A comparative exploration of SHAP and LIME for enhancing the interpretability of machine learning models in obesity prediction

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dc.date.accessioned 2025-03-28T10:01:59Z
dc.date.available 2025-03-28T10:01:59Z
dc.date.issued 2025-03-18 en
dc.identifier.uri http://hdl.handle.net/20.500.11910/24075
dc.description.abstract In the realm of health-related machine learning classifications, understanding the decisions made by models is of paramount importance. This study presents a comprehensive comparative analysis of two prominent model-agnostic interpretability tools, SHAP (Shapley Additive Explanations) and LIME (Local Interpretable Model-Agnostic Explanations), to illuminate the workings of machine learning models in obesity classification. While powerful machine learning models often operate as “black boxes”, leaving users and stakeholders in the dark about the rationale behind their decisions, SHAP and LIME offer pathways to shed light on the inner workings of these models by unveiling their feature importance and local model behaviour. This study aims to compare the different techniques used in obesity classification and identify their respective strengths and weaknesses. The study found that a family history of diseases like diabetes, high blood pressure, and heart disease are strong predictors of obesity across all classification techniques we considered thus emphasizing the robustness of these factors. Moreover, our analysis showcases the impact of lifestyle factors, such as dietary habits and physical activity, on obesity classification. en
dc.format.medium Print en
dc.publisher Springer en
dc.subject DIETARY HABITS en
dc.subject OBESITY en
dc.subject HEALTH CARE FACILITIES en
dc.subject ARTIFICIAL INTELLIGENCE (AI) en
dc.title A comparative exploration of SHAP and LIME for enhancing the interpretability of machine learning models in obesity prediction en
dc.type Chapter in Monograph en
dc.description.version Y en
dc.ProjectNumber N/A en
dc.BudgetYear 2024/25 en
dc.ResearchGroup Public Health, Societies and Belonging en
dc.SourceTitle Practical statistical learning and data science methods: case studies from LISA 2020 Global Network, USA en
dc.SourceTitle.Editor Kamal, A. en
dc.SourceTitle.Editor Shahid, N. en
dc.SourceTitle.Editor Amir, J. en
dc.SourceTitle.Editor Shah, S.A. en
dc.PlaceOfPublication Switzerland en
dc.ArchiveNumber 9814828 en
dc.PageNumber 253-281 en
dc.outputnumber 15486 en
dc.bibliographictitle Olawale Awe, O., Salako, J., Rodrigues, P.C., Dukhi, N. & Dias, R. (2025) A comparative exploration of SHAP and LIME for enhancing the interpretability of machine learning models in obesity prediction. In: Kamal, A., Shahid, N., Amir, J. & Shah, S.A. (eds).Practical statistical learning and data science methods: case studies from LISA 2020 Global Network, USA. Switzerland: Springer. 253-281. http://hdl.handle.net/20.500.11910/24075 en
dc.publicationyear 2025 en
dc.contributor.author1 Olawale Awe, O. en
dc.contributor.author2 Salako, J. en
dc.contributor.author3 Rodrigues, P.C. en
dc.contributor.author4 Dukhi, N. en
dc.contributor.author5 Dias, R. en


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