Boosted neural network for tabular data

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Deep LearningXBNet
Overview

XBNet - Xtremely Boosted Network

Boosted neural network for tabular data

XBNet is an open source project which is built with PyTorch which tries to combine tree based paradigm of models with neural networks to create a robust architecture

Features

  • Better performance
  • Faster training and inference speed
  • Easy to implement with rapid prototyping capabilities

Features to be added :

  • Metrics for different requirements
  • Addition of some other types of layers

  • If you have any improvements create an issue and if you want you can also make a pull request for the same


Developed with ❤️ by Tushar Sarkar

Owner
Tushar Sarkar
I love solving problems with data
Tushar Sarkar
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