Sleeve functions are generalizations of the well-established ridge functions that play a major role in the theory of partial differential equation, medical imaging, statistics, and neural networks. Where ridge functions are non-linear, univariate functions of the distance to hyperplanes, sleeve functions are based on the squared distance to lower-dimensional manifolds. The present work is a first step to study general sleeve functions by starting with sleeve functions based on finite-length curves. To capture these curve-based sleeve functions, we propose and study a two-step method, where first the outer univariate function - the profile - is recovered, and second the underlying curve is represented by a polygonal chain. Introducing a concept of well-separation, we ensure that the proposed method always terminates and approximate the true sleeve function with a certain quality. Investigating the local geometry, we study an inexact version of our method and show its success under certain conditions.
翻译:袖子功能是成熟的脊脊功能的概括化,这些功能在部分差异方程式、医学成像、统计和神经网络理论中起着主要作用。在脊脊功能是高空距离的非线性、单独功能的地方,袖子功能以平方距离至低维方形的距离为基础。目前的工作是第一步,通过使用基于长曲线的袖子功能来研究普通袖子功能。为了捕捉这些基于曲线的袖子功能,我们建议并研究一种两步方法,首先恢复外单向函数(剖面),其次以多边形链代表底曲线。引入一个井分化概念,我们确保拟议方法总是终止,并以一定的质量接近真正的袖子功能。调查本地的几何方法,我们研究我们方法的不精确版本,并在某些条件下展示其成功之处。