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An Information-Theoretic Approach to Transferability in Task Transfer Learning

About

Task transfer learning is a popular technique in image processing applications that uses pre-trained models to reduce the supervision cost of related tasks. An important question is to determine task transferability, i.e. given a common input domain, estimating to what extent representations learned from a source task can help in learning a target task. Typically, transferability is either measured experimentally or inferred through task relatedness, which is often defined without a clear operational meaning. In this paper, we present a novel metric, H-score, an easily-computable evaluation function that estimates the performance of transferred representations from one task to another in classification problems using statistical and information theoretic principles. Experiments on real image data show that our metric is not only consistent with the empirical transferability measurement, but also useful to practitioners in applications such as source model selection and task transfer curriculum learning.

Yajie Bao, Yang Li, Shao-Lun Huang, Lin Zhang, Lizhong Zheng, Amir Zamir, Leonidas Guibas• 2022

Related benchmarks

TaskDatasetResultRank
Model SelectionDTD
Weighted Kendall's Tau0.395
46
Model SelectionSUN397
Weighted Kendall's Tau0.918
36
Model SelectionCIFAR100
Weighted Kendall's Tau0.784
36
Model SelectionCIFAR10
Weighted Kendall's Tau0.797
36
Model SelectionCars
Weighted Kendall's Tau0.616
36
Model SelectionPets
Weighted Kendall's Tau0.61
36
PTM SelectionCaltech101
Kendall's weighted tau0.738
19
PTM SelectionAircraft
Kendall's tau_w0.328
19
PTM RankingModel Zoo 42 PTMs
Wall-clock Time (s)2.36e+3
12
Visual Question AnsweringOKVQA N=40
CD22
11
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