Provide the automatic differentiation for Likelihood maximization routine
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Updated
Jun 24, 2022 - Python
Provide the automatic differentiation for Likelihood maximization routine
GitHub repository for normal likelihood maximization and plotting in R
Implementing Neural Network on Irish data - evaluating accuracy, Mean Squared Error (MSE), Crossentropy and log-likelihood
Contains work done for NLP Specialization courses from DeepLearning.AI
This code predicts that how many customers having a simmons credit card, debit card,monthly spendings at thier apparel store would buy or not use the coupon sent. Afterwards it would provide a logistic regression model to conclude that to which customers the expensive SImmons Coupons should be sent. So that eventually it would maximize the benef…
A linguistic analysis of the utterances within all the great english language movies
This project demonstrates the segmentation of images using a Gaussian Mixture Model (GMM) and the Expectation-Maximization (EM) algorithm. The project applies these advanced machine learning techniques to segment both grayscale and color images, providing a comprehensive approach to image segmentation.
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