The expressive power of Bayesian kernel-based methods has led them to become an important tool across many different facets of artificial intelligence, and useful to a plethora of modern application domains, providing both power and interpretability via uncertainty analysis. This article introduces and discusses two methods which straddle the areas of probabilistic Bayesian schemes and kernel methods for regression: Gaussian Processes and Relevance Vector Machines. Our focus is on developing a common framework with which to view these methods, via intermediate methods a probabilistic version of the well-known kernel ridge regression, and drawing connections among them, via dual formulations, and discussion of their application in the context of major tasks: regression, smoothing, interpolation, and filtering. Overall, we provide understanding of the mathematical concepts behind these models, and we summarize and discuss in depth different interpretations and highlight the relationship to other methods, such as linear kernel smoothers, Kalman filtering and Fourier approximations. Throughout, we provide numerous figures to promote understanding, and we make numerous recommendations to practitioners. Benefits and drawbacks of the different techniques are highlighted. To our knowledge, this is the most in-depth study of its kind to date focused on these two methods, and will be relevant to theoretical understanding and practitioners throughout the domains of data-science, signal processing, machine learning, and artificial intelligence in general.
翻译:Bayesian内核法的显性力量使Bayesian内核法成为人造情报许多不同方面的一个重要工具,对大量现代应用领域有用,通过不确定性分析提供权力和可解释性。本文章介绍和讨论了两种方法,这些方法跨越了Bayesian概率性计划和内核回归方法的领域:高山进程和相关性矢量机。我们的重点是制定一个共同框架,通过中间方法来观察这些方法,这是众所周知的内核脊回归的概率版本,并通过双重表述和讨论在主要任务背景下应用这些方法:倒退、平滑、内推和过滤。总的来说,我们对这些模型背后的数学概念和内核回归法进行理解,我们深入地总结和讨论不同的解释,强调与其他方法的关系,例如线性内核滑、卡尔曼一般过滤和四级近似。我们提供了许多数字,以促进理解,我们向从业者提出了许多建议。从业者的利益和推导出这些技术应用在重大任务中的应用:回归、平滑、相互推导和过滤和过滤。总体而言,我们掌握了两个深度数据的理论学系和理论学系的理论学系,我们了解了这些学系的理论系和理论系的理论系和理论系的理论系的理论系的理论系。