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Publications
  • 2024
  • Working Paper

The Cram Method for Efficient Simultaneous Learning and Evaluation

By: Zeyang Jia, Kosuke Imai and Michael Lingzhi Li
  • Format:Print
  • | Language:English
  • | Pages:60
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Abstract

We introduce the "cram" method, a general and efficient approach to simultaneous learning and evaluation using a generic machine learning (ML) algorithm. In a single pass of batched data, the proposed method repeatedly trains an ML algorithm and tests its empirical performance. Because it utilizes the entire sample for both learning and evaluation, cramming is significantly more data-efficient than sample-splitting. The cram method also naturally accommodates online learning algorithms, making its implementation computationally efficient. To demonstrate the power of the cram method, we consider the standard policy learning setting where cramming is applied to the same data to both develop an individualized treatment rule (ITR) and estimate the average outcome that would result if the learned ITR were to be deployed. We show that under a minimal set of assumptions, the resulting crammed evaluation estimator is consistent and asymptotically normal. While our asymptotic results require a relatively weak stabilization condition of ML algorithm, we develop a simple, generic method that can be used with any policy learning algorithm to satisfy this condition. Our extensive simulation studies show that, when compared to sample-splitting, cramming reduces the evaluation standard error by more than 40% while improving the performance of learned policy. We also apply the cram method to a randomized clinical trial to demonstrate its applicability to real-world problems. Finally, we briefly discuss future extensions of the cram method to other learning and evaluation settings.

Keywords

AI and Machine Learning

Citation

Jia, Zeyang, Kosuke Imai, and Michael Lingzhi Li. "The Cram Method for Efficient Simultaneous Learning and Evaluation." Working Paper, March 2024.
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About The Author

Michael Lingzhi Li

Technology and Operations Management
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More from the Authors

    • 2025
    • Journal of Business & Economic Statistics

    Statistical Inference for Heterogeneous Treatment Effects Discovered by Generic Machine Learning in Randomized Experiments

    By: Kosuke Imai and Michael Lingzhi Li
    • 2024
    • Journal of Causal Inference

    Neyman Meets Causal Machine Learning: Experimental Evaluation of Individualized Treatment Rules

    By: Michael Lingzhi Li and Kosuke Imai
    • 2024
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    Learning to Cover: Online Learning and Optimization with Irreversible Decisions

    By: Alexander Jacquillat and Michael Lingzhi Li
More from the Authors
  • Statistical Inference for Heterogeneous Treatment Effects Discovered by Generic Machine Learning in Randomized Experiments By: Kosuke Imai and Michael Lingzhi Li
  • Neyman Meets Causal Machine Learning: Experimental Evaluation of Individualized Treatment Rules By: Michael Lingzhi Li and Kosuke Imai
  • Learning to Cover: Online Learning and Optimization with Irreversible Decisions By: Alexander Jacquillat and Michael Lingzhi Li
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