University of Cambridge > Talks.cam > CUED Control Group Seminars > Learning and retaining tasks in redundant brain circuits

Learning and retaining tasks in redundant brain circuits

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Neuronal networks have many tunable parameters such as synaptic strengths that are shaped during learning of a task. The number of degrees of freedom for representing a task can vastly exceed the minimum required for good performance. I will describe recent work that explores the consequences of such additional โ€˜redundantโ€™ degrees of freedom for learning and for task representation in animals. We find that additional redundancy in network parameters can make a fixed task easier to learn and compensate for deficiencies in learning rules. However, we also find that in a biologically relevant setting where synapses are subject to unavoidable noise there is an upper limit to the level of useful redundancy in a network, suggesting an optimal network size for a given task.

This talk is part of the CUED Control Group Seminars series.

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