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Dynamic Analysis of Executables to Detect and Characterize Malware

Smith, Michael R.; Ingram, Joey; Lamb, Christopher; Draelos, Timothy; Doak, Justin; Aimone, James; James, Conrad

Malware detection and remediation is an on-going task for computer security and IT professionals. Here, we examine the use of neural algorithms to detect malware using the system calls generated by executables-alleviating attempts at obfuscation as the behavior is monitored. We examine several deep learning techniques, and liquid state machines baselined against a random forest. The experiments examine the effects of concept drift to understand how well the algorithms generalize to novel malware samples by testing them on data that was collected after the training data. The results suggest that each of the examined machine learning algorithms is a viable solution to detect malware-achieving between 90% and 95% class-averaged accuracy (CAA). In real-world scenarios, the performance evaluation on an operational network may not match the performance achieved in training. Namely, the CAA may be about the same, but the values for precision and recall over the malware can change significantly. We structure experiments to highlight these caveats and offer insights into expected performance in operational environments. In addition, we use the induced models to better understand what differentiates malware samples from goodware, which can further be used as a forensics tool to provide directions for investigation and remediation.