Deep kernelized autoencoders
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https://hdl.handle.net/10037/13824Dato
2017-05-19Type
Peer reviewedBook
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Forfatter
Kampffmeyer, Michael C.; Løkse, Sigurd; Bianchi, Filippo Maria; Jenssen, Robert; Livi, LorenzoSammendrag
In this paper we introduce the deep kernelized autoencoder,
a neural network model that allows an explicit approximation of (i) the
mapping from an input space to an arbitrary, user-specified kernel space
and (ii) the back-projection from such a kernel space to input space. The
proposed  method  is  based  on  traditional  autoencoders  and  is  trained
through a new unsupervised loss function. During training, we optimize
both  the  reconstruction  accuracy  of  input  samples  and  the  alignment
between  a  kernel  matrix  given  as  prior  and  the  inner  products  of  the
hidden representations computed by the autoencoder. Kernel alignment
provides control over the hidden representation learned by the autoen-
coder. Experiments have been performed to evaluate both reconstruction
and kernel alignment performance. Additionally, we applied our method
to emulate kPCA on a denoising task obtaining promising results
Beskrivelse
Accepted manuscript version allowed (see policy). 
Published version available in:https://link.springer.com/chapter/10.1007/978-3-319-59126-1_35
Published version available in:https://link.springer.com/chapter/10.1007/978-3-319-59126-1_35


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