Combining Model-Agnostic Meta-Learning and Transfer Learning for Regression

Wahyu Fadli Satrya, Ji Hoon Yun

Research output: Contribution to journalArticlepeer-review

11 Scopus citations

Abstract

For cases in which a machine learning model needs to be adapted to a new task, various approaches have been developed, including model-agnostic meta-learning (MAML) and transfer learning. In this paper, we investigate how the differences in the data distributions between the old tasks and the new target task impact performance in regression problems. By performing experiments, we discover that these differences greatly affect the relative performance of different adaptation methods. Based on this observation, we develop ensemble schemes combining multiple adaptation methods that can handle a wide range of data distribution differences between the old and new tasks, thus offering more stable performance for a wide range of tasks. For evaluation, we consider three regression problems of sinusoidal fitting, virtual reality motion prediction, and temperature forecasting. The evaluation results demonstrate that the proposed ensemble schemes achieve the best performance among the considered methods in most cases.

Original languageEnglish
Article number583
JournalSensors
Volume23
Issue number2
DOIs
StatePublished - Jan 2023

Keywords

  • ensemble
  • few-shot learning
  • MAML
  • meta-learning
  • model adaptation
  • model-agnostic meta-learning
  • regression
  • transfer learning

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