2021
DOI: 10.48550/arxiv.2105.14153
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Minimizing Oracle-Structured Composite Functions

Abstract: We consider the problem of minimizing a composite convex function with two different access methods: an oracle, for which we can evaluate the value and gradient, and a structured function, which we access only by solving a convex optimization problem. We are motivated by two associated technological developments. For the oracle, systems like PyTorch or TensorFlow can automatically and efficiently compute gradients, given a computation graph description. For the structured function, systems like CVXPY accept a … Show more

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References 66 publications
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