Learning Loss for Active Learning

05/09/2019
by   Donggeun Yoo, et al.
0

The performance of deep neural networks improves with more annotated data. The problem is that the budget for annotation is limited. One solution to this is active learning, where a model asks human to annotate data that it perceived as uncertain. A variety of recent methods have been proposed to apply active learning to deep networks but most of them are either designed specific for their target tasks or computationally inefficient for large networks. In this paper, we propose a novel active learning method that is simple but task-agnostic, and works efficiently with the deep networks. We attach a small parametric module, named "loss prediction module," to a target network, and learn it to predict target losses of unlabeled inputs. Then, this module can suggest data that the target model is likely to produce a wrong prediction. This method is task-agnostic as networks are learned from a single loss regardless of target tasks. We rigorously validate our method through image classification, object detection, and human pose estimation, with the recent network architectures. The results demonstrate that our method consistently outperforms the previous methods over the tasks.

READ FULL TEXT
research
07/31/2020

Learning to Rank for Active Learning: A Listwise Approach

Active learning emerged as an alternative to alleviate the effort to lab...
research
04/19/2021

A Mathematical Analysis of Learning Loss for Active Learning in Regression

Active learning continues to remain significant in the industry since it...
research
06/21/2021

Active Learning for Deep Neural Networks on Edge Devices

When dealing with deep neural network (DNN) applications on edge devices...
research
07/03/2020

Confidence-Aware Learning for Deep Neural Networks

Despite the power of deep neural networks for a wide range of tasks, an ...
research
01/11/2023

Padding Module: Learning the Padding in Deep Neural Networks

During the last decades, many studies have been dedicated to improving t...
research
05/26/2022

Deep Active Learning with Noise Stability

Uncertainty estimation for unlabeled data is crucial to active learning....
research
09/23/2021

Bridging the Last Mile in Sim-to-Real Robot Perception via Bayesian Active Learning

Learning from synthetic data is popular in a variety of robotic vision t...

Please sign up or login with your details

Forgot password? Click here to reset