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When is there a representer theorem? Nondifferentiable regularises and Banach spaces

机译:什么时候有代表定理?干燥的常规和Banach空间

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We consider a general regularised interpolation problem for learning a parameter vector from data. The well known representer theorem says that under certain conditions on the regulariser there exists a solution in the linear span of the data points. This is at the core of kernel methods in machine learning as it makes the problem computationally tractable. Necessary and sufficient conditions for differentiable regularisers on Hilbert spaces to admit a representer theorem have been proved. We extend those results to nondifferentiable regularisers on uniformly convex and uniformly smooth Banach spaces. This gives a (more) complete answer to the question when there is a representer theorem. We then note that for regularised interpolation in fact the solution is determined by the function space alone and independent of the regulariser, making the extension to Banach spaces even more valuable.
机译:我们考虑一般的正则算用于从数据学习参数向量的一般正则分析问题。众所周知的代表性定理表明,在符究程序的某些条件下,存在数据点的线性跨度中的解决方案。这是在机器学习中的内核方法的核心,因为它使得在计算上进行了易行的问题。据证明,为希尔伯特空间上提供了可怜的符究人员的必要和充分条件,已被证明是已经证明了代表定理。我们将那些结果扩展到非凡的符合统一的正规主义者,均匀凸起和均匀的平滑Banach空间。当有代表定理时,这给出了(更多)完全答案。然后,我们注意到,对于正规化的插值实际上,解决方案由函数空间独立并独立符号机构,使得Banach空间的延伸更有价值。

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