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Introducing Graph Smoothness Loss for Training Deep Learning Architectures

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arxiv 1905.00301 v1 pith:LJR54YAY submitted 2019-05-01 cs.LG stat.ML

Introducing Graph Smoothness Loss for Training Deep Learning Architectures

classification cs.LG stat.ML
keywords architectureslosstraininginputsclassesclassificationdeepdistances
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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We introduce a novel loss function for training deep learning architectures to perform classification. It consists in minimizing the smoothness of label signals on similarity graphs built at the output of the architecture. Equivalently, it can be seen as maximizing the distances between the network function images of training inputs from distinct classes. As such, only distances between pairs of examples in distinct classes are taken into account in the process, and the training does not prevent inputs from the same class to be mapped to distant locations in the output domain. We show that this loss leads to similar performance in classification as architectures trained using the classical cross-entropy, while offering interesting degrees of freedom and properties. We also demonstrate the interest of the proposed loss to increase robustness of trained architectures to deviations of the inputs.

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