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Transferability and Hardness of Supervised Classification Tasks

About

We propose a novel approach for estimating the difficulty and transferability of supervised classification tasks. Unlike previous work, our approach is solution agnostic and does not require or assume trained models. Instead, we estimate these values using an information theoretic approach: treating training labels as random variables and exploring their statistics. When transferring from a source to a target task, we consider the conditional entropy between two such variables (i.e., label assignments of the two tasks). We show analytically and empirically that this value is related to the loss of the transferred model. We further show how to use this value to estimate task hardness. We test our claims extensively on three large scale data sets -- CelebA (40 tasks), Animals with Attributes 2 (85 tasks), and Caltech-UCSD Birds 200 (312 tasks) -- together representing 437 classification tasks. We provide results showing that our hardness and transferability estimates are strongly correlated with empirical hardness and transferability. As a case study, we transfer a learned face recognition model to CelebA attribute classification tasks, showing state of the art accuracy for tasks estimated to be highly transferable.

Anh T. Tran, Cuong V. Nguyen, Tal Hassner• 2019

Related benchmarks

TaskDatasetResultRank
Image ClassificationImageNet-A (test)--
154
Image ClassificationImageNet-Sketch (test)--
132
Image ClassificationImageNet-R (test)
Accuracy15.31
105
Model SelectionDTD
Weighted Kendall's Tau0.403
46
Image ClassificationObjectNet (test)--
43
Model SelectionCars
Weighted Kendall's Tau0.771
36
Model SelectionSUN397
Weighted Kendall's Tau0.892
36
Model SelectionPets
Weighted Kendall's Tau0.696
36
Model SelectionCIFAR10
Weighted Kendall's Tau0.694
36
Model SelectionCIFAR100
Weighted Kendall's Tau0.617
36
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