Affiliation:
1. Nanyang Technological University, Nanyang Avenue, Singapore
2. WeBank, Shahexilu, Nanshan, Shenzhen, China
Abstract
Most machine-learning methods focus on classifying instances whose classes have already been seen in training. In practice, many applications require classifying instances whose classes have not been seen previously. Zero-shot learning is a powerful and promising learning paradigm, in which the classes covered by training instances and the classes we aim to classify are disjoint. In this paper, we provide a comprehensive survey of zero-shot learning. First of all, we provide an overview of zero-shot learning. According to the data utilized in model optimization, we classify zero-shot learning into three learning settings. Second, we describe different semantic spaces adopted in existing zero-shot learning works. Third, we categorize existing zero-shot learning methods and introduce representative methods under each category. Fourth, we discuss different applications of zero-shot learning. Finally, we highlight promising future research directions of zero-shot learning.
Funder
NTU-PKU Joint Research Institute
IDM Futures Funding Initiative
Interdisciplinary Graduate School
Nanyang Assistant Professorship
Nanyang Technological University and Peking University
National Research Foundation, Prime Minister's Office, Singapore
Nanyang Technological University, Singapore
Ng Teng Fong Charitable Foundation
Publisher
Association for Computing Machinery (ACM)
Subject
Artificial Intelligence,Theoretical Computer Science
Cited by
349 articles.
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