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Differentiable Programs with Neural Libraries

2016-11-07ICML 2017Unverified0· sign in to hype

Alexander L. Gaunt, Marc Brockschmidt, Nate Kushman, Daniel Tarlow

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Abstract

We develop a framework for combining differentiable programming languages with neural networks. Using this framework we create end-to-end trainable systems that learn to write interpretable algorithms with perceptual components. We explore the benefits of inductive biases for strong generalization and modularity that come from the program-like structure of our models. In particular, modularity allows us to learn a library of (neural) functions which grows and improves as more tasks are solved. Empirically, we show that this leads to lifelong learning systems that transfer knowledge to new tasks more effectively than baselines.

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