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Dive into the research topics where Giorgio Patrini is active.

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Featured researches published by Giorgio Patrini.


computer vision and pattern recognition | 2017

Making Deep Neural Networks Robust to Label Noise: A Loss Correction Approach

Giorgio Patrini; Alessandro Rozza; Aditya Krishna Menon; Richard Nock; Lizhen Qu

We present a theoretically grounded approach to train deep neural networks, including recurrent networks, subject to class-dependent label noise. We propose two procedures for loss correction that are agnostic to both application domain and network architecture. They simply amount to at most a matrix inversion and multiplication, provided that we know the probability of each class being corrupted into another. We further show how one can estimate these probabilities, adapting a recent technique for noise estimation to the multi-class setting, and thus providing an end-to-end framework. Extensive experiments on MNIST, IMDB, CIFAR-10, CIFAR-100 and a large scale dataset of clothing images employing a diversity of architectures — stacking dense, convolutional, pooling, dropout, batch normalization, word embedding, LSTM and residual layers — demonstrate the noise robustness of our proposals. Incidentally, we also prove that, when ReLU is the only non-linearity, the loss curvature is immune to class-dependent label noise.


neural information processing systems | 2014

Almost) No Label No Cry

Giorgio Patrini; Richard Nock; Tibério S. Caetano; Paul Rivera


international conference on machine learning | 2016

Loss factorization, weakly supervised learning and label noise robustness

Giorgio Patrini; Frank Nielsen; Richard Nock; Marcello Carioni


international conference on machine learning | 2015

Rademacher Observations, Private Data, and Boosting

Richard Nock; Giorgio Patrini; Arik Friedman


national conference on artificial intelligence | 2016

Tsallis Regularized Optimal Transport and Ecological Inference.

Boris Muzellec; Richard Nock; Giorgio Patrini; Frank Nielsen


international joint conference on artificial intelligence | 2016

Fast learning from distributed datasets without entity matching

Giorgio Patrini; Richard Nock; Stephen Hardy; Tibério S. Caetano


arXiv: Learning | 2017

Private federated learning on vertically partitioned data via entity resolution and additively homomorphic encryption.

Stephen Hardy; Wilko Henecka; Hamish Ivey-Law; Richard Nock; Giorgio Patrini; Guillaume Smith; Brian Thorne


arXiv: Learning | 2018

Sinkhorn AutoEncoders.

Giorgio Patrini; Marcello Carioni; Patrick Forré; Samarth Bhargav; Max Welling; Rianne van den Berg; Tim Genewein; Frank Nielsen


arXiv: Databases | 2018

Entity Resolution and Federated Learning get a Federated Resolution.

Richard Nock; Stephen Hardy; Wilko Henecka; Hamish Ivey-Law; Giorgio Patrini; Guillaume Smith; Brian Thorne


Archive | 2017

LEARNING FROM DISTRIBUTED DATA

Richard Nock; Giorgio Patrini

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Richard Nock

Australian National University

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Tibério S. Caetano

Australian National University

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Aditya Krishna Menon

Australian National University

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Paul Rivera

Australian National University

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