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Difference Boosting Neural Network Implementation

Project description

DBNN (Difference Boosting Neural Network)

A GPU-optimized implementation of Difference Boosting Neural Networks for classification tasks.

Usage

  1. Create a configuration file <dataset_name>.conf in your working directory:

{ "file_path": "your_data.csv", "target_column": "your_data_target_name", "separator": ",", "has_header": true, "likelihood_config": { "feature_group_size": 2, "max_combinations": 1000 } }

Installation

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dbnn-4.7.3.tar.gz (17.0 kB view details)

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