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IMPACT framework, an interpretable multi-target framework for multi-class outputs

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An interpretable model for multi-target predictions with multi-class outputs


Welcome to the official repository for IMPACT – a novel, interpretable model designed for Multi-Target Predictions (MTP) with multi-class outputs. IMPACT extends the Cognitive Diagnosis Bayesian Personalized Ranking framework to effectively handle multi-class prediction tasks. Built primarily in Python using PyTorch, this repository includes the four datasets featured in our publication, along with Jupyter notebooks that allow you to reproduce our experiments and conduct your own analyses.

Installing IMPACT

Directly from pip

pip install impact-liris

Or from source for developers

git clone https://github.com/arthur-batel/IMPACT.git
cd IMPACT
make install
conda activate impact-env
# open one of the notebooks in the experiments/notebook_examples folder

Requirements

IMPACT in few lines of code

from IMPACT import utils, model, dataset

# Set all the required parameters ---------------
config = utils.generate_eval_config(dataset_name="postcovid", learning_rate=0.02026, lambda_=1.2e-5, batch_size=2048, num_epochs=200,
                                    valid_metric='rmse', pred_metrics=['rmse', 'mae'], profile_metrics=['doa', 'pc-er'])

# Read the dataset and the metadata -------------
concept_map, train_data, valid_data, test_data = utils.prepare_dataset(config, i_fold=0)

# Train the model --------------------------------
algo = model.IMPACT(**config)
algo.init_model(train_data, valid_data)
algo.train(train_data, valid_data)

# Test the model --------------------------------
eval_preds = algo.evaluate_predictions(test_data)
eval_profiles = algo.evaluate_profiles(test_data)

print("Evaluation of the predictions :",eval_preds)
print("Evaluation of the profiles :",eval_profiles)

Repository map

  • experiments/ : Contains the jupyter notebooks and datasets to run the experiments of the scientific paper.
    • experiments/ckpt/ : Folder for models parameter saving
    • experiments/datasets/ : Contains the raw and pre-processed datasets, as well as there pre-processing jupyter notebook
    • experiments/embs/ : Folder for user embeddings saving
    • experiments/hyperparam_search/ : Contains the csv files of the optimal hyperparameter for each method (obtained with Tree-structured Parzen Estimator (TPE) sampler)
    • experiments/logs/ : Folder for running logs saving
    • experiments/notebook_example/ : Contains the jupyter notebooks to run the experiments of the scientific paper, including competitors.
    • experiments/preds/ : Folder for predictions saving
    • experiments/tensorboard/ : Folder for tensorboard data saving
  • figs/ : Contains the figures of the paper
  • IMPACT/ : Contains the source code of the IMPACT model
    • IMPACT/dataset/ : Contains the code of the dataset class
    • IMPACT/models/ : Contains the code of the IMPACT model and its abstract class, handling the learning process
    • IMPACT/utils/ : Contains utility functions for logging, complex metric computations, configuration handling, etc.

Authors

Arthur Batel, arthur.batel@insa-lyon.fr, INSA Lyon, LIRIS UMR 5205 FR

Marc Plantevit, marc.plantevit@epita.fr, EPITA Lyon, EPITA Research Laboratory (LRE) FR

Idir Benouaret, idir.benouaret@epita.fr, EPITA Lyon, EPITA Research Laboratory (LRE) FR

Céline Robardet, celine.robardet@insa-lyon.fr, INSA Lyon, LIRIS UMR 5205 FR

Contributor

Lucas Michaëli

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