualtum版本的Boltzmann机器,然而,量子运算符的非换向性通过最小化成本效率效率降低,使得培训过程呈现训练过程。最近在永恒均衡的研究中的研究进展,这导致了更广泛的统计集合的探索。这些系统可以由所谓的广义gibbs集合(GGE)描述,其包括许多“有效温度”。我们建议这些刺可以作为BoltzmannMachine的基础成功应用,它通过学习有效温度的最佳值来运营。我们表明GGE算法是最佳的Quantum Boltzmann机器:它是唯一避免量子训练过程问题的量子机器。我们应用了GGE算法的简化版本,其中抑制了量子效果,以便在Mnist数据库中的手写数字的分类。虽然可以使用其他最先进的算法找到较低的错误率,但我们发现我们的算法达到相对较低的错误率,同时学习比传统的Boltzmann机器中所需的比较少量的参数,从而降低计算成本。

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