Research Grant
[Cite as https://purl.org/au-research/grants/arc/DP210100227]Researchers: Gleb Beliakov (Chief Investigator) , Marek Gagolewski (Chief Investigator) , Prof Gleb Beliakov (Chief Investigator) , Simon James (Chief Investigator) , Prof ENRIQUE HERRERA-VIEDMA (Partner Investigator)
Brief description Beyond black-box models: interaction in eXplainable Artificial Intelligence. This project addresses a key issue in automated decision making: explaining how a decision was reached by a computer system to its users. Its aim is to progress towards a new generation of explainable decision models, which would match the performance of current black-box systems while at the same time allow for transparency and detailed interpretation of the underlying logic. This project expects to generate new knowledge in modelling interdependencies of decision criteria using recent advances in the theory of capacities. The expected outcomes are sophisticated but tractable models in which mutual dependencies of decision rules and criteria are treated explicitly and can be thoroughly evaluated.
Funding Amount $357,735
Funding Scheme Discovery Projects
- PURL : https://purl.org/au-research/grants/arc/DP210100227
- ARC : DP210100227