Abstract: A threat detection system for detecting malware can automatically decide, without manual expert-level interaction, the best set of features on which to train a classifier, which can result in the automatic creation of a signature-less malware detection engine. The system can use a combination of execution graphs, anomaly detection and automatic feature pruning. Execution graphs can provide a much richer structure of runtime execution behavior than conventional flat execution trace files, allowing the capture of interdependencies while preserving attribution (e.g., D happened because of A followed by B followed by C). Performing anomaly detection on this runtime execution behavior can provide higher order knowledge as to what behaviors are anomalous or not among the sample files. During training the system can automatically prune the features on which a classifier is trained based on this higher order knowledge without any manual intervention until a desired level of accuracy is achieved.
Type:
Grant
Filed:
July 6, 2020
Date of Patent:
November 21, 2023
Assignee:
ThreatTrack Security, Inc.
Inventors:
Paul Apostolescu, Melvin Antony, Aboubacar Toure, Jeff Markey, Prathap Adusumilli
Abstract: A threat detection system for detecting malware can automatically decide, without manual expert-level interaction, the best set of features on which to train a classifier, which can result in the automatic creation of a signature-less malware detection engine. The system can use a combination of execution graphs, anomaly detection and automatic feature pruning. Execution graphs can provide a much richer structure of runtime execution behavior than conventional flat execution trace files, allowing the capture of interdependencies while preserving attribution (e.g., D happened because of A followed by B followed by C). Performing anomaly detection on this runtime execution behavior can provide higher order knowledge as to what behaviors are anomalous or not among the sample files. During training the system can automatically prune the features on which a classifier is trained based on this higher order knowledge without any manual intervention until a desired level of accuracy is achieved.
Type:
Grant
Filed:
March 16, 2015
Date of Patent:
July 7, 2020
Assignee:
Threattrack Security, Inc.
Inventors:
Paul Apostolescu, Melvin Antony, Aboubacar Toure, Jeff Markey, Prathap Adusumilli
Abstract: A threat detection system for detecting malware can automatically decide, without manual expert-level interaction, the best set of features on which to train a classifier, which can result in the automatic creation of a signature-less malware detection engine. The system can use a combination of execution graphs, anomaly detection and automatic feature pruning. Execution graphs can provide a much richer structure of runtime execution behavior than conventional flat execution trace files, allowing the capture of interdependencies while preserving attribution (e.g., D happened because of A followed by B followed by C). Performing anomaly detection on this runtime execution behavior can provide higher order knowledge as to what behaviors are anomalous or not among the sample files. During training the system can automatically prune the features on which a classifier is trained based on this higher order knowledge without any manual intervention until a desired level of accuracy is achieved.
Type:
Application
Filed:
March 16, 2015
Publication date:
September 22, 2016
Applicant:
THREATTRACK SECURITY, INC.
Inventors:
Paul APOSTOLESCU, Melvin ANTONY, Aboubacar TOURE, Jeff MARKEY