The quality of data is important in research working with data sets because poor data quality may lead to invalid results. Data sets contain measurements that are associated with metrics and entities; however, in some data sets, it is not always clear which entities have been measured and exactly which metrics have been used. This means that measurements could be misinterpreted. In this study, we develop a framework for data quality assessment that determines whether a data set has sufficient information to support the correct interpretation of data for analysis in empirical research. The framework incorporates a dataset metamodel and a quality assessment process to evaluate the data set quality. To evaluate the effectiveness of our framewo...
Software is playing a crucial role in modern societies. The demand for software quality is increasin...
Background--Self-evidently empirical analyses rely upon the quality of their data. Likewise, replica...
Large public data sets on software evolution promise great value to both researchers and practitione...
The quality of data is important in research working with data sets because poor data quality may le...
OBJECTIVE - to assess the extent and types of techniques used to manage quality within software engi...
Context: We revisit our review of data quality within the context of empirical software engineering ...
Context: The utility of prediction models in empirical software engineering (ESE) is heavily reliant...
Reliable empirical models such as those used in software effort estimation or defect prediction are ...
Abstract. Data collection and analysis are key artifacts in any software engi-neering experiment. Ho...
Data is a cornerstone of empirical software engineering (ESE) research and practice. Data underpin n...
Since its inception as a recognized sub-discipline, empirical software engineering (ESE) has been pl...
Data Quality is a major stake for large organizations and software companies are proposing increas...
Although contemporary research relies to a large extent on data, data quality in Information Systems...
Software quality is explicitvproperty which determines what sort of standards software ought to have...
Existing methodologies for identifying dataquality problems are typically user-centric, where dataqu...
Software is playing a crucial role in modern societies. The demand for software quality is increasin...
Background--Self-evidently empirical analyses rely upon the quality of their data. Likewise, replica...
Large public data sets on software evolution promise great value to both researchers and practitione...
The quality of data is important in research working with data sets because poor data quality may le...
OBJECTIVE - to assess the extent and types of techniques used to manage quality within software engi...
Context: We revisit our review of data quality within the context of empirical software engineering ...
Context: The utility of prediction models in empirical software engineering (ESE) is heavily reliant...
Reliable empirical models such as those used in software effort estimation or defect prediction are ...
Abstract. Data collection and analysis are key artifacts in any software engi-neering experiment. Ho...
Data is a cornerstone of empirical software engineering (ESE) research and practice. Data underpin n...
Since its inception as a recognized sub-discipline, empirical software engineering (ESE) has been pl...
Data Quality is a major stake for large organizations and software companies are proposing increas...
Although contemporary research relies to a large extent on data, data quality in Information Systems...
Software quality is explicitvproperty which determines what sort of standards software ought to have...
Existing methodologies for identifying dataquality problems are typically user-centric, where dataqu...
Software is playing a crucial role in modern societies. The demand for software quality is increasin...
Background--Self-evidently empirical analyses rely upon the quality of their data. Likewise, replica...
Large public data sets on software evolution promise great value to both researchers and practitione...