February 2025
Intermediate to advanced
504 pages
16h 6m
English
In this appendix, we examine classical machine learning algorithms with a more computational nature that we didn’t treat in the book because they are less frequently used nowadays and are considered outdated compared to decision tree ensembles in most applications. Overall, support vector machines (SVMs) are still a practical machine learning algorithm well suited for high-dimensional, noisy, or small-sized data applications. On the other end, k-nearest neighbors (k-NN) is well suited for running applications where the data has few features, there can be outliers, and it is not necessary to get a high degree of accuracy in predictions. For instance, SVMs can still be used to classify ...
Read now
Unlock full access