Recognise Handwritten Digits MNIST data set using Neural Networks and Multi class Classification for Logisitc Regression
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Updated
May 13, 2019 - MATLAB
Recognise Handwritten Digits MNIST data set using Neural Networks and Multi class Classification for Logisitc Regression
Classification and Auto-Tagging of Stack Exchange Questions
Simple Codes
Using NLP or prediction of stack overflow posts using linear models for multi-class classification
A PySpark MLlib classification model to classify songs based on a number of characteristics into a set of 23 electronic genres.
Harry Potter and a Data Scientist: Write a multi-class classifier using gradient descent optimization algorithm to replace the bewitched Sorting Hat and save Hogwarts! 🎩🧙♂️
Classifying a tweet as positive, neutral, or negative sentiment using Natural Language Processing (CBOW approaches) and Traditional Machine Learning Algorithms.
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.
A machine learning model that predicts tags for a given question and body.
This is a Machine learning project for screening of resumes based on the type of job and the content with the help of NLP techniques.
Binary Classification Models with pySpark in Apache Spark
Contains models implemented from scratch and a project implemented from end-to-end
Using ML Classification to predict customer segmentation groups
Реализация метода опорных векторов для классификации данных
Base de dados que será utilizada para treinamento de uma rede perceptron.
Logistic regression model to sort Hogwarts students into their perspective houses based on their performance in classes.
Tag Prediction Model for the Doubt Asking Platform. Suggests tags based on the user input question and question description.
Cancer prediction system using machine learning algorithm and training the model on different gene expression of cancer
This GitHub repository provides an implementation of the paper "MAGNET: Multi-Label Text Classification using Attention-based Graph Neural Network" . MAGNET is a state-of-the-art approach for multi-label text classification, leveraging the power of graph neural networks (GNNs) and attention mechanisms.
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