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University of Cambridge > Talks.cam > Isaac Newton Institute Seminar Series > Principal component analysis for learning tree tensor networks
Principal component analysis for learning tree tensor networksAdd to your list(s) Download to your calendar using vCal
If you have a question about this talk, please contact INI IT. UNQW03 - Reducing dimensions and cost for UQ in complex systems We present an extension of principal component analysis for functions of multiple random variables and an associated algorithm for the approximation of such functions using tree-based low-rank formats (tree tensor networks). A multivariate function is here considered as an element of a Hilbert tensor space of functions defined on a product set equipped with a probability measure. The algorithm only requires evaluations of functions on a structured set of points which is constructed adaptively. The algorithm constructs a hierarchy of subspaces associated with the different nodes of a dimension partition tree and a corresponding hierarchy of projection operators, based on interpolation or least-squares projection. Optimal subspaces are estimated using empirical principal component analysis of interpolations of partial random evaluations of the function. The algorithm is able to provide an approximation in any tree-based format with either a prescribed rank or a prescribed relative error, with a number of evaluations of the order of the storage complexity of the approximation format. This talk is part of the Isaac Newton Institute Seminar Series series. This talk is included in these lists:
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