• GATED GRAPH SEQUENCE NEURAL NETWORKS

    Graph-structured data appears frequently in domains including chemistry, natural language semantics, social networks, and knowledge bases. In this work, we study feature learning techniques for graph-structured inputs. Our starting point is previous work on Graph Neural Networks (Scarselli et al., 2009), which we modify to use gated recurrent units and modern optimization techniques and then extend to output sequences. The result is a flexible and broadly useful class of neural network models that has favorable inductive biases relative to purely sequence-based models (e.g., LSTMs) when the problem is graph-structured. We demonstrate the capabilities on some simple AI (bAbI) and graph algorithm learning tasks. We then show it achieves state-of-the-art performance on a problem from program verification, in which subgraphs need to be described as abstract data structures.

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    2020-03-03
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  • Head First Python

    Head First Python

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    2016-05-24
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  • Extreme Programming

    Extreme Programming Explained Embrace Chang

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    2015-08-06
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  • Business.Adventures

    From Wall Street to Main Street, John Brooks, longtime contributor to the New Yorker, brings to life in vivid fashion twelve classic and timeless tales of corporate and financial …

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    2015-08-06
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  • redis book

    redis book for beginner

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    2015-03-04
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