Abstract

Machine learning models have the potential to transform healthcare by enabling the construction of decision support systems.However, a major challenge is the lack of transparency and accountability, as many models do not provide understandable explanations for their recommendations.Explainable Artificial Intelligence (XAI) methods aim to address this challenge by constructing and communicating explanations of how a model works and why it produces a particular output.This can help users evaluate the system and build trust in it, where appropriate.In this paper, we propose a method for explaining the relative rankings of predictions made by an XGBoost model, which involves understanding and comparing multiple predictions together.Our method uses counterfactual examples to show how changing the feature values of an entity can affect its position within the ranking defined by the model.Unlike traditional counterfactual explanations, which aim to find feature value changes that would result in a different predicted class label by meeting a fixed threshold, the proposed approach is unique in that it aims to identify changes that would bring the predictions in line with a dynamic threshold determined by other data items.We demonstrate the effectiveness of our approach in a healthcare triage problem.Our framework for counterfactual explanation provides a powerful tool for understanding the relationships between feature values and model rankings and can help promote transparency and accountability in healthcare decision-making and decision support.

Keywords:
Counterfactual thinking Econometrics Economics Computer science Psychology Social psychology

Metrics

2
Cited By
0.65
FWCI (Field Weighted Citation Impact)
25
Refs
0.68
Citation Normalized Percentile
Is in top 1%
Is in top 10%

Citation History

Topics

Multi-Criteria Decision Making
Social Sciences →  Decision Sciences →  Management Science and Operations Research
Game Theory and Voting Systems
Social Sciences →  Economics, Econometrics and Finance →  Economics and Econometrics

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