International audienceAbstract. The number of malicious software (malware) is growing out of control. Syntactic signature based detection cannot cope with such growth and manual construction of malware signature databases needs to be replaced by computer learning based approaches. Currently, a single modern signature capturing the semantics of a malicious behavior can be used to replace an arbitrarily large number of old-fashioned syntactical signatures. However teaching computers to learn such behaviors is a challenge. Existing work relies on dynamic analysis to extract malicious behaviors, but such technique does not guarantee the coverage of all behaviors. To sidestep this limitation we show how to learn malware signatures using static r...
Researchers employ behavior based malware detection models that depend on API tracking and analyzing...
AbstractThe number of malware is increasing rapidly regardless of the common use of anti-malware sof...
Malware programs, such as viruses, worms, Trojans, etc., are a worldwide epidemic in the digital wor...
International audienceAbstract. The number of malicious software (malware) is growing out of control...
International audienceMost of malware detectors are based on syntactic signatures that identify know...
Abstract. The underground malware-based economy is flourishing and it is ev-ident that the classical...
Malware is a program with malicious intent that has the potential to harm the machine on which it ex...
We present an approach for proactive malware detection by working on an abstract representation of a...
International audienceThis tutorial presents and motivates various malware detection tools and illus...
Traditional way to detect malicious software is based on signature matching. However, signature matc...
There exist different methods of identifying malware, and widespread method is the one found in almo...
Malware detection and malware construction are evolving in parallel. As malware authors incorporate ...
The continuous growth of malware presents a problem for internet computing due to increasingly sophi...
Over the past twenty-five years malicious software has evolved from a minor annoyance to a major sec...
AbstractMetamorphic malware are the most challenging threat in digital world, which are quite advanc...
Researchers employ behavior based malware detection models that depend on API tracking and analyzing...
AbstractThe number of malware is increasing rapidly regardless of the common use of anti-malware sof...
Malware programs, such as viruses, worms, Trojans, etc., are a worldwide epidemic in the digital wor...
International audienceAbstract. The number of malicious software (malware) is growing out of control...
International audienceMost of malware detectors are based on syntactic signatures that identify know...
Abstract. The underground malware-based economy is flourishing and it is ev-ident that the classical...
Malware is a program with malicious intent that has the potential to harm the machine on which it ex...
We present an approach for proactive malware detection by working on an abstract representation of a...
International audienceThis tutorial presents and motivates various malware detection tools and illus...
Traditional way to detect malicious software is based on signature matching. However, signature matc...
There exist different methods of identifying malware, and widespread method is the one found in almo...
Malware detection and malware construction are evolving in parallel. As malware authors incorporate ...
The continuous growth of malware presents a problem for internet computing due to increasingly sophi...
Over the past twenty-five years malicious software has evolved from a minor annoyance to a major sec...
AbstractMetamorphic malware are the most challenging threat in digital world, which are quite advanc...
Researchers employ behavior based malware detection models that depend on API tracking and analyzing...
AbstractThe number of malware is increasing rapidly regardless of the common use of anti-malware sof...
Malware programs, such as viruses, worms, Trojans, etc., are a worldwide epidemic in the digital wor...