Hand Written digit recognition by loading datasets from sklearn library
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Updated
Jul 6, 2020 - Jupyter Notebook
Hand Written digit recognition by loading datasets from sklearn library
A multi-class classification problem where the objective is to read a question posted on the popular reference website, StackOverflow and predict the primary topics it deals with, i.e. tags which the question will be associated with.
Here we built a multinomial logistic regression classifier with scikit-learn. It takes numerical data of a bean an predicts which class does it belong to.
Multiclass Logistic, Classification Pipeline, Cross Validation, Gradient Descent, Regularization
Tensorflow codes written as part of Advanced Machine Learning Course Work
Wine Name Recognition using Logistic Regression
Employee Task management and review system for EinNell Expound Hackathon 2019
The project focuses on sentiment analysis of Coronavirus tweets NLP - Text Classification kaggle dataset
💵Model Peruvian Bills (MLR, Mask, Inceptionv2) RCNN💶
Multi class and Binary Classification through Logistic Regression and SVM
An NLP model that can predict the probability for each type of toxicity of comments.
A multi class persian text classification using logistic regression
Implementation of Trust Region and Gradient Descent methods for Multinomial Regression
Image Recognition using Python on MNIST dataset with the help of CNN, Multiclass Logistic Regression and SGD
Multiclass logistic regression implementation from scratch
Image Classification, Image Feature Extraction, CNNs, Finetuning, Resnet18, Torchvision, Multi-Class Logistic Regression
Machine Learning course instructed by Dr. Riahi, Fall 2023, Shahid Beheshti University
My implementation of homework 2 for the Machine Learning class in NCTU (course number 5088).
Implementation and analysis of core Machine Learning Algorithms from scratch.
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