Classification of Malware
Details
Malware (Malicious Software) has become one of the major threats to today s computing world. Although Antivirus programs provide primary line of defense and detect previously known malware, they, along with other detection mechanisms falling short of detecting present day new and unknown complex malware. In this work, a new approach to detect malware, which uses reverse engineering and machine learning techniques was proposed and implemented. While Reverse Engineering was used to analyze malware, genuine software and extract important features and construct datasets from those features, machine learning techniques were used to build classification models, which would classify a new executable as either malware or genuine software.
Autorentext
The author received his bachelor s degree from JNT University, Hyderabad and master s degree from The University of Akron. His area of research is computer security and malware reverse engineering. He is an avid programmer and likes developing computer applications.
Klappentext
Malware (Malicious Software) has become one of the major threats to today s computing world. Although Antivirus programs provide primary line of defense and detect previously known malware, they, along with other detection mechanisms falling short of detecting present day new and unknown complex malware. In this work, a new approach to detect malware, which uses reverse engineering and machine learning techniques was proposed and implemented. While Reverse Engineering was used to analyze malware, genuine software and extract important features and construct datasets from those features, machine learning techniques were used to build classification models, which would classify a new executable as either malware or genuine software.
Weitere Informationen
- Allgemeine Informationen
- Sprache Englisch
- Gewicht 179g
- Untertitel using reverse engineering and machine learning techniques
- Autor Ravindar Reddy Ravula
- Titel Classification of Malware
- Veröffentlichung 30.09.2011
- ISBN 3846505382
- Format Kartonierter Einband
- EAN 9783846505380
- Jahr 2011
- Größe H220mm x B150mm x T7mm
- Herausgeber LAP LAMBERT Academic Publishing
- Anzahl Seiten 108
- GTIN 09783846505380