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Augment & Valuate : A Data Enhancement Pipeline for Data-Centric AI

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arxiv 2112.03837 v1 pith:X5HLWH7E submitted 2021-12-07 cs.LG

Augment & Valuate : A Data Enhancement Pipeline for Data-Centric AI

classification cs.LG
keywords datapipelinedata-centricautomationdatasetlearningmachineaccuracy
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Data scarcity and noise are important issues in industrial applications of machine learning. However, it is often challenging to devise a scalable and generalized approach to address the fundamental distributional and semantic properties of dataset with black box models. For this reason, data-centric approaches are crucial for the automation of machine learning operation pipeline. In order to serve as the basis for this automation, we suggest a domain-agnostic pipeline for refining the quality of data in image classification problems. This pipeline contains data valuation, cleansing, and augmentation. With an appropriate combination of these methods, we could achieve 84.711% test accuracy (ranked #6, Honorable Mention in the Most Innovative) in the Data-Centric AI competition only with the provided dataset.

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