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Keywords: supervised learning
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Journal Articles
Publisher: ASME
Article Type: Research Papers
Letters Dyn. Sys. Control. April 2023, 3(2): 021009.
Paper No: ALDSC-23-1043
Published Online: October 25, 2023
... are Lagrangian multipliers corresponding to x i feature vector, b is the intercept term, and C is a penalty factor on outliers. K ( x i , x ) is a kernel function, which in this case is a Gaussian RBF. Table 4 shows train–test accuracies of different supervised learning models...