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…
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515
total citations
- FWCI
- 34.97
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- 100%
- References
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Authors
4Topics & keywords
Topics
Keywords
- Computer science
- Disjoint sets
- Artificial intelligence
- Zero (linguistics)
- Shot (pellet)
- Machine learning
- Categorization
- Focus (optics)
UN Sustainable Development Goals
- Quality Education
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