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In the past years there has been an increasing interest in explainable AI (XAI), since it can be a potential solution to the performance, ethical and legal concerns of the new obscure complex models such as neural networks. Selecting transparent models over top performing ones can be a better option in terms of both performance and explainability [1]. As such, in this work we use Bayesian networks
Informática, Bayesian networks, Explainable AI, Robustness, Stability
Informática, Bayesian networks, Explainable AI, Robustness, Stability
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