Yang_unc_0153D_15850.pdf Public

File Details

Depositor
rkati
Date Uploaded
Date Modified
2019-04-11
Fixity Check
Fixity checks have not yet been run on this object
Characterization
File Format: pdf (Portable Document Format)
Page Count: 156
72
Original Checksum: e99cc960fb2b914de64ced17643eba72
Mime Type: application/pdf
User Activity Date
User rkati@ad.unc.edu has attached Yang_unc_0153D_15850.pdf to Learning Methods in Reproducing Kernel Hilbert Space Based on High-dimensional Features April 11th, 2019 20:19