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Abstract
Malware detection is a critical aspect of information security. One
difficulty that arises is that malware often evolves over time. To maintain
effective malware detection, it is necessary to determine when malware
evolution has occurred so that appropriate countermeasures can be taken. We
perform a variety of experiments aimed at detecting points in time where a
malware family has likely evolved, and we consider secondary tests designed to
confirm that evolution has actually occurred. Several malware families are
analyzed, each of which includes a number of samples collected over an extended
period of time. Our experiments indicate that improved results are obtained
using feature engineering based on word embedding techniques. All of our
experiments are based on machine learning models, and hence our evolution
detection strategies require minimal human intervention and can easily be
automated.