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Learn/AI Papers/Data-centric & features

Data-Centric AI & Feature Engineering

Scope

Improving performance via data quality, feature design, augmentation, and noisy-label handling rather than only model structure.

Keywords

Preprocessing, feature engineering, data augmentation

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