E2PL: Effective and Efficient Prompt Learning for Incomplete Multi-view Multi-Label Class Incremental Learning
Jiajun Chen, Yue Wu, Kai Huang, Wen Xi, Yangyang Wu, Xiaoye Miao, Mengying Zhu, Meng Xi, Guanjie Cheng

TL;DR
This paper introduces E2PL, a prompt learning framework designed to handle incomplete multi-view multi-label class incremental learning, effectively managing missing views and new classes with reduced parameter complexity and improved robustness.
Contribution
The paper proposes a novel prompt learning approach with task-tailored and missing-aware prompts, along with an efficient tensorization module, to address the challenges of IMvMLCIL.
Findings
E2PL outperforms state-of-the-art methods in effectiveness.
E2PL demonstrates superior efficiency in handling missing views.
The proposed tensorization reduces parameter complexity from exponential to linear.
Abstract
Multi-view multi-label classification (MvMLC) is indispensable for modern web applications aggregating information from diverse sources. However, real-world web-scale settings are rife with missing views and continuously emerging classes, which pose significant obstacles to robust learning. Prevailing methods are ill-equipped for this reality, as they either lack adaptability to new classes or incur exponential parameter growth when handling all possible missing-view patterns, severely limiting their scalability in web environments. To systematically address this gap, we formally introduce a novel task, termed \emph{incomplete multi-view multi-label class incremental learning} (IMvMLCIL), which requires models to simultaneously address heterogeneous missing views and dynamic class expansion. To tackle this task, we propose \textsf{E2PL}, an Effective and Efficient Prompt Learning…
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Taxonomy
TopicsText and Document Classification Technologies · Domain Adaptation and Few-Shot Learning · Topic Modeling
