The precise equivalence between discretized Euclidean field theories and a certain class of probabilistic graphical models, namely the mathematical framework of Markov random fields, opens up the opportunity to investigate machine learning from the perspective of quantum field theory. In this contribution we will demonstrate, through the Hammersley-Clifford theorem, that the $\phi^{4}$ scalar field theory on a square lattice satisfies the local Markov property and can therefore be recast as a Markov random field. We will then derive from the $\phi^{4}$ theory machine learning algorithms and neural networks which can be viewed as generalizations of conventional neural network architectures. Finally, we will conclude by presenting applications based on the minimization of an asymmetric distance between the probability distribution of the $\phi^{4}$ machine learning algorithms and target probability distributions.
翻译:离散的欧几里德场理论和某种概率图形模型(即Markov随机场的数学框架)之间的精确等值,为从量子场理论的角度调查机器学习提供了机会。在这个贡献中,我们将通过Hammersley-Clifford 理论来证明,一个平方格的$\\%4}美元斜体理论满足了本地的Markov属性,因此可以被重命名为Markov随机场。然后,我们将从$\\\ ⁇ 4}理论机器学习算法和神经网络中得出,这些算法和神经网络可以被视为常规神经网络结构的一般化。最后,我们将通过在最大程度减少$\ ⁇ 4}美元机器学习算法和目标概率分布之间的不对称距离来进行应用。