The Functions of a Reproducing Kernel Hilbert Space
Chapter
Abstract
The functions of an RKHS, that is, the signals one works with, may not be easy to handle per se. In those cases, it may sometimes be useful to know that they belong to spaces in which computation may be easier, such as L2 spaces. This chapter deals with such questions. The correspondence between RKHS’s and other spaces of functions follows naturally from the construction of (Proposition) 1.1.15.
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