Print Email Facebook Twitter Shapley Values: A Comparison of Definitions and Approximation Methods Title Shapley Values: A Comparison of Definitions and Approximation Methods Author de Jong, Jur (TU Delft Electrical Engineering, Mathematics and Computer Science; TU Delft Statistics) Contributor Parolya, N. (mentor) Francke, M.K. (graduation committee) Degree granting institution Delft University of Technology Programme Applied Mathematics | Financial Engineering Date 2021-07-30 Abstract The Shapley value method is an explanatory method that describes the feature attribution of Machine Learning models. There are three different definitions of the Shapley values, namely Conditional Expectation Shapley, Marginal Expectation Shapley and Baseline Shapley. A comparison is made between the three definitions and they are applied to one statistical and two Machine Learning models that predict house transaction prices. Most existing methods to approximate Shapley values assume independence, which is in practice often violated. An existing copula-based method that tries to take into account the dependency is extended to apply to problems with continuous and discrete features. This copula-based method approximates the Shapley values more accurately than other methods. The Conditional Expectation Shapley values give unnatural explanations, therefore other definitions of the Shapley values are more suitable. The Baseline Shapley values seem to be the most promising since there is an accurate and fast approximation method and the B Shapley values are the easiest to interpret. Subject Shapley valuesMachine Learningexplanatory method To reference this document use: http://resolver.tudelft.nl/uuid:f15d2757-0ace-44fc-a053-3410efbf0ca7 Part of collection Student theses Document type master thesis Rights © 2021 Jur de Jong Files PDF Thesis_final.pdf 6.5 MB Close viewer /islandora/object/uuid:f15d2757-0ace-44fc-a053-3410efbf0ca7/datastream/OBJ/view