Geometry-Based Deep Learning in the Natural Sciences

Robert Friedman
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Abstract

Nature is composed of elements at various spatial scales, ranging from the atomic to the astronomical level. In general, human sensory experience is limited to the mid-range of these spatial scales, in that the scales which represent the world of the very small or very large are generally apart from our sensory experiences. Furthermore, the complexities of Nature and its underlying elements are not tractable nor easily recognized by the traditional forms of human reasoning. Instead, the natural and mathematical sciences have emerged to model the complexities of Nature, leading to knowledge of the physical world. This level of predictiveness far exceeds any mere visual representations as naively formed in the Mind. In particular, geometry has served an outsized role in the mathematical representations of Nature, such as in the explanation of the movement of planets across the night sky. Geometry not only provides a framework for knowledge of the myriad of natural processes, but also as a mechanism for the theoretical understanding of those natural processes not yet observed, leading to visualization, abstraction, and models with insight and explanatory power. Without these tools, human experience would be limited to sensory feedback, which reflects a very small fraction of the properties of objects that exist in the natural world. As a consequence, as taught during the times of antiquity, geometry is essential for forming knowledge and differentiating opinion from true belief. It not only provides a framework for understanding astronomy, classical mechanics, and relativistic physics, but also the morphological evolution of living organisms, along with the complexities of the cognitive systems. Geometry also has a role in the information sciences, where it has explanatory power in visualizing the flow, structure, and organization of information in a system. This role further impacts the explanations of the internals of deep learning systems as developed in the fields of computer science and engineering.
自然科学中基于几何的深度学习
自然界是由不同空间尺度的元素组成的,从原子尺度到天文尺度。一般来说,人类的感官体验仅限于这些空间尺度的中间范围,因为代表非常小或非常大的世界的尺度通常与我们的感官体验分开。此外,自然及其基本要素的复杂性是难以驾驭的,也不容易被传统的人类推理形式所识别。相反,自然科学和数学科学的出现是为了模拟自然界的复杂性,从而导致对物理世界的认识。这种程度的预见性远远超过单纯在头脑中形成的视觉表象。特别是,几何学在自然的数学表现中发挥了巨大的作用,例如在解释行星在夜空中的运动时。几何不仅为无数自然过程的知识提供了一个框架,而且作为对那些尚未观察到的自然过程的理论理解的机制,导致具有洞察力和解释力的可视化,抽象和模型。如果没有这些工具,人类的经验将局限于感官反馈,这反映了自然界中存在的物体属性的很小一部分。因此,正如古代所教导的那样,几何对于形成知识和区分观点与真正的信仰是必不可少的。它不仅为理解天文学、经典力学和相对论物理学提供了一个框架,而且还为生物体的形态进化以及认知系统的复杂性提供了一个框架。几何在信息科学中也扮演着重要的角色,它在可视化系统中的信息流、结构和组织方面具有解释力。这一角色进一步影响了在计算机科学和工程领域开发的深度学习系统内部的解释。
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