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|a Machine Learning for Data Science ;
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|a Academic, Chirag Shah PhD.
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|a Dr. Chirag Shah, PhD, explains how to use Support Vector Machine (SVM) and the "svm()" function in R to find the best model for the data, illustrated by a visual comparison of linear regression, basic SVM, and tuned-SVM results.
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