--- license: mit --- # MADAR: Efficient Continual Learning for Malware Analysis with Diversity-Aware Replay This dataset is released in support of the paper: > **MADAR: Efficient Continual Learning for Malware Analysis with Diversity-Aware Replay** > Mohammad Saidur Rahman, Scott Coull, Qi Yu, Matthew Wright > This paper is published at the Conference on Applied Machine Learning for Information (CAMLIS) 2025. > MADAR is a benchmark suite for evaluating continual learning methods in malware classification. It includes realistic data distribution shifts and supports scenarios such as Domain-Incremental Learning (Domain-IL) and Class-Incremental Learning (Class-IL). The dataset includes curated samples from two primary sources: - **EMBER-Domain**: Derived from the EMBER dataset of Windows PE files. - **AZ-Domain**: Derived from the AndroZoo dataset of Android APKs. --- ## Dataset Sources ### EMBER-Domain Curated from the EMBER dataset: > Hyrum S. Anderson and Phil Roth > *Ember: An open dataset for training static PE malware machine learning models* > arXiv preprint [arXiv:1804.04637](https://arxiv.org/abs/1804.04637), 2018 ### AZ-Domain Curated from the AndroZoo dataset: > Kevin Allix, Tegawendé F. Bissyandé, Jacques Klein, Yves Le Traon > *AndroZoo: Collecting Millions of Android Apps for the Research Community* > International Conference on Mining Software Repositories (MSR), 2016 > Marco Alecci, Pedro Jesús Ruiz Jiménez, Kevin Allix, Tegawendé F. Bissyandé, Jacques Klein > *AndroZoo: A Retrospective with a Glimpse into the Future* > International Conference on Mining Software Repositories (MSR), 2024 --- ## License This dataset is released under the MIT License. --- ## Citation If you use MADAR in your work, please cite: ```bibtex @InProceedings{pmlr-v299-rahman25a, title = {MADAR: Efficient Continual Learning for Malware Analysis with Distribution-Aware Replay}, author = {Rahman, Mohammad Saidur and Coull, Scott and Yu, Qi and Wright, Matthew}, booktitle = {Proceedings of the 2025 Conference on Applied Machine Learning for Information Security}, pages = {265--291}, year = {2025}, editor = {Raff, Edward and Rudd, Ethan M.}, volume = {299}, series = {Proceedings of Machine Learning Research}, month = {22--24 Oct}, publisher = {PMLR}, url = {https://proceedings.mlr.press/v299/rahman25a.html}, }