P1: a simple linear regression problem using the basic closed form formula and stochastic gradient descent
P2: binary, one-vs-one and one-vs-all classification with logistic regression, softmax regression
P3: bayesian classification, Naïve bayes classification
P4: kernel density estimation using the following methods: Histogram, Parzen-window, Gaussian kernel and KNN ; and a simple image compression technique using PCA
P5: Kmeans and SVM
P6: Multi‑disease prediction model using improved SVM‑radial bias technique in healthcare monitoring systems
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Topics
rbf-kernel
linear-regression
bayesian-methods
naive-bayes-classifier
logistic-regression
softmax-regression
spam-detection
kmeans-clustering
svm-classifier
stochastic-gradient-descent
kernel-density-estimation
knn-classification
gaussian-kernel
histogram-density-estimation
parzen-window
one-vs-one
one-vs-all
closed-form-solution
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