Understanding Association Between Logged Vehicle Data and Vehicle Marketing Parameters: Using Clustering and Rule-Based Machine Learning
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Fredrik Johansson | Reza Khoshkangini | Sepideh Pashami | Oskar Dahl | Sławomir Nowaczyk | Pihl Claes | Sepideh Pashami | Sławomir Nowaczyk | Fredrik Johansson | Reza Khoshkangini | O. Dahl | P. Claes
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