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Beyond Absolute Scores: Relative Edit-induced Difference for Generalizable Image Aesthetic Assessment

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ShotCrop$^3$: Cropping Human-Centric Images into Cinematic Triple-Shot Compositions

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APEX: Large-scale Multi-task Aesthetic-Informed Popularity Prediction for AI-Generated Music

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