Toward Improved Artificial Intelligence in Requirements Engineering: Metadata for Tracing Datasets

J. Hayes, Jared Payne, Mallory Leppelmeier
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引用次数: 7

Abstract

Data is the driver of artificial intelligence in requirements engineering. While some applications may lend themselves to training sets that are easily accessible (such as sentiment detection, feature request classification, requirements prioritization), other tasks face data challenges. Tracing and domain model building are examples of applications where data is not easily found or in the proper format or with the necessary metadata to support deep learning, machine learning, or other artificial intelligence techniques. This paper surveys datasets available from sources such as the Center of Excellence for Software and Systems Traceability and provides valuable metadata that can be used by re-searchers or practitioners when deciding what datasets to use, what aspects of datasets to use, what features to use in deep learning, and more.
在需求工程中改进人工智能:追踪数据集的元数据
数据是需求工程中人工智能的驱动因素。虽然一些应用程序可能适合于易于访问的训练集(如情感检测、特征请求分类、需求优先级),但其他任务面临数据挑战。跟踪和领域模型构建是应用程序的示例,其中数据不容易找到,或者格式不合适,或者具有支持深度学习、机器学习或其他人工智能技术所需的元数据。本文调查了来自软件和系统可追溯性卓越中心等来源的数据集,并提供了有价值的元数据,可供研究人员或从业者在决定使用哪些数据集、使用数据集的哪些方面、在深度学习中使用哪些功能等时使用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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