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Learning Theory and Approximation

dc.date.accessioned2019-10-24T15:19:55Z
dc.date.available2019-10-24T15:19:55Z
dc.date.issued2016
dc.identifier.urihttp://publications.mfo.de/handle/mfo/3537
dc.description.abstractThe main goal of this workshop – the third one of this type at the MFO – has been to blend mathematical results from statistical learning theory and approximation theory to strengthen both disciplines and use synergistic effects to work on current research questions. Learning theory aims at modeling unknown function relations and data structures from samples in an automatic manner. Approximation theory is naturally used for the advancement and closely connected to the further development of learning theory, in particular for the exploration of new useful algorithms, and for the theoretical understanding of existing methods. Conversely, the study of learning theory also gives rise to interesting theoretical problems for approximation theory such as the approximation and sparse representation of functions or the construction of rich kernel reproducing Hilbert spaces on general metric spaces. This workshop has concentrated on the following recent topics: Pitchfork bifurcation of dynamical systems arising from mathematical foundations of cell development; regularized kernel based learning in the Big Data situation; deep learning; convergence rates of learning and online learning algorithms; numerical refinement algorithms to learning; statistical robustness of regularized kernel based learning.
dc.titleLearning Theory and Approximation
dc.rights.licenseDieses Dokument darf im Rahmen von § 53 UrhG zum eigenen Gebrauch kostenfrei heruntergeladen, gelesen, gespeichert und ausgedruckt, aber nicht im Internet bereitgestellt oder an Außenstehende weitergegeben werden.de
dc.rights.licenseThis document may be downloaded, read, stored and printed for your own use within the limits of § 53 UrhG but it may not be distributed via the internet or passed on to external parties.en
dc.identifier.doi10.14760/OWR-2016-33
local.series.idOWR-2016-33
local.subject.msc68
local.subject.msc41
local.subject.msc62
local.sortindex977
local.date-range03 Jul - 09 Jul 2016
local.workshopcode1627b
local.workshoptitleLearning Theory and Approximation
local.organizersAndreas Christmann, Bayreuth; Kurt Jetter, Stuttgart; Steve Smale, Hong Kong; Ding-Xuan Zhou, Hong Kong
local.report-nameWorkshop Report 2016,33
local.opc-photo-id1627b
local.publishers-doi10.4171/OWR/2016/33
local.ems-referenceChristmann Andreas, Jetter Kurt, Smale Steve, Zhou Ding-Xuan: Learning Theory and Approximation. Oberwolfach Rep. 13 (2016), 1875-1941. doi: 10.4171/OWR/2016/33


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