Cross-domain Few-shot Meta-learning Using Stacking

05/12/2022
by   Hongyu Wang, et al.
0

Cross-domain few-shot meta-learning (CDFSML) addresses learning problems where knowledge needs to be transferred from several source domains into an instance-scarce target domain with an explicitly different input distribution. Recently published CDFSML methods generally construct a "universal model" that combines knowledge of multiple source domains into one backbone feature extractor. This enables efficient inference but necessitates re-computation of the backbone whenever a new source domain is added. Moreover, state-of-the-art methods derive their universal model from a collection of backbones – normally one for each source domain – and the backbones may be constrained to have the same architecture as the universal model. We propose a CDFSML method that is inspired by the classic stacking approach to meta learning. It imposes no constraints on the backbones' architecture or feature shape and does not incur the computational overhead of (re-)computing a universal model. Given a target-domain task, it fine-tunes each backbone independently, uses cross-validation to extract meta training data from the task's instance-scarce support set, and learns a simple linear meta classifier from this data. We evaluate our stacking approach on the well-known Meta-Dataset benchmark, targeting image classification with convolutional neural networks, and show that it often yields substantially higher accuracy than competing methods.

READ FULL TEXT
research
02/11/2022

Cross Domain Few-Shot Learning via Meta Adversarial Training

Few-shot relation classification (RC) is one of the critical problems in...
research
05/11/2023

Meta-hallucinator: Towards Few-Shot Cross-Modality Cardiac Image Segmentation

Domain shift and label scarcity heavily limit deep learning applications...
research
06/29/2020

Few-Shot Microscopy Image Cell Segmentation

Automatic cell segmentation in microscopy images works well with the sup...
research
06/07/2021

Self-Supervision Meta-Learning for One-Shot Unsupervised Cross-Domain Detection

Deep detection models have largely demonstrated to be extremely powerful...
research
06/06/2021

DAMSL: Domain Agnostic Meta Score-based Learning

In this paper, we propose Domain Agnostic Meta Score-based Learning (DAM...
research
03/20/2022

Unidirectional Thin Adapter for Efficient Adaptation of Deep Neural Networks

In this paper, we propose a new adapter network for adapting a pre-train...
research
04/27/2022

Adaptable Text Matching via Meta-Weight Regulator

Neural text matching models have been used in a range of applications su...

Please sign up or login with your details

Forgot password? Click here to reset