Applying a data quality model to experiments in software engineering
Advances in Conceptual Modeling: ER 2014 Workshops, ENMO, MoBiD, MReBA, QMMQ …, 2014•Springer
Data collection and analysis are key artifacts in any software engineering experiment.
However, these data might contain errors. We propose a Data Quality model specific to data
obtained from software engineering experiments, which provides a framework for analyzing
and improving these data. We apply the model to two controlled experiments, which results
in the discovery of data quality problems that need to be addressed. We conclude that data
quality issues have to be considered before obtaining the experimental results.
However, these data might contain errors. We propose a Data Quality model specific to data
obtained from software engineering experiments, which provides a framework for analyzing
and improving these data. We apply the model to two controlled experiments, which results
in the discovery of data quality problems that need to be addressed. We conclude that data
quality issues have to be considered before obtaining the experimental results.
Abstract
Data collection and analysis are key artifacts in any software engineering experiment. However, these data might contain errors. We propose a Data Quality model specific to data obtained from software engineering experiments, which provides a framework for analyzing and improving these data. We apply the model to two controlled experiments, which results in the discovery of data quality problems that need to be addressed. We conclude that data quality issues have to be considered before obtaining the experimental results.
Springer
以上显示的是最相近的搜索结果。 查看全部搜索结果