Inproceedings3866
Trustworthy machine learning for health care: scalable data valuation with the shapley value
Trustworthy machine learning for health care: scalable data valuation with the shapley value
Published: 2021
April
Buchtitel: Proceedings of the Conference on Health, Inference, and Learning
Seiten: 47–57
Verlag: Association for Computing Machinery (ACM)
Organisation: ACM
Nicht-referierte Veröffentlichung
BibTeX
Kurzfassung
Collecting data from many sources is an essential approach to generate large data sets required for the training of machine learning models. Trustworthy machine learning requires incentives, guarantees of data quality, and information privacy. Applying recent advancements in data valuation methods for machine learning can help to enable these. In this work, we analyze the suitability of three different data valuation methods for medical image classification tasks, specifically pleural effusion, on an extensive data set of chest X-ray scans. Our results reveal that a heuristic for calculating the Shapley valuation scheme based on a k-nearest neighbor classifier can successfully value large quantities of data instances. We also demonstrate possible applications for incentivizing data sharing, the efficient detection of mislabeled data, and summarizing data sets to exclude private information. Thereby, this work contributes to developing modern data infrastructures for trustworthy machine learning in health care.
ISBN: 978-1-4503-8359-2
Weitere Informationen unter: Link
DOI Link: 10.1145/3450439.3451861
Critical Information Infrastructures
Data Science, Trustworthy AI, Health IT Applications