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Melding the Data-Decisions Pipeline: Decision-Focused Learning for Combinatorial Optimization

机译:融合数据决策管道:组合优化的决策学习

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Creating impact in real-world settings requires artificial intelligence techniques to span the full pipeline from data, to predictive models, to decisions. These components are typically approached separately: a machine learning model is first trained via a measure of predictive accuracy, and then its predictions are used as input into an optimization algorithm which produces a decision. However, the loss function used to train the model may easily be misaligned with the end goal, which is to make the best decisions possible. Hand-tuning the loss function to align with optimization is a difficult and error-prone process (which is often skipped entirely). We focus on combinatorial optimization problems and introduce a general framework for decision-focused learning, where the machine learning model is directly trained in conjunction with the optimization algorithm to produce high-quality decisions. Technically, our contribution is a means of integrating common classes of discrete optimization problems into deep learning or other predictive models, which are typically trained via gradient descent. The main idea is to use a continuous relaxation of the discrete problem to propagate gradients through the optimization procedure. We instantiate this framework for two broad classes of combinatorial problems: linear programs and submodular maximization. Experimental results across a variety of domains show that decision-focused learning often leads to improved optimization performance compared to traditional methods. We find that standard measures of accuracy are not a reliable proxy for a predictive model's utility in optimization, and our method's ability to specify the true goal as the model's training objective yields substantial dividends across a range of decision problems.
机译:在现实世界的环境中创造影响需要人工智能技术来跨越数据的完整管道,以预测模型,决定。这些组件通常是分开接近的:通过预测精度的度量首先培训机器学习模型,然后其预测用作产生决定的优化算法的输入。然而,用于训练模型的损失函数可能很容易与最终目标不对准,这是为了使最佳决策成为可能。手工调整与优化对齐的损失函数是一个困难且易于出错的过程(通常完全跳过)。我们专注于组合优化问题,并为决策学习引入一般框架,其中机器学习模型与优化算法一起直接培训以产生高质量的决策。从技术上讲,我们的贡献是将常见的离散优化问题集成到深度学习或其他预测模型中的一种方法,这些模型通常通过梯度下降训练。主要思想是使用离散问题的连续放松来传播梯度通过优化过程。我们实例化了这一框架,有两种广泛的组合问题:线性程序和子模块最大化。各种域的实验结果表明,与传统方法相比,焦点学习常常导致改善的优化性能。我们发现,准确性的标准测量不是在优化方面的预测模型效用的可靠代理,以及我们指定真正目标的能力,因为模型的培训目标产生了一系列决策问题的大量股息。

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