Representation Similarity Analysis for Efficient Task taxonomy & Transfer Learning

04/26/2019
by   Kshitij Dwivedi, et al.
20

Transfer learning is widely used in deep neural network models when there are few labeled examples available. The common approach is to take a pre-trained network in a similar task and finetune the model parameters. This is usually done blindly without a pre-selection from a set of pre-trained models, or by finetuning a set of models trained on different tasks and selecting the best performing one by cross-validation. We address this problem by proposing an approach to assess the relationship between visual tasks and their task-specific models. Our method uses Representation Similarity Analysis (RSA), which is commonly used to find a correlation between neuronal responses from brain data and models. With RSA we obtain a similarity score among tasks by computing correlations between models trained on different tasks. Our method is efficient as it requires only pre-trained models, and a few images with no further training. We demonstrate the effectiveness and efficiency of our method for generating task taxonomy on Taskonomy dataset. We next evaluate the relationship of RSA with the transfer learning performance on Taskonomy tasks and a new task: Pascal VOC semantic segmentation. Our results reveal that models trained on tasks with higher similarity score show higher transfer learning performance. Surprisingly, the best transfer learning result for Pascal VOC semantic segmentation is not obtained from the pre-trained model on semantic segmentation, probably due to the domain differences, and our method successfully selects the high performing models.

READ FULL TEXT

page 3

page 5

page 7

page 12

page 13

research
08/05/2020

Duality Diagram Similarity: a generic framework for initialization selection in task transfer learning

In this paper, we tackle an open research question in transfer learning,...
research
07/27/2019

Learnable Parameter Similarity

Most of the existing approaches focus on specific visual tasks while ign...
research
03/15/2017

Transfer Learning by Asymmetric Image Weighting for Segmentation across Scanners

Supervised learning has been very successful for automatic segmentation ...
research
06/06/2023

Model Spider: Learning to Rank Pre-Trained Models Efficiently

Figuring out which Pre-Trained Model (PTM) from a model zoo fits the tar...
research
06/24/2020

Improving task-specific representation via 1M unlabelled images without any extra knowledge

We present a case-study to improve the task-specific representation by l...
research
03/26/2023

Δ-Networks for Efficient Model Patching

Models pre-trained on large-scale datasets are often finetuned to suppor...
research
04/01/2019

Transfer Learning for Clinical Time Series Analysis using Deep Neural Networks

Deep neural networks have shown promising results for various clinical p...

Please sign up or login with your details

Forgot password? Click here to reset