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Enhancing Utility in Differentially Private Recommendation Data Release via Exponential Mechanism

This is the official repository for the paper Enhancing Utility in Differentially Private Recommendation Data Release with Exponential Mechanism currently under review.

The recommenders' training and evaluation procedures have been developed on the reproducibility framework Elliot, we suggest to refer to the official Github page and documentation.

Table of Contents

Requirements

This software has been executed on the operative system Ubuntu 20.04.

Please have at least Python 3.9.0 installed on your system.

Installation guidelines

You can create the virtual environment with the requirements files included in the repository, as follows:

python3.8 -m venv venv
source venv/bin/activate
pip install --upgrade pip
pip install -r requirements.txt

Datasets

At data/, you may find all the files related to the datasets. Each dataset can be found in data/[DATASET_NAME]/data/dataset.tsv

The datasets used in the paper are Amazon Gift Card, Facebook Books and Yahoo! Movies referred as gift, facebook_books, and yahoo_movies, respectively.

Elliot Configuration Templates

At config_templates/, you may find the Elliot configuration templates used for setting the experiments.

The configuration template used for all the experiments is training.py.

Usage

Here, we describe the steps to reproduce the results presented in the paper.

Preprocessing

Run the data preprocessing step with the following:

python preprocessing.py

This step binarize all the datasets and splits them into train and test sets. The results will be stored in data/[DATASET_NAME] for each dataset.

Generate Datasets with Randomized Response

From the binarized datasets, 500 randomized versions have been generated with the following:

python randomize_split_recommend.py --dataset [DATASET_NAME]

The perturbed dataset will be stored in the directory perturbed_dataset/[DATASET_NAME]_train/0.

For example, if you want to run the script on the Amazon Gift Card dataset

python randomize_split_recommend.py --dataset gift

Each perturbed dataset will be then split in train and validation set, which will be stored in data/[DATASET_NAME]/generated_train/0.

Finally, the recommendation performance for each dataset will be stored in result_collection/[DATASET_NAME]_train/0/.

Select Dataset with Exponential Mechanism

We can run the selection module with the following:

python selection.py --dataset [DATASET_NAME]

where [DATASET_NAME] is the name of the dataset.

The results for each model and dataset will be stored in result_data/[DATASET_NAME]_train/0/[DATASET_NAME]_train_[MODEL_NAME]_nDCGRendle2020.tsv.

Baseline

Here we describe the steps to reproduce the baseline presented in the paper.

Recommendation Baseline

To reproduce the recommendation performance for the original datasets, run:

python baseline.py --dataset [DATASET_NAME]

where [DATASET_NAME] is the name of the dataset.

The result will be stored in data/[DATASET_NAME]/baseline.

Subsample Exponential Mechanism

Run Subsample Exponential Mechanism with:

python subsample.py --dataset [DATASET_NAME]

where [DATASET_NAME] is the name of the dataset.

The result will be stored in results_data/[DATASET_NAME]_train/0/aggregated_results.tsv.

Basic One-Time RAPPOR

To run One-Time RAPPOR, refer to Generate Datasets with Randomized Response.

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