nxs5899 / Multi-Class-Text-Classification----Random-Forest
this machine learning program is designed to classify multi-class categories of the text. it can be tested on any type of textual datasets. the size of the dataset this program was tested is about 3500 commit messages with 5 different labels. the classifier was evaluated by the claculated precision of 0.96, and recall of 0.94.
☆18Updated 5 years ago
Related projects ⓘ
Alternatives and complementary repositories for Multi-Class-Text-Classification----Random-Forest
- TensorFlow 2.0 + Keras guide by François Chollet for deep learning researchers.☆15Updated 5 years ago
- ☆22Updated 6 years ago
- Follow the Lumiata Tech Blog on Medium!☆21Updated last year
- Tips for Advanced Feature Engineering☆52Updated 4 years ago
- The repository of the book: Deep Learning with Python by Francois Chollet☆16Updated 5 years ago
- Hands-on NLP with NLTK and scikit-learn[video], published by Packt☆34Updated 7 months ago
- A machine learning algorithm written to predict severity of insurance claim☆19Updated 8 years ago
- Flask API to productize a document classification model. Classification model was built using Keras with tensorflow backend☆27Updated 4 years ago
- Contains code and presentation for my interactive hack session, 'Effective Feature Engineering: A Structured Approach to Building Better …☆30Updated 3 years ago
- Text Imputation (Automatic Sentence Completion) using RNNs☆10Updated 5 years ago
- Implementation of Spark code in Jupyter notebook. Topics include: RDDs and DataFrame, exploratory data analysis (EDA), handling multiple …☆28Updated 4 years ago
- Jupyter Notebooks with Titanic Classification using Decision Trees and Random Forest☆11Updated 7 years ago
- Synthetic data generation for graph ML experiments☆23Updated 3 years ago
- Implementation of TF-IDF from scratch in Python☆105Updated 6 years ago
- Building Recommendation Systems with Python [Video], by Packt Publishing☆88Updated last year
- Kaggle Toxic Comments Challenge☆109Updated 6 years ago
- Notebooks for the ValleyML Bootcamp (Aug 2019) "Statistical methods for data science"☆10Updated 5 years ago
- ☆27Updated 6 years ago
- Notes from Stanford NLP class☆24Updated 11 years ago
- How to do data science with Optimus, Spark and Python.☆18Updated 5 years ago
- The repository for the course in Udemy☆17Updated 5 years ago
- Essential about fastText architecture, cleaning, upsampling and sentiments for tweets.☆28Updated 3 years ago
- A Placeholder of all the scripts & notebooks which I'll be using for GA Sessions☆31Updated 5 years ago
- Build a flask app to server a machine learning model as a RESTful web service☆38Updated 7 years ago
- Small example on how you can detect multicollinearity☆13Updated 3 years ago
- Source Code for 'Advanced Data Analytics Using Python' by Sayan Mukhopadhyay☆68Updated 6 years ago
- Baseline Python Scripts for Popular Kaggle Competitions☆17Updated 2 years ago
- Data Science and Machine Learning with Python - Hands On from Udemy☆14Updated 7 years ago
- Natural Language Processing☆28Updated 8 months ago
- Spark NLP for Streamlit☆15Updated 3 years ago