利用漂移感知机制为工业应用提供自适应数据质量评分操作框架

IF 3.7 2区 计算机科学 Q1 COMPUTER SCIENCE, SOFTWARE ENGINEERING Journal of Systems and Software Pub Date : 2024-08-14 DOI:10.1016/j.jss.2024.112184
Firas Bayram , Bestoun S. Ahmed , Erik Hallin
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引用次数: 0

摘要

在用于工业应用的数据驱动型人工智能(AI)系统中,确保输入数据流的可靠性是可靠决策不可或缺的一部分。评估数据有效性的一种方法是数据质量评分,它根据不同的质量维度为每个数据点或数据流分配分数。然而,某些维度表现出动态特性,需要根据系统的当前条件进行调整。现有的方法往往忽略了这一点,导致它们在动态生产环境中效率低下。在本文中,我们介绍了自适应数据质量评分操作框架,这是一个为应对工业数据流中动态质量维度带来的挑战而开发的新型框架。该框架通过集成动态变化检测器机制引入了一种创新方法,该机制可主动监测和适应数据质量的变化,确保质量评分的相关性。我们在一个真实的工业应用案例中对所提出的框架性能进行了评估。实验结果表明,该框架具有较高的预测性能和高效的处理时间,突出了其在实际质量驱动型人工智能应用中的有效性。
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Adaptive data quality scoring operations framework using drift-aware mechanism for industrial applications

Within data-driven artificial intelligence (AI) systems for industrial applications, ensuring the reliability of the incoming data streams is an integral part of trustworthy decision-making. An approach to assess data validity is data quality scoring, which assigns a score to each data point or stream based on various quality dimensions. However, certain dimensions exhibit dynamic qualities, which require adaptation on the basis of the system’s current conditions. Existing methods often overlook this aspect, making them inefficient in dynamic production environments. In this paper, we introduce the Adaptive Data Quality Scoring Operations Framework, a novel framework developed to address the challenges posed by dynamic quality dimensions in industrial data streams. The framework introduces an innovative approach by integrating a dynamic change detector mechanism that actively monitors and adapts to changes in data quality, ensuring the relevance of quality scores. We evaluate the proposed framework performance in a real-world industrial use case. The experimental results reveal high predictive performance and efficient processing time, highlighting its effectiveness in practical quality-driven AI applications.

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来源期刊
Journal of Systems and Software
Journal of Systems and Software 工程技术-计算机:理论方法
CiteScore
8.60
自引率
5.70%
发文量
193
审稿时长
16 weeks
期刊介绍: The Journal of Systems and Software publishes papers covering all aspects of software engineering and related hardware-software-systems issues. All articles should include a validation of the idea presented, e.g. through case studies, experiments, or systematic comparisons with other approaches already in practice. Topics of interest include, but are not limited to: •Methods and tools for, and empirical studies on, software requirements, design, architecture, verification and validation, maintenance and evolution •Agile, model-driven, service-oriented, open source and global software development •Approaches for mobile, multiprocessing, real-time, distributed, cloud-based, dependable and virtualized systems •Human factors and management concerns of software development •Data management and big data issues of software systems •Metrics and evaluation, data mining of software development resources •Business and economic aspects of software development processes The journal welcomes state-of-the-art surveys and reports of practical experience for all of these topics.
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