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Logistic Regression algorithm to classify two classes of 2-D data samples using 1) 2-D feature vector & 2) its mapping to a higher dimensional feature space.

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ML-Logistic-Regression

Logistic Regression algorithm to classify two classes of 2-D data samples using 1) 2-D feature vector & 2) its mapping to a higher dimensional feature space.

The first program implements Logistic Regression to classify two classes of data in data space. It uses fminunc() function to find the optimal coefficients of the model.

The second program implements Logistic Regression. The 2_D feature vector of the data points is first mapped into a polynomial of desired degree, say 6 (which is equivalent to a 28-D feature vector). Enhancing the dimension of feature space helps finding a more sophisticated decision boundary, however it is vulnerable to overfitting. To combat this problem, a regularizer term is included in the cost function. Lambda is the coefficient of regularizer. Small lambda proceeds to create a more complex decision boundary, where more number of training data points classified correct. On the other hand, larger lambda leads to smoother and simpler decision boundary.

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Logistic Regression algorithm to classify two classes of 2-D data samples using 1) 2-D feature vector & 2) its mapping to a higher dimensional feature space.

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