LGMay 1, 2024

A Survey on Deep Active Learning: Recent Advances and New Frontiers

arXiv:2405.00334v2134 citationsh-index: 25IEEE Trans Neural Netw Learn Syst
Originality Synthesis-oriented
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This is an incremental survey paper that addresses the scarcity of reviews in deep active learning for researchers in fields like NLP, CV, and DM.

The authors conducted a comprehensive survey on deep active learning (DAL), summarizing recent advances, methods, applications, and challenges to serve as a guide for researchers.

Active learning seeks to achieve strong performance with fewer training samples. It does this by iteratively asking an oracle to label new selected samples in a human-in-the-loop manner. This technique has gained increasing popularity due to its broad applicability, yet its survey papers, especially for deep learning-based active learning (DAL), remain scarce. Therefore, we conduct an advanced and comprehensive survey on DAL. We first introduce reviewed paper collection and filtering. Second, we formally define the DAL task and summarize the most influential baselines and widely used datasets. Third, we systematically provide a taxonomy of DAL methods from five perspectives, including annotation types, query strategies, deep model architectures, learning paradigms, and training processes, and objectively analyze their strengths and weaknesses. Then, we comprehensively summarize main applications of DAL in Natural Language Processing (NLP), Computer Vision (CV), and Data Mining (DM), etc. Finally, we discuss challenges and perspectives after a detailed analysis of current studies. This work aims to serve as a useful and quick guide for researchers in overcoming difficulties in DAL. We hope that this survey will spur further progress in this burgeoning field.

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