Published May 2, 2026
| Version v2
Dataset
Open
McNdroid tiny for NeurIPS: A Longitudinal Multimodal Benchmark for Robust Drift Detection in Android Malware
Authors/Creators
Description
McNdroid is a large-scale, longitudinal, multimodal Android malware detection dataset designed to benchmark concept drift robustness. It spans samples collected from 2013 to 2025 and provides three complementary modalities: static feature vectors, API call graphs (GML), and JSON-based behavioral representations. The dataset also includes a rich metadata CSV and per-vendor family-level verdicts, supporting fine-grained label analysis and multi-label learning.
Files
data_feature.zip
Files
(986.7 MB)
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