A Survey of Deep Active Learning
Pengzhen Ren, Yun Xiao, Xiaojun Chang, Po-Yao Huang, Zhihui Li, Brij, B. Gupta, Xiaojiang Chen, Xin Wang

TL;DR
This survey reviews deep active learning (DAL), highlighting its potential to reduce annotation costs in deep learning by selectively labeling data, and discusses its development, challenges, and future directions.
Contribution
It provides a comprehensive classification, systematic overview, and analysis of DAL research and applications, addressing existing gaps in the literature.
Findings
DAL can significantly reduce annotation costs in deep learning.
Current DAL methods face challenges like selection bias and scalability.
Future research should focus on addressing these challenges and expanding applications.
Abstract
Active learning (AL) attempts to maximize the performance gain of the model by marking the fewest samples. Deep learning (DL) is greedy for data and requires a large amount of data supply to optimize massive parameters, so that the model learns how to extract high-quality features. In recent years, due to the rapid development of internet technology, we are in an era of information torrents and we have massive amounts of data. In this way, DL has aroused strong interest of researchers and has been rapidly developed. Compared with DL, researchers have relatively low interest in AL. This is mainly because before the rise of DL, traditional machine learning requires relatively few labeled samples. Therefore, early AL is difficult to reflect the value it deserves. Although DL has made breakthroughs in various fields, most of this success is due to the publicity of the large number of…
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Taxonomy
TopicsMachine Learning and Algorithms · Oil and Gas Production Techniques · Intravenous Infusion Technology and Safety
