The University of Sheffield
Browse
1/1
10 files

CITCOM Software Release

Version 2 2024-04-05, 14:32
Version 1 2023-11-15, 12:55
software
posted on 2024-04-05, 14:32 authored by Michael FosterMichael Foster, Andrew ClarkAndrew Clark, Richard SomersRichard Somers, Christopher WildChristopher Wild, Farhad AllianFarhad Allian, Robert HieronsRobert Hierons, Nicholas LatimerNicholas Latimer, David WaggDavid Wagg, Neil WalkinshawNeil Walkinshaw

https://github.com/CITCOM-project/CausalTestingFramework

Causal testing is a causal inference-driven framework for functional black-box testing. This framework utilises graphical causal inference (CI) techniques for the specification and functional testing of software from a black-box perspective. In this framework, we use causal directed acyclic graphs (DAGs) to express the anticipated cause-effect relationships amongst the inputs and outputs of the system-under-test and the supporting mathematical framework to design statistical procedures capable of making causal inferences. Each causal test case focuses on the causal effect of an intervention made to the system-under test. That is, a prescribed change to the input configuration of the system-under-test that is expected to cause a change to some output(s).



History

Ethics

  • There is no personal data or any that requires ethical approval

Policy

  • The data complies with the institution and funders' policies on access and sharing

Sharing and access restrictions

  • The uploaded data can be shared openly

Data description

  • The file formats are open or commonly used

Methodology, headings and units

  • Headings and units are explained in the files

Usage metrics

    IT Services

    Licence

    Exports

    RefWorks
    BibTeX
    Ref. manager
    Endnote
    DataCite
    NLM
    DC