Drift-aware Collaborative Assistance Mixture of Experts for Heterogeneous Multistream Learning
En Yu, Jie Lu, Kun Wang, Xiaoyu Yang, Guangquan Zhang

TL;DR
CAMEL introduces a dynamic mixture of experts framework for multistream learning that effectively handles heterogeneity and concept drift through specialized experts, attention-based collaboration, and adaptive expert management.
Contribution
It proposes a novel framework with dedicated feature extractors, a multi-head attention assistance expert, and an autonomous expert tuner for online adaptation in multistream environments.
Findings
Outperforms existing methods in diverse multistream scenarios
Exhibits strong resilience to complex concept drifts
Effectively manages expert lifecycle for continual learning
Abstract
Learning from multiple data streams in real-world scenarios is fundamentally challenging due to intrinsic heterogeneity and unpredictable concept drifts. Existing methods typically assume homogeneous streams and employ static architectures with indiscriminate knowledge fusion, limiting generalizability in complex dynamic environments. To tackle this gap, we propose CAMEL, a dynamic \textbf{C}ollaborative \textbf{A}ssistance \textbf{M}ixture of \textbf{E}xperts \textbf{L}earning framework. It addresses heterogeneity by assigning each stream an independent system with a dedicated feature extractor and task-specific head. Meanwhile, a dynamic pool of specialized private experts captures stream-specific idiosyncratic patterns. Crucially, collaboration across these heterogeneous streams is enabled by a dedicated assistance expert. This expert employs a multi-head attention mechanism to…
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Taxonomy
TopicsData Stream Mining Techniques · Domain Adaptation and Few-Shot Learning · Advanced Bandit Algorithms Research
