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  • title: Tailoring: encoding inductive biases by optimizing unsupervised objectives at prediction time
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            Tailoring: encoding inductive biases by optimizing unsupervised objectives at prediction time
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            Tailoring: encoding inductive biases by optimizing unsupervised objectives at prediction time

            Dec 6, 2021

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            Ferran Alet

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            Maria Bauza

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            Kenji Kawaguchi

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            About

            From CNNs to attention mechanisms, encoding inductive biases into neural networks has been a fruitful source of improvement in machine learning. Adding auxiliary losses to the main objective function is a general way of encoding biases that can help networks learn better representations. However, since auxiliary losses are minimized only on training data, they suffer from the same generalization gap as regular task losses. Moreover, by adding a term to the loss function, the model optimizes a di…

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