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Minimizing Expected Losses in Perturbation Models with Multidimensional Parametric Min-cuts

机译:使用多维参数最小割最小化摄动模型中的预期损失

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We consider the problem of learning perturbation-based probabilistic models by computing and differentiating expected losses. This is a challenging computational problem that has traditionally been tackled using Monte Carlo-based methods. In this work, we show how a generalization of parametric min-cuts can be used to address the same problem, achieving higher accuracy and faster performance than a sampling-based baseline. Utilizing our proposed Skeleton Method, we show that we can learn the perturbation model so as to directly minimize expected losses. Experimental results show that this approach offers promise as a new way of training structured prediction models under complex loss functions.
机译:我们考虑通过计算和区分预期损失来学习基于摄动的概率模型的问题。这是一个具有挑战性的计算问题,传统上已使用基于蒙特卡洛的方法来解决。在这项工作中,我们展示了如何使用参数化最小割的推广来解决相同的问题,从而实现比基于采样的基线更高的准确性和更快的性能。利用我们提出的骨架方法,我们表明我们可以学习扰动模型,从而直接最小化预期损失。实验结果表明,该方法有望成为一种在复杂损失函数下训练结构化预测模型的新方法。

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