Affiliation:
1. Department of Statistics and Actuarial Science University of Iowa Iowa City Iowa 52242‐1409 USA
2. Department of Mathematical Sciences University of Texas at Dallas Richardson Texas 75080‐3021 USA
3. Dr. Bing Zhang Department of Statistics University of Kentucky Lexington Kentucky 40536‐0082 USA
Abstract
Transfer learning is an essential tool for improving the performance of primary tasks by leveraging information from auxiliary data resources. In this work, we propose Adaptive Robust Transfer Learning (ART), a flexible pipeline of performing transfer learning with generic machine learning algorithms. We establish the nonasymptotic learning theory of ART, providing a provable theoretical guarantee for achieving adaptive transfer while preventing negative transfer. Additionally, we introduce an ART‐integrated‐aggregating machine that produces a single final model when multiple candidate algorithms are considered. We demonstrate the promising performance of ART through extensive empirical studies on regression, classification, and sparse learning. We further present a real‐data analysis for a mortality study.
Subject
Statistics, Probability and Uncertainty,Statistics and Probability