Skip to content

Classify Kaggle Consumer Finance Complaints into 11 classes. Build the model with CNN (Convolutional Neural Network) and Word Embeddings on Tensorflow.

License

Notifications You must be signed in to change notification settings

jiegzhan/multi-class-text-classification-cnn

Repository files navigation

Project: Classify Kaggle Consumer Finance Complaints

Highlights:

  • This is a multi-class text classification (sentence classification) problem.
  • The purpose of this project is to classify Kaggle Consumer Finance Complaints into 11 classes.
  • The model was built with Convolutional Neural Network (CNN) and Word Embeddings on Tensorflow.
  • Input: consumer_complaint_narrative

    • Example: "someone in north Carolina has stolen my identity information and has purchased items including XXXX cell phones thru XXXX on XXXX/XXXX/2015. A police report was filed as soon as I found out about it on XXXX/XXXX/2015. A investigation from XXXX is under way thru there fraud department and our local police department.\n"
  • Output: product

    • Example: Credit reporting

Train:

  • Command: python3 train.py training_data.file parameters.json
  • Example: python3 train.py ./data/consumer_complaints.csv.zip ./parameters.json

A directory will be created during training, and the trained model will be saved in this directory.

Predict:

Provide the model directory (created when running train.py) and new data to predict.py.

  • Command: python3 predict.py ./trained_model_directory/ new_data.file
  • Example: python3 predict.py ./trained_model_1479757124/ ./data/small_samples.json

Reference:

About

Classify Kaggle Consumer Finance Complaints into 11 classes. Build the model with CNN (Convolutional Neural Network) and Word Embeddings on Tensorflow.

Topics

Resources

License

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published

Contributors 3

  •  
  •  
  •  

Languages