首页|Recent Findings from University of Strathclyde Highlight Research in Machine Learning (Machine learning explanations by design: a case study explaining the predicted degradation of a roto-dynamic pump)

Recent Findings from University of Strathclyde Highlight Research in Machine Learning (Machine learning explanations by design: a case study explaining the predicted degradation of a roto-dynamic pump)

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Fresh data on artificial intelligence are presented in a new report. According to news originating from Glasgow, United Kingdom, by NewsRx correspondents, research stated, “The field of explainable Artificial Intelligence (AI) has gained growing attention over the last few years due to the potential for making accurate data-based predictions of asset health.” Our news reporters obtained a quote from the research from University of Strathclyde: “One of the current research aims in AI is to address challenges associated with adopting machine learning (ML) (i.e., data-driven) AI that is, understanding how and why ML predictions are made. Despite ML models successfully providing accurate predictions in many applications, such as condition monitoring, there are still concerns about the transparency of the prediction-making process. Therefore, ensuring that the models used are explainable to human users is essential to build trust in the approaches proposed. Consequently, AI and ML practitioners need to be able to evaluate any available eXplainable AI (XAI) tools’ suitability for their intended domain and end users, while simultaneously being aware of the tools’ limitations. This paper provides insight into various existing XAI approaches and their limitations to be considered by practitioners in condition monitoring applications during the design process for an MLbased prediction. The aim is to assist practitioners in engineering applications in building interpretable and explainable models intended for end users who wish to improve a system’s reliability and help users make better-informed decisions based upon a predictive ML algorithm output.”

University of StrathclydeGlasgowUnited KingdomEuropeCyborgsEmerging TechnologiesMachine Learning

2024

Robotics & Machine Learning Daily News

Robotics & Machine Learning Daily News

ISSN:
年,卷(期):2024.(Feb.9)