Statistical inference is the science of drawing conclusions about some system from data. In modern signal processing and machine learning, inference is done in very high dimension: very many unknown characteristics about the system have to be deduced from a lot of high-dimensional noisy data. This "high-dimensional regime" is reminiscent of statistical mechanics, which aims at describing the macroscopic behavior of a complex system based on the knowledge of its microscopic interactions. It is by now clear that there are many connections between inference and statistical physics. This article aims at emphasizing some of the deep links connecting these apparently separated disciplines through the description of paradigmatic models of high-dimensional inference in the language of statistical mechanics. This article has been published in the issue on artificial intelligence of Ithaca, an Italian popularization-of-science journal. The selected topics and references are highly biased and not intended to be exhaustive in any ways. Its purpose is to serve as introduction to statistical mechanics of inference through a very specific angle that corresponds to my own tastes and limited knowledge.
翻译:在现代信号处理和机器学习中,从非常高的维度上推断出系统的许多未知特征必须从许多高维的噪音数据中推导出来。这个“高维系统”是统计力学的象征,它旨在根据对一个复杂系统的微观相互作用的了解来描述该系统的宏观行为。现在可以清楚地看到,推理和统计物理学之间有许多联系。这篇文章的目的是通过描述统计力语言的高维推理的范式模型来强调这些明显分离的学科之间的一些深层次联系。这篇文章刊登在意大利普及科学杂志《伊萨卡》的人工智能杂志上。所选的题目和参考资料具有高度偏向性,并不打算以任何方式详尽无遗。它的目的是通过一种与我自己的口味和有限的知识相对应的非常具体的角度来介绍统计推理学。