Analyzing the satistics & results of the Canadian Premier League - Dashboards and Stat Tables - MNB - Random Forest
-
Updated
May 3, 2023 - Jupyter Notebook
Analyzing the satistics & results of the Canadian Premier League - Dashboards and Stat Tables - MNB - Random Forest
Disease prediction from patient sentiment using TF-IDF and Multinomial Naive-Bayes
Natural Language Processing (NLP) and web scrapping. The multinomial Naive Bayes classifier is used for the classification.
Web-app that uses Machine Learning to Predict if SMS message is ether Span or Not Span
Revolutionize customer feedback analysis with our NLP Insights Analyzer. Utilize cutting-edge text preprocessing to transform raw reviews into a machine-friendly format. Explore sentiment models, such as Logistic Regression and Naive Bayes, employing cross-validation for model robustness.
Rating: (6/10) The project uses Python libraries and APIs to analyze Reddit data, predict user input, suggest new titles based on cosine similarity, calculate combined scores, and output the best suggestion.
🚀 Developed a Python-based ML model for SMS and Email spam detection using NLP. Achieved high accuracy and precision! 📧🤖🔍 #MachineLearning #NLP #SpamDetection
This repository contains introductory notebooks for Naive bayes algorithm
SMS spam detection using machine learning
Implementation of Drug database with LinearSVC, BernoulliNB, MultinomialNB, LogisticRegression, Perceptron and MLPClassifier models
Sentiment analysis of Election USA 2020
This project used machine learning concept to predict disease on their symptoms
A simple language detection project that uses MultinomialNB model. It has a local application that made with Streamlit.
Recognition of Persomnality Types from Facebook status using Machine Learning
This project employs emotion detection in textual data, specifically trained on Twitter data comprising tweets labeled with corresponding emotions. It seamlessly takes text inputs and provides the most fitting emotion assigned to it. This app has more than 400 visitors!
Add a description, image, and links to the multinomialnb topic page so that developers can more easily learn about it.
To associate your repository with the multinomialnb topic, visit your repo's landing page and select "manage topics."