Authors
Chani Jindal, Christopher Salls, Hojjat Aghakhani, Keith Long, Christopher Kruegel, Giovanni Vigna
Publication date
2019/12/9
Book
Proceedings of the 35th Annual Computer Security Applications Conference
Pages
444-455
Description
Malware detection plays a vital role in computer security. Modern machine learning approaches have been centered around domain knowledge for extracting malicious features. However, many potential features can be used, and it is time consuming and difficult to manually identify the best features, especially given the diverse nature of malware.
In this paper, we propose Neurlux, a neural network for malware detection. Neurlux does not rely on any feature engineering, rather it learns automatically from dynamic analysis reports that detail behavioral information. Our model borrows ideas from the field of document classification, using word sequences present in the reports to predict if a report is from a malicious binary or not. We investigate the learned features of our model and show which components of the reports it tends to give the highest importance. Then, we evaluate our approach on two different datasets …
Total citations
20202021202220232024515241711
Scholar articles
C Jindal, C Salls, H Aghakhani, K Long, C Kruegel… - Proceedings of the 35th Annual Computer Security …, 2019