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  • title: Charting and Navigating the Space of Solutions for Recurrent Neural Networks
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            Charting and Navigating the Space of Solutions for Recurrent Neural Networks
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            Charting and Navigating the Space of Solutions for Recurrent Neural Networks

            Dec 6, 2021

            Speakers

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            Elia Turner

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            Kabir Dabholkar

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            Omri Barak

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            About

            In recent years Recurrent Neural Networks (RNNs) were successfully used to model the way neural activity drives task-related behavior in animals, operating under the implicit assumption that the obtained solutions are universal. Observations in both neuroscience and in machine learning challenge this assumption. Animals can approach a given task with a variety of strategies, and training machine learning algorithms introduces the phenomenon of underspecification. These observations imply that ev…

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            NeurIPS 2021

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