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Hauptverfasser: Sarwar, Zain, Tran, Van, Bhagoji, Arjun Nitin, Feamster, Nick, Zhao, Ben Y., Chakraborty, Supriyo
Format: Preprint
Veröffentlicht: 2024
Schlagworte:
Online-Zugang:https://arxiv.org/abs/2410.08432
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author Sarwar, Zain
Tran, Van
Bhagoji, Arjun Nitin
Feamster, Nick
Zhao, Ben Y.
Chakraborty, Supriyo
author_facet Sarwar, Zain
Tran, Van
Bhagoji, Arjun Nitin
Feamster, Nick
Zhao, Ben Y.
Chakraborty, Supriyo
contents Machine learning (ML) models often require large amounts of data to perform well. When the available data is limited, model trainers may need to acquire more data from external sources. Often, useful data is held by private entities who are hesitant to share their data due to propriety and privacy concerns. This makes it challenging and expensive for model trainers to acquire the data they need to improve model performance. To address this challenge, we propose Mycroft, a data-efficient method that enables model trainers to evaluate the relative utility of different data sources while working with a constrained data-sharing budget. By leveraging feature space distances and gradient matching, Mycroft identifies small but informative data subsets from each owner, allowing model trainers to maximize performance with minimal data exposure. Experimental results across four tasks in two domains show that Mycroft converges rapidly to the performance of the full-information baseline, where all data is shared. Moreover, Mycroft is robust to noise and can effectively rank data owners by utility. Mycroft can pave the way for democratized training of high performance ML models.
format Preprint
id arxiv_https___arxiv_org_abs_2410_08432
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle MYCROFT: Towards Effective and Efficient External Data Augmentation
Sarwar, Zain
Tran, Van
Bhagoji, Arjun Nitin
Feamster, Nick
Zhao, Ben Y.
Chakraborty, Supriyo
Machine Learning
Machine learning (ML) models often require large amounts of data to perform well. When the available data is limited, model trainers may need to acquire more data from external sources. Often, useful data is held by private entities who are hesitant to share their data due to propriety and privacy concerns. This makes it challenging and expensive for model trainers to acquire the data they need to improve model performance. To address this challenge, we propose Mycroft, a data-efficient method that enables model trainers to evaluate the relative utility of different data sources while working with a constrained data-sharing budget. By leveraging feature space distances and gradient matching, Mycroft identifies small but informative data subsets from each owner, allowing model trainers to maximize performance with minimal data exposure. Experimental results across four tasks in two domains show that Mycroft converges rapidly to the performance of the full-information baseline, where all data is shared. Moreover, Mycroft is robust to noise and can effectively rank data owners by utility. Mycroft can pave the way for democratized training of high performance ML models.
title MYCROFT: Towards Effective and Efficient External Data Augmentation
topic Machine Learning
url https://arxiv.org/abs/2410.08432