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Open Access Review Issue
A Survey of Zero-Shot Image Classification: Concepts, Developments, and Challenges
Tsinghua Science and Technology 2026, 31(6): 2792-2821
Published: 20 May 2026
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Downloads:182

Zero-shot learning is gaining increasing attention in the social computing community, primarily because it can enable models to effectively perform classification or regression tasks when new concepts continually emerge while lacking sufficient training samples in certain categories. Zero-shot image classification, as a concrete application of zero-shot learning, requires the model to classify images into unknown categories without seeing any training samples of those categories. The key issue of zero-shot image classification is how to leverage auxiliary information such as attributes and textual descriptions to establish connections between the visual space and the semantic space. With the advancement of deep learning theories and methods, the way of modeling cross-modal interaction has continuously improved, promoting significant progress in zero-shot image classification. In this survey, we intensively review related literature in the field of zero-shot image classification over the past decade, with specific elaborations on the latest progress under three scenarios: Traditional zero-shot learning, generalized zero-shot learning, and compositional zero-shot learning. Besides, challenges that need to be addressed as well as prospects of emerging techniques like large language models in zero-shot image classification are also discussed.

Open Access Issue
Evolution of Malicious Social Bot Detection: From Individual Profiling to Group Analysis and Beyond
Journal of Social Computing 2025, 6(3): 258-284
Published: 29 September 2025
Abstract PDF (1.1 MB) Collect
Downloads:476

The rise of online social platforms has enhanced connectivity and access to information. Still, it has also enabled the proliferation of malicious social bots that threaten platform security and disrupt social order. In this paper, we introduce a unified framework for defining and classifying malicious social bots along three dimensions: behavior, interaction, and operation. We then present a comprehensive review of social bot detection methods, tracing their evolution from traditional machine learning techniques to deep learning architectures and graph neural networks, with particular emphasis on recent advances in group-level detection. We also explore the emerging paradigm of Large Language Model (LLM) based bot detection. This paper reviews the current state of research, identifies key challenges, and outlines future directions. It provides a cohesive foundation for building more robust detection frameworks to counter the evolving threats posed by malicious social bots.

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