Logo des Repositoriums
 

Explaining Artificial Intelligence with Care

dc.contributor.authorSzepannek, Gero
dc.contributor.authorLübke, Karsten
dc.date.accessioned2023-01-18T13:07:32Z
dc.date.available2023-01-18T13:07:32Z
dc.date.issued2022
dc.description.abstractIn the recent past, several popular failures of black box AI systems and regulatory requirements have increased the research interest in explainable and interpretable machine learning. Among the different available approaches of model explanation, partial dependence plots (PDP) represent one of the most famous methods for model-agnostic assessment of a feature’s effect on the model response. Although PDPs are commonly used and easy to apply they only provide a simplified view on the model and thus risk to be misleading. Relying on a model interpretation given by a PDP can be of dramatic consequences in an application area such as forensics where decisions may directly affect people’s life. For this reason in this paper the degree of model explainability is investigated on a popular real-world data set from the field of forensics: the glass identification database. By means of this example the paper aims to illustrate two important aspects of machine learning model development from the practical point of view in the context of forensics: (1) the importance of a proper process for model selection, hyperparameter tuning and validation as well as (2) the careful used of explainable artificial intelligence. For this purpose, the concept of explainability is extended to multiclass classification problems as e.g. given by the glass data.de
dc.identifier.doi10.1007/s13218-022-00764-8
dc.identifier.pissn1610-1987
dc.identifier.urihttp://dx.doi.org/10.1007/s13218-022-00764-8
dc.identifier.urihttps://dl.gi.de/handle/20.500.12116/40041
dc.publisherSpringer
dc.relation.ispartofKI - Künstliche Intelligenz: Vol. 36, No. 2
dc.relation.ispartofseriesKI - Künstliche Intelligenz
dc.subjectBlack box algorithms
dc.subjectExplainability
dc.subjectForensics
dc.subjectHyperparameter tuning
dc.subjectInterpretable machine learning
dc.subjectMulticlass classification
dc.subjectPartial dependence plots
dc.titleExplaining Artificial Intelligence with Carede
dc.typeText/Journal Article
gi.citation.endPage134
gi.citation.startPage125

Dateien