Exploring the benefits of smart data sampling and data scoring networks in improving model performance under weak supervision. The chapter presents a novel approach to achieving full performance by sub-sampling data and discusses the significance of data quality in training larger models efficiently. Results from experiments on synthetic and real datasets highlight the effectiveness of sub-sampling over full sample training, especially in cases of model misspecification.

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