Hamid Hassani, Azadeh Mohebi, M. Ershadi, A. Jalalimanesh
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In this research, nine dimensions of data quality including accuracy, value-added, relevancy, completeness, appropriate amount of data, concise, consistency, interpretability and accessibility have been redefined based on previous studies and nominal group technique (NGT).FindingsThe proposed dimensions are implemented as new metrics to evaluate a newly developed lecture video indexing algorithm, LVTIA and numerical values have been obtained based on the proposed definitions for each dimension. In addition, the new dimensions are compared with each other in terms of various aspects. The comparison shows that each dimension that is used for assessing lecture video indexing, is able to reflect a different weakness or strength of an indexing method or algorithm.Originality/valueDespite development of different methods for indexing lecture videos, the issue of data quality and its various dimensions have not been studied. 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引用次数: 0
摘要
本研究的目的是提供一个框架,在这个框架中定义新的数据质量维度。新的维度为课堂视频索引的评价提供了新的指标。由于讲座视频索引涉及多个步骤,所提出的框架包含新的维度,引入了新的综合方法来从头到尾评估索引方法或算法。设计/方法本研究的重点是设计科学研究方法(DSRM)的第五步,即评估。也就是说,应该从不同的方面来评价作为人工制品的讲座视频索引领域所开发的方法。本研究在前人研究和名义群技术(nominal group technique, NGT)的基础上,重新定义了数据质量的九个维度,包括准确性、附加值、相关性、完整性、适当量、简洁性、一致性、可解释性和可及性。研究结果提出的维度作为评估新开发的讲座视频索引算法的新指标,根据每个维度的定义获得了LVTIA和数值。此外,还从各个方面对新维度进行了比较。比较表明,用于评估讲座视频索引的每个维度都能够反映索引方法或算法的不同弱点或优势。原创性/价值尽管开发了不同的方法来索引讲座视频,但数据质量及其各个维度的问题尚未得到研究。由于低质量的数据会影响科学讲座视频的标引过程,因此在此过程中数据质量问题需要特别关注。
A novel data quality framework for assessment of scientific lecture video indexing
PurposeThe purpose of this research is to provide a framework in which new data quality dimensions are defined. The new dimensions provide new metrics for the assessment of lecture video indexing. As lecture video indexing involves various steps, the proposed framework containing new dimensions, introduces new integrated approach for evaluating an indexing method or algorithm from the beginning to the end.Design/methodology/approachThe emphasis in this study is on the fifth step of design science research methodology (DSRM), known as evaluation. That is, the methods that are developed in the field of lecture video indexing as an artifact, should be evaluated from different aspects. In this research, nine dimensions of data quality including accuracy, value-added, relevancy, completeness, appropriate amount of data, concise, consistency, interpretability and accessibility have been redefined based on previous studies and nominal group technique (NGT).FindingsThe proposed dimensions are implemented as new metrics to evaluate a newly developed lecture video indexing algorithm, LVTIA and numerical values have been obtained based on the proposed definitions for each dimension. In addition, the new dimensions are compared with each other in terms of various aspects. The comparison shows that each dimension that is used for assessing lecture video indexing, is able to reflect a different weakness or strength of an indexing method or algorithm.Originality/valueDespite development of different methods for indexing lecture videos, the issue of data quality and its various dimensions have not been studied. Since data with low quality can affect the process of scientific lecture video indexing, the issue of data quality in this process requires special attention.
期刊介绍:
■Integrated library systems ■Networking ■Strategic planning ■Policy implementation across entire institutions ■Security ■Automation systems ■The role of consortia ■Resource access initiatives ■Architecture and technology ■Electronic publishing ■Library technology in specific countries ■User perspectives on technology ■How technology can help disabled library users ■Library-related web sites