TimeTok is a unified framework using hierarchical tokenization for granularity-controllable time-series generation that achieves state-of-the-art performance in standard tasks and shows transferability across heterogeneous datasets.
Neural discrete representation learning
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UNVERDICTED 3representative citing papers
MUSE decouples reconstruction and semantic learning in visual tokenization via topological orthogonality, yielding SOTA generation quality and improved semantic performance over its teacher model.
Presents LLaVA-AlignedVQ, an edge-cloud VQA system with AlignedVQ that delivers 1365x feature compression, 96.8% lower transmission than JPEG90, 2-15x speedup, and accuracy within -2.23% to +1.6% of the baseline across eight datasets.
citing papers explorer
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TimeTok: Granularity-Controllable Time-Series Generation via Hierarchical Tokenization
TimeTok is a unified framework using hierarchical tokenization for granularity-controllable time-series generation that achieves state-of-the-art performance in standard tasks and shows transferability across heterogeneous datasets.
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MUSE: Resolving Manifold Misalignment in Visual Tokenization via Topological Orthogonality
MUSE decouples reconstruction and semantic learning in visual tokenization via topological orthogonality, yielding SOTA generation quality and improved semantic performance over its teacher model.
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Aligned Vector Quantization for Edge-Cloud Collabrative Vision-Language Models
Presents LLaVA-AlignedVQ, an edge-cloud VQA system with AlignedVQ that delivers 1365x feature compression, 96.8% lower transmission than JPEG90, 2-15x speedup, and accuracy within -2.23% to +1.6% of the baseline across eight datasets.