Animates the SVM Decision Boundary Hyperplane on the Iris data
Repository consists of a script file, hyperplane generator function and the gif file.
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Script File: Loads, normalises, and organises the Iris dataset from Sklearn package. Then generates an SVM model. Rather than feeding all the data, it dynamically samples into the training set one-by-one to see how training accuracy and the decision boundary hyperplane parameters vary over time. Finally it animates the varying parameters and saves in a gif file.
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Hyperplane generator: A function to generate SVM decision boundary hyperplane
Following animation is generated by the script file, samples with black edges are the support vectors:
Below animation compares the learning paths of Radial Basis Function (RBF) and Linear kernels. No parameter tuning was made, default values of C=1, gamma="Auto" are used: