2022
DOI: 10.48550/arxiv.2203.16067
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Decision-Focused Learning without Differentiable Optimization: Learning Locally Optimized Decision Losses

Abstract: Decision-Focused Learning (DFL) is a paradigm for tailoring a predictive model to a downstream optimisation task that uses its predictions, so that it can perform better on that specific task. The main technical challenge associated with DFL is that it requires being able to differentiate through argmin operations to work. However, these arg min optimisations are often piecewise constant and, as a result, naively differentiating through them would provide uninformative gradients. Past work has largely focused … Show more

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