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Most Influential AISTATS 2011 Paper · 2026-03 edition

Deep Learners Benefit More From Out-of-Distribution Examples

Yoshua Bengio, Fr�d�ric Bastien, Arnaud Bergeron, Nicolas Boulanger�Lewandowski, Thomas Breuel, Youssouf Chherawala, Moustapha Cisse, Myriam C�t�, Dumitru Erhan, Jeremy Eustache, Xavier Glorot, Xavier Muller, Sylvain Pannetier Lebeuf, Razvan Pascanu, Salah Rifai, Fran�ois Savard, Guillaume Sicard

Venue
Conference on Artificial Intelligence and Statistics (AISTATS) 2011
Recognition
Most Influential AISTATS 2011 Paper (Rank No. 13)
Edition
2026-03
Impact factor
4
Certificate ID
729d5ea4d65e9200

Abstract

Recent theoretical and empirical work in statistical machine learning has demonstrated the potential of learning algorithms for deep architectures, i.e., function classes obtained by composing multiple levels of representation. The hypothesis evaluated here is that intermediate levels of representation, because they can be shared across tasks and examples from different but related distributions, can yield even more benefits. Comparative experiments were performed on a large-scale handwritten character recognition setting with 62 classes (upper case, lower case, digits), using both a multi-task setting and perturbed examples in order to obtain out-of-distribution examples. The results agree with the hypothesis, and show that a deep learner did beat previously published results and reached human-level performance.

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