Abstract

Recent advances in artificial intelligence (AI) have led to its widespread industrial adoption, with machine learning systems demonstrating superhuman performance in a significant number of tasks. However, this surge in performance, has often been achieved through increased model complexity, turning such systems into “black box” approaches and causing uncertainty regarding the way they operate and, ultimately, the way that they come to decisions. This ambiguity has made it problematic for machine learning systems to be adopted in sensitive yet critical domains, where their value could be immense, such as healthcare. As a result, scientific interest in the field of Explainable Artificial Intelligence (XAI), a field that is concerned with the development of new methods that explain and interpret machine learning models, has been tremendously reignited over recent years. This study focuses on machine learning interpretability methods; more specifically, a literature review and taxonomy of these methods are presented, as well as links to their programming implementations, in the hope that this survey would serve as a reference point for both theorists and practitioners.

Keywords

InterpretabilityArtificial intelligenceComputer scienceMachine learningAmbiguityField (mathematics)ImplementationBlack boxManagement scienceData scienceSoftware engineeringEngineering

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Publication Info

Year
2020
Type
review
Volume
23
Issue
1
Pages
18-18
Citations
2396
Access
Closed

Social Impact

Social media, news, blog, policy document mentions

Citation Metrics

2396
OpenAlex
58
Influential
2060
CrossRef

Cite This

Pantelis Linardatos, Vasilis Papastefanopoulos, Sotiris Kotsiantis (2020). Explainable AI: A Review of Machine Learning Interpretability Methods. Entropy , 23 (1) , 18-18. https://doi.org/10.3390/e23010018

Identifiers

DOI
10.3390/e23010018
PMID
33375658
PMCID
PMC7824368

Data Quality

Data completeness: 81%