Missing data are quite common in real scenarios when using Artificial Intelligence (AI) systems for decision-making with tabular data and effectively handling them poses a significant challenge for such systems. While some machine learning models used by AI systems can tackle this problem, the existing literature lacks post-hoc explainability approaches able to deal with predictors that encounter missing data. In this paper, we extend a widely used local model-agnostic post-hoc explanation approach that enables explainability in the presence of missing values by incorporating state-of-the-art imputation methods within the explanation process. Since our proposal returns explanations in the form of feature importance, the user will be aware also of the importance of a missing value in a given record for a particular prediction. Extensive experiments show the effectiveness of the proposed method with respect to some baseline solutions relying on traditional data imputation.

Handling missing values in local post-hoc explainability

Giannotti F;Guidotti R;
2023

Abstract

Missing data are quite common in real scenarios when using Artificial Intelligence (AI) systems for decision-making with tabular data and effectively handling them poses a significant challenge for such systems. While some machine learning models used by AI systems can tackle this problem, the existing literature lacks post-hoc explainability approaches able to deal with predictors that encounter missing data. In this paper, we extend a widely used local model-agnostic post-hoc explanation approach that enables explainability in the presence of missing values by incorporating state-of-the-art imputation methods within the explanation process. Since our proposal returns explanations in the form of feature importance, the user will be aware also of the importance of a missing value in a given record for a particular prediction. Extensive experiments show the effectiveness of the proposed method with respect to some baseline solutions relying on traditional data imputation.
2023
Istituto di Scienza e Tecnologie dell'Informazione "Alessandro Faedo" - ISTI
Inglese
Longo L.
Explainable Artificial Intelligence
xAI 2023 - World Conference on Explainable Artificial Intelligence
256
278
23
978-3-031-44066-3
https://link.springer.com/chapter/10.1007/978-3-031-44067-0_14
26-28/07/2023
Lisbon, Portugal
Explainable AI
Local post-hoc explanation
Decision-making
Missing values
Missing data
Data imputation
Elettronico
4
restricted
Cinquini, M; Giannotti, F; Guidotti, R; Mattei, A
273
info:eu-repo/semantics/conferenceObject
04 Contributo in convegno::04.01 Contributo in Atti di convegno
   Toward AI Systems That Augment and Empower Humans by Understanding Us, our Society and the World Around Us
   Humane AI
   H2020
   820437

   SoBigData++: European Integrated Infrastructure for Social Mining and Big Data Analytics
   SoBigData-PlusPlus
   H2020
   871042

   Science and technology for the explanation of AI decision making
   XAI
   H2020
   834756

   Foundations of Trustworthy AI - Integrating Reasoning, Learning and Optimization
   TAILOR
   H2020
   952215
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/20.500.14243/452252
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