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arxiv: 1701.06778 · v3 · pith:L2J3WWA3new · submitted 2017-01-24 · 🧮 math.NA

Truncation Dimension for Linear Problems on Multivariate Function Spaces

classification 🧮 math.NA
keywords errorfunctionvarepsilonvariablescorrespondingdimensionlinearmany
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The paper considers linear problems on weighted spaces of multivariate functions of many variables. The main questions addressed are: When is it possible to approximate the solution for the original function of very many variables by the solution for the same function; however with all but the first $k$ variables set to zero, so that the corresponding error is small? What is the truncation dimension, i.e., the smallest number $k=k(\varepsilon)$ such that the corresponding error is bounded by a given error demand $\varepsilon$? Surprisingly, $k(\varepsilon)$ could be very small even for weights with a modest speed of convergence to zero.

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