Statistical analysis is the tool of choice to turn data into information and then information into empirical knowledge. However, the process that goes from data to knowledge is long, uncertain, and riddled with pitfalls. To be valid, it should be supported by detailed, rigorous guidelines that help ferret out issues with the data or model and lead to qualified results that strike a reasonable balance between generality and practical relevance. Such guidelines are being developed by statisticians to support the latest techniques for Bayesian data analysis. In this article, we frame these guidelines in a way that is apt to empirical research in software engineering.To demonstrate the guidelines in practice, we apply them to reanalyze a GitHub...
Frequentist statistical methods, such as hypothesis testing, are standard practices in studies that ...
Bayesian Belief Networks (BBNs) are becoming popular within the Software Engineering research commun...
Randomised field experiments, such as A/B testing, have long been the gold standard for evaluating s...
IEEE Statistics comes in two main flavors: frequentist and Bayesian. For historical and technical re...
Slowly but surely, statistical practices in the empirical sciences are undergoing a complete makeove...
Software engineering research is maturing and papers increasingly support their arguments with empir...
The Bayesian approach to quantifying, analysing and reducing uncertainty in the application of compl...
There has been rapid improvement in the ability to construct software systems, firstly by developing...
Software engineering research is evolving and papers are increasingly based on empirical data from a...
Systematic literature reviews in software engineering are necessary to synthesize evidence from mult...
Constructing an accurate effort prediction model is a challenge in Software Engineering. This paper ...
The history of software metrics is almost as old as the history of software engineering. Yet, the ex...
The ability to reliably predict the end quality of software under development presents a significant...
There is abundant observational data in the software engineering domain, whereas running large-scale...
Constructing an accurate effort prediction model is a challenge in Software Engineering. This paper ...
Frequentist statistical methods, such as hypothesis testing, are standard practices in studies that ...
Bayesian Belief Networks (BBNs) are becoming popular within the Software Engineering research commun...
Randomised field experiments, such as A/B testing, have long been the gold standard for evaluating s...
IEEE Statistics comes in two main flavors: frequentist and Bayesian. For historical and technical re...
Slowly but surely, statistical practices in the empirical sciences are undergoing a complete makeove...
Software engineering research is maturing and papers increasingly support their arguments with empir...
The Bayesian approach to quantifying, analysing and reducing uncertainty in the application of compl...
There has been rapid improvement in the ability to construct software systems, firstly by developing...
Software engineering research is evolving and papers are increasingly based on empirical data from a...
Systematic literature reviews in software engineering are necessary to synthesize evidence from mult...
Constructing an accurate effort prediction model is a challenge in Software Engineering. This paper ...
The history of software metrics is almost as old as the history of software engineering. Yet, the ex...
The ability to reliably predict the end quality of software under development presents a significant...
There is abundant observational data in the software engineering domain, whereas running large-scale...
Constructing an accurate effort prediction model is a challenge in Software Engineering. This paper ...
Frequentist statistical methods, such as hypothesis testing, are standard practices in studies that ...
Bayesian Belief Networks (BBNs) are becoming popular within the Software Engineering research commun...
Randomised field experiments, such as A/B testing, have long been the gold standard for evaluating s...