Randomised field experiments, such as A/B testing, have long been the gold standard for evaluating software changes. In the automotive domain, running randomised field experiments is not always desired, possible, or even ethical. In the face of such limitations, we develop a framework BOAT (Bayesian causal modelling for ObvservAtional Testing), utilising observational studies in combination with Bayesian causal inference, in order to understand real-world impacts from complex automotive software updates and help software development organisations arrive at causal conclusions. In this study, we present three causal inference models in the Bayesian framework and their corresponding cases to address three commonly experienced challenges of sof...
Standard practice in building models in software engineering normally involves three steps: collecti...
Systematic literature reviews in software engineering are necessary to synthesize evidence from mult...
AbstractThis paper presents Bayesian techniques for conservative claims about software reliability, ...
Randomised field experiments, such as A/B testing, have long been the gold standard for evaluating t...
Randomised field experiments, such as A/B testing, have long been the gold standard for evaluating t...
Context: Online experimentation has long been the gold standard for evaluating software towards the ...
With autonomous driving, the system complexity of vehicles will increase drastically. This requires...
The real-world testing of decisions made using causal machine learning models is an essential prereq...
This paper proposes a Bayesian approach to the quantification of some of the subjectivity that is in...
IEEE Statistics comes in two main flavors: frequentist and Bayesian. For historical and technical re...
This paper introduces an innovative Bayesian machine learning algorithm to draw interpretable infere...
There is abundant observational data in the software engineering domain, whereas running large-scale...
Statistical analysis is the tool of choice to turn data into information and then information into e...
An important decision in software projects is when to stop testing. Decision support tools for this ...
There is an urgent societal need to assess whether autonomous vehicles (AVs) are safe enough. From p...
Standard practice in building models in software engineering normally involves three steps: collecti...
Systematic literature reviews in software engineering are necessary to synthesize evidence from mult...
AbstractThis paper presents Bayesian techniques for conservative claims about software reliability, ...
Randomised field experiments, such as A/B testing, have long been the gold standard for evaluating t...
Randomised field experiments, such as A/B testing, have long been the gold standard for evaluating t...
Context: Online experimentation has long been the gold standard for evaluating software towards the ...
With autonomous driving, the system complexity of vehicles will increase drastically. This requires...
The real-world testing of decisions made using causal machine learning models is an essential prereq...
This paper proposes a Bayesian approach to the quantification of some of the subjectivity that is in...
IEEE Statistics comes in two main flavors: frequentist and Bayesian. For historical and technical re...
This paper introduces an innovative Bayesian machine learning algorithm to draw interpretable infere...
There is abundant observational data in the software engineering domain, whereas running large-scale...
Statistical analysis is the tool of choice to turn data into information and then information into e...
An important decision in software projects is when to stop testing. Decision support tools for this ...
There is an urgent societal need to assess whether autonomous vehicles (AVs) are safe enough. From p...
Standard practice in building models in software engineering normally involves three steps: collecti...
Systematic literature reviews in software engineering are necessary to synthesize evidence from mult...
AbstractThis paper presents Bayesian techniques for conservative claims about software reliability, ...