Markov chains are a class of probabilistic models that have achieved widespread application in the quantitative sciences. This is in part due to their versatility, but is compounded by the ease with which they can be probed analytically. This tutorial provides an in-depth introduction to Markov chains, and explores their connection to graphs and random walks. We utilize tools from linear algebra and graph theory to describe the transition matrices of different types of Markov chains, with a particular focus on exploring properties of the eigenvalues and eigenvectors corresponding to these matrices. The results presented are relevant to a number of methods in machine learning and data mining, which we describe at various stages. Rather than being a novel academic study in its own right, this text presents a collection of known results, together with some new concepts. Moreover, the tutorial focuses on offering intuition to readers rather than formal understanding, and only assumes basic exposure to concepts from linear algebra and probability theory. It is therefore accessible to students and researchers from a wide variety of disciplines.
翻译:Markov 链条是一种在定量科学中广泛应用的概率模型,部分是由于它们的多功能性,但由于它们容易被分析研究而变得更为复杂。这个导师为Markov 链条提供了深入的介绍,并探索了它们与图表和随机行走的联系。我们利用线性代数和图形理论的工具来描述不同种类的Markov 链条的过渡矩阵,特别侧重于探索与这些矩阵相对应的电子元值和精子的特性。所介绍的结果与机器学习和数据挖掘的一些方法有关,我们在各个阶段都描述这些方法。这个文本不仅不是新颖的学术研究,而是收集已知的结果以及一些新概念。此外,我们利用线性代数和图形理论来重点向读者提供直觉,而不是正式理解,并且只假设线性代数和概率理论的基本暴露。因此,来自广泛学科的学生和研究人员可以使用它。