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A Credit Assignment Compiler for Joint Prediction

机译:用于联合预测的学分分配编译器

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Many machine learning applications involve jointly predicting multiple mutually dependent output variables. Learning to search is a family of methods where the complex decision problem is cast into a sequence of decisions via a search space. Although these methods have shown promise both in theory and in practice, implementing them has been burdensomely awkward. In this paper, we show the search space can be defined by an arbitrary imperative program, turning learning to search into a credit assignment compiler. Altogether with the algorithmic improvements for the compiler, we radically reduce the complexity of programming and the running time. We demonstrate the feasibility of our approach on multiple joint prediction tasks. In all cases, we obtain accuracies as high as alternative approaches, at drastically reduced execution and programming time.
机译:许多机器学习应用程序涉及共同预测多个相互依赖的输出变量。学习搜索是一系列方法,其中复杂的决策问题通过搜索空间转化为一系列决策。尽管这些方法在理论上和实践上都显示出了希望,但实施它们却有些笨拙。在本文中,我们展示了可以通过任意命令式程序定义搜索空间,从而将学习搜索转换为学分分配编译器。连同对编译器的算法改进,我们从根本上减少了编程的复杂性和运行时间。我们证明了我们的方法在多个联合预测任务上的可行性。在所有情况下,我们都获得了与替代方法一样高的精度,从而大大减少了执行和编程时间。

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