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000849253 1001_ $$0P:(DE-82)IDM00024$$aHerty, Michael$$b0$$urwth
000849253 245__ $$aMean-field and kinetic descriptions of neural differential equations$$honline
000849253 260__ $$aSpringfield, MO$$bAmerican Institute of Mathematical Sciences$$c2022
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000849253 653_7 $$acontinuous limit
000849253 653_7 $$akinetic equation
000849253 653_7 $$amachine learning
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000849253 7001_ $$aTrimborn, Torsten$$b1
000849253 7001_ $$aVisconti, Giuseppe$$b2$$eCorresponding author
000849253 773__ $$0PERI:(DE-600)3062707-2$$a10.3934/fods.2022007$$n2$$p271-298$$tFoundations of data science : FoDS$$v4$$x2639-8001$$y2022
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000849253 9201_ $$0I:(DE-82)114620_20140620$$k114620$$lLehr- und Forschungsgebiet Mathematik$$x1
000849253 9201_ $$0I:(DE-82)110000_20140620$$k110000$$lFachgruppe Mathematik$$x2
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