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Diversity

Diversity in data sampling is crucial across various use cases, including search, recommendation systems, and more. Ensuring diverse samples means capturing a wide range of variations and perspectives, which leads to more robust, unbiased, and comprehensive models. In search use cases, for instance, diversity helps avoid redundancy, ensuring that users are exposed to a broader set of relevant information rather than repeated similar results.

Papers

Showing 91100 of 9051 papers

TitleStatusHype
Dual Spoof Disentanglement Generation for Face Anti-spoofing with Depth Uncertainty LearningCode2
DualAnoDiff: Dual-Interrelated Diffusion Model for Few-Shot Anomaly Image GenerationCode2
EasyPortrait -- Face Parsing and Portrait Segmentation DatasetCode2
DPOT: Auto-Regressive Denoising Operator Transformer for Large-Scale PDE Pre-TrainingCode2
DivPrune: Diversity-based Visual Token Pruning for Large Multimodal ModelsCode2
DreamMix: Decoupling Object Attributes for Enhanced Editability in Customized Image InpaintingCode2
EcomGPT: Instruction-tuning Large Language Models with Chain-of-Task Tasks for E-commerceCode2
Diffusion Probabilistic Models beat GANs on Medical ImagesCode2
Ambiguous Medical Image Segmentation using Diffusion ModelsCode2
DiffusionPen: Towards Controlling the Style of Handwritten Text GenerationCode2
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