Nandanwar et al., 2018 - Google Patents

Overlap-robust decision boundary learning for within-network classification

Nandanwar et al., 2018

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Document ID
15048546039609560325
Author
Nandanwar S
Murty M
Publication year
Publication venue
Proceedings of the AAAI Conference on Artificial Intelligence

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We study the problem of within network classification, where given a partially labeled network, we infer the labels of the remaining nodes based on the link structure. Conventional loss functions penalize a node based on a function of its predicted label and …
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