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Theoretical

Learnable Logit Adjustment for Imbalanced Semi-Supervised Learning under Class Distribution Mismatch

Theoretical / By user

Hyuck Lee, Taemin Park, Heeyoung Kim

KRETA: A Benchmark for Korean Reading and Reasoning in Text-Rich VQA Attuned to Diverse Visual Contexts

Multi-modal Learning, Theoretical / By user

Taebaek Hwang, Minseo Kim, Gisang Lee, Seonuk Kim, Hyunjun Eun

SuFP: Piecewise Bit Allocation Floating-Point for Robust Neural Network Quantization

Theoretical / By user

Geonwoo Ko, Sungyeob Yoo, Seri Ham, Seeyeon Kim, Minkyu Kim, Joo-Young Kim

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