射频机器学习中量化数据集质量

William H. Clark, Alan J. Michaels
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引用次数: 2

摘要

考虑到数据在机器学习系统中的重要性,量化可用数据的质量如何影响最终性能是开发中的重要组成部分。通过参数化地改变可用的数据量来检查数据集的数量和训练系统的性能之间的关系,可以学习新的见解并用于更有效地回答问题。拥有一个质量度量将更好地使开发人员能够询问一个数据集正在考虑的问题,以及它如何提高或损害训练网络的性能,从而进一步允许对系统必须考虑的未知数进行更深入的调查和理解。这项工作建立了回归数据数量和系统性能之间关系的方法,使不同数据集的质量与已知的良好测试集进行定量比较。此外,这种方法允许对生成的或以其他方式获得的数据的价值进行公正的比较,以达到最终系统的最终性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Quantifying Dataset Quality in Radio Frequency Machine Learning
Given the significance of data within machine learning systems, quantifying how the quality of the available data affects the final performance is a vital component in development. Examining the relationship between a dataset's quantity and the trained system's performance by parametrically varying the available amount of data, new insights can be learned and used to answer questions more efficiently. Having a metric of quality will better enable the developer to ask questions about what one dataset is considering within it and how it improves or hurts the performance of the trained network, further allowing a deeper investigation and understanding of the unknowns that must be considered by the system. This work establishes the approach to regress the relationship between data quantity and system performance in a way that enables a quantitative comparison of quality for different datasets against a known good test set. Further, this approach allows for an impartial means of comparing the value of data, generated or otherwise acquired, toward the end system's final performance.
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