detalle del documento
IDENTIFICACIÓN

oai:arXiv.org:2408.09217

Tema
Computer Science - Cryptography an...
Autor
Gysel, Philipp Wüest, Candid Nwafor, Kenneth Jašek, Otakar Ustyuzhanin, Andrey Divakaran, Dinil Mon
Categoría

Computer Science

Año

2024

fecha de cotización

11/9/2024

Palabras clave
dataset
Métrico

Resumen

Securing endpoints is challenging due to the evolving nature of threats and attacks.

With endpoint logging systems becoming mature, provenance-graph representations enable the creation of sophisticated behavior rules.

However, adapting to the pace of emerging attacks is not scalable with rules.

This led to the development of ML models capable of learning from endpoint logs.

However, there are still open challenges: i) malicious patterns of malware are spread across long sequences of events, and ii) ML classification results are not interpretable.

To address these issues, we develop and present EagleEye, a novel system that i) uses rich features from provenance graphs for behavior event representation, including command-line embeddings, ii) extracts long sequences of events and learns event embeddings, and iii) trains a lightweight Transformer model to classify behavior sequences as malicious or not.

We evaluate and compare EagleEye against state-of-the-art baselines on two datasets, namely a new real-world dataset from a corporate environment, and the public DARPA dataset.

On the DARPA dataset, at a false-positive rate of 1%, EagleEye detects $\approx$89% of all malicious behavior, outperforming two state-of-the-art solutions by an absolute margin of 38.5%.

Furthermore, we show that the Transformer's attention mechanism can be leveraged to highlight the most suspicious events in a long sequence, thereby providing interpretation of malware alerts.

;Comment: Accepted as research paper at eCrime 2024; update affiliations

Gysel, Philipp,Wüest, Candid,Nwafor, Kenneth,Jašek, Otakar,Ustyuzhanin, Andrey,Divakaran, Dinil Mon, 2024, EagleEye: Attention to Unveil Malicious Event Sequences from Provenance Graphs

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