Knight Parker, Duan Rui
Department of Biostatistics, Harvard University, Boston, MA.
Adv Neural Inf Process Syst. 2023;36:54020-54031. Epub 2024 May 30.
Multi-task learning has emerged as a powerful machine learning paradigm for integrating data from multiple sources, leveraging similarities between tasks to improve overall model performance. However, the application of multi-task learning to real-world settings is hindered by data-sharing constraints, especially in healthcare settings. To address this challenge, we propose a flexible multi-task learning framework utilizing summary statistics from various sources. Additionally, we present an adaptive parameter selection approach based on a variant of Lepski's method, allowing for data-driven tuning parameter selection when only summary statistics are available. Our systematic non-asymptotic analysis characterizes the performance of the proposed methods under various regimes of the sample complexity and overlap. We demonstrate our theoretical findings and the performance of the method through extensive simulations. This work offers a more flexible tool for training related models across various domains, with practical implications in genetic risk prediction and many other fields.
多任务学习已成为一种强大的机器学习范式,用于整合来自多个源的数据,利用任务之间的相似性来提高整体模型性能。然而,多任务学习在实际应用中的应用受到数据共享限制的阻碍,尤其是在医疗保健环境中。为了应对这一挑战,我们提出了一种灵活的多任务学习框架,该框架利用来自各种源的汇总统计信息。此外,我们提出了一种基于Lepski方法变体的自适应参数选择方法,当只有汇总统计信息可用时,允许进行数据驱动的调优参数选择。我们的系统非渐近分析刻画了所提出方法在各种样本复杂性和重叠情况下的性能。我们通过广泛的模拟展示了我们的理论发现和该方法的性能。这项工作为跨领域训练相关模型提供了一个更灵活的工具,在遗传风险预测和许多其他领域具有实际意义。