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, Fosca;
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
Settore INF/01 - Informatica
1st World Conference on eXplainable Artificial Intelligence, xAI 2023
prt
2023
Communications in Computer and Information Science
Springer Science and Business Media Deutschland GmbH
978-3-031-44066-3
978-3-031-44067-0
Data Imputation; Decision-Making; Explainable AI; Local Post-hoc Explanation; Missing Data; Missing Values
   Foundations of Trustworthy AI - Integrating Reasoning, Learning and Optimization
   TAILOR
   European Commission
   Horizon 2020 Framework Programme
   952215

   Science and technology for the explanation of AI decision making
   XAI
   European Commission
   Horizon 2020 Framework Programme
   834756
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11384/137129
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