Lightweight Ensemble
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A Lightweight Ensemble-Based Face Image Quality Assessment Method with Correlation-Aware Loss
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A practical probabilistic framework for deformable image registration uncertainty in radiotherapy dose propagation
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A practical probabilistic framework for deformable image registration uncertainty in radiotherapy dose propagation
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Reasoning-Intensive Regression
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Perception First: A Frontier Native-Video Model with Self-Consistency for Implicit Video Question Answering
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SEMixer: Semantics Enhanced MLP-Mixer for Multiscale Mixing and Long-term Time Series Forecasting
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