Evaluating the Values of Sources in Transfer Learning

04/26/2021
by   Md Rizwan Parvez, et al.
0

Transfer learning that adapts a model trained on data-rich sources to low-resource targets has been widely applied in natural language processing (NLP). However, when training a transfer model over multiple sources, not every source is equally useful for the target. To better transfer a model, it is essential to understand the values of the sources. In this paper, we develop SEAL-Shap, an efficient source valuation framework for quantifying the usefulness of the sources (e.g., domains/languages) in transfer learning based on the Shapley value method. Experiments and comprehensive analyses on both cross-domain and cross-lingual transfers demonstrate that our framework is not only effective in choosing useful transfer sources but also the source values match the intuitive source-target similarity.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
10/08/2018

Zero-Resource Multilingual Model Transfer: Learning What to Share

Modern natural language processing and understanding applications have e...
research
04/16/2021

To Share or not to Share: Predicting Sets of Sources for Model Transfer Learning

In low-resource settings, model transfer can help to overcome a lack of ...
research
11/10/2020

Predicting Water Temperature Dynamics of Unmonitored Lakes with Meta Transfer Learning

Most environmental data come from a minority of well-observed sites. An ...
research
12/10/2019

Unsupervised Transfer Learning via BERT Neuron Selection

Recent advancements in language representation models such as BERT have ...
research
02/22/2023

Source-Function Weighted-Transfer Learning for Nonparametric Regression with Seemingly Similar Sources

The homogeneity, or more generally, the similarity between source domain...
research
11/23/2017

Modelling Domain Relationships for Transfer Learning on Retrieval-based Question Answering Systems in E-commerce

In this paper, we study transfer learning for the PI and NLI problems, a...
research
09/25/2022

An Empirical Study on Cross-X Transfer for Legal Judgment Prediction

Cross-lingual transfer learning has proven useful in a variety of Natura...

Please sign up or login with your details

Forgot password? Click here to reset