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Near-optimal Bayesian Active Learning with Correlated and Noisy Tests

机译:具有相关和噪声测试的近乎最佳的贝叶斯主动学习

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We consider the Bayesian active learning and experimental design problem, where the goal is to learn the value of some unknown target variable through a sequence of informative, noisy tests. In contrast to prior work, we focus on the challenging, yet practically relevant setting where test outcomes can be conditionally dependent given the hidden target variable. Under such assumptions, common heuristics, such as greedily performing tests that maximize the reduction in uncertainty of the target, often perform poorly. We propose ECED, a novel, efficient active learning algorithm, and prove strong theoretical guarantees that hold with correlated, noisy tests. Rather than directly optimizing the prediction error, at each step, ECED picks the test that maximizes the gain in a surrogate objective, which takes into account the dependencies between tests. Our analysis relies on an information-theoretic auxiliary function to track the progress of ECED, and utilizes adaptive submodularity to attain the approximation bound. We demonstrate strong empirical performance of ECED on two problem instances, including a Bayesian experimental design task intended to distinguish among economic theories of how people make risky decisions, and an active preference learning task via pairwise comparisons.
机译:我们考虑贝叶斯主动学习和实验设计问题,其目标是通过一系列有益的,有噪声的测试来学习一些未知目标变量的值。与先前的工作相比,我们将重点放在具有挑战性但又实用的设置上,在这种情况下,给定隐藏的目标变量,测试结果可能有条件地依赖。在这种假设下,常见的试探法(例如贪婪地执行测试以最大程度地降低目标的不确定性)通常表现不佳。我们提出了一种新颖,有效的主动学习算法ECED,并证明了在相关的嘈杂测试中具有强大的理论保证。 ECED并没有直接优化预测误差,而是在每个步骤中都选择了一个在替代目标中最大化增益的测试,该测试考虑了测试之间的依赖性。我们的分析依靠信息理论辅助函数来跟踪ECED的进度,并利用自适应子模量来达到近似边界。我们在两个问题实例上证明了ECED的强大经验性能,包括旨在区分人们如何做出风险决策的经济理论的贝叶斯实验设计任务,以及通过成对比较进行的主动偏好学习任务。

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