Reproducibility package for the paper:
Lucas Maystre, Nagarjuna Kumarappan, Judith Bütepage, Mounia Lalmas. Collaborative Classification from Noisy Labels, AISTATS 2021.
This repository contains
- a reference implementation of the algorithms presented in the paper, and
- Jupyter notebooks enabling the reproduction of some of the experiments.
Our codebase was tested with Python 3.8. The following libraries are required:
numpy(tested with version 1.19.2)scipy(tested with version 1.6.2)matplotlib(tested with version 3.3.4)numba(tested with version 0.53.1)notebook(tested with version 6.3.0)
To get started, follow these steps:
- Clone the repo locally with:
git clone https://github.com/spotify-research/collabclass.git - Move to the repository:
cd collabclass - Install the dependencies:
pip install -r requirements.txt - Install the package:
pip install -e lib/ - Move to the notebook folder:
cd notebooks - Start a notebook server:
jupyter notebok
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