Task-Agnostic Machine-Learning-Assisted Inference
Jiacheng Miao, Qiongshi Lu

TL;DR
This paper introduces PSPS, a versatile statistical framework that enables valid, efficient, and task-agnostic inference after machine learning predictions, integrating seamlessly with existing data analysis tools.
Contribution
The paper presents a novel, task-agnostic framework called PSPS that allows for post-prediction inference compatible with any statistical analysis routine, overcoming previous limitations.
Findings
PSPS provides valid inference across various tasks and models.
The method demonstrates superior performance in experiments.
Software implementation is publicly available.
Abstract
Machine learning (ML) is playing an increasingly important role in scientific research. In conjunction with classical statistical approaches, ML-assisted analytical strategies have shown great promise in accelerating research findings. This has also opened a whole field of methodological research focusing on integrative approaches that leverage both ML and statistics to tackle data science challenges. One type of study that has quickly gained popularity employs ML to predict unobserved outcomes in massive samples, and then uses predicted outcomes in downstream statistical inference. However, existing methods designed to ensure the validity of this type of post-prediction inference are limited to very basic tasks such as linear regression analysis. This is because any extension of these approaches to new, more sophisticated statistical tasks requires task-specific algebraic derivations…
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Taxonomy
TopicsAnomaly Detection Techniques and Applications
MethodsLib · Linear Regression
