Many applications have used machine learning as a tool to detect malware. These applications take in raw or processed binary data to feed neural network models to classify benign or malicious files. Even though this approach has proved effective against dynamic changes, such as encrypting, obfuscating and packing techniques, it is vulnerable to specific evasion attacks to where that small changes to the input data cause misclassification at test time. In this paper, I propose MDEA, an Adversarial Malware Detection model that combines a neural network and evolutionary optimization attack samples to make the network robust against evasion attacks. By retraining the model with the evolved malware samples, network performance improves a...
Dissertation presented as the partial requirement for obtaining a Master's degree in Data Science a...
Biomedical imaging allows doctors to examine the condition of a patient’s organs or tissues without ...
Epilepsy is a kind of chronic brain disfunction, manifesting as recurrent seizures which is caused b...
Many applications have used machine learning as a tool to detect malware. These applications take i...
With the increased ease in cloud deployment platforms, web applications have become an easy target f...
The growth of android applications is causing a threat and a serious issue towards Android’s securit...
Metamorphic viruses mutate their own code to produce viral copies which are syntactically different ...
Machine learning (ML) has come to be widely used in a broad array of settings, including important s...
We investigated how well finger movements can be decoded from electroencephalography (EEG) signals. ...
Memory corruptions are a major part of security attacks observed nowadays. Many protection mechanis...
Despite the breakthroughs in machine learning, most classifiers are not robust against adversarial a...
Insider threat problems are widespread in industry today. They have resulted in huge losses to orga...
Thesis (Master) -- University of Cyprus, Faculty of Pure and Applied Sciences, Department of Compute...
A Novelty Detection Approach to Seizure Analysis from Intracranial EEG Andrew B. Gardner 146 p...
To address the shortcomings of currently available genome editing and in vivo directed evolution tec...
Dissertation presented as the partial requirement for obtaining a Master's degree in Data Science a...
Biomedical imaging allows doctors to examine the condition of a patient’s organs or tissues without ...
Epilepsy is a kind of chronic brain disfunction, manifesting as recurrent seizures which is caused b...
Many applications have used machine learning as a tool to detect malware. These applications take i...
With the increased ease in cloud deployment platforms, web applications have become an easy target f...
The growth of android applications is causing a threat and a serious issue towards Android’s securit...
Metamorphic viruses mutate their own code to produce viral copies which are syntactically different ...
Machine learning (ML) has come to be widely used in a broad array of settings, including important s...
We investigated how well finger movements can be decoded from electroencephalography (EEG) signals. ...
Memory corruptions are a major part of security attacks observed nowadays. Many protection mechanis...
Despite the breakthroughs in machine learning, most classifiers are not robust against adversarial a...
Insider threat problems are widespread in industry today. They have resulted in huge losses to orga...
Thesis (Master) -- University of Cyprus, Faculty of Pure and Applied Sciences, Department of Compute...
A Novelty Detection Approach to Seizure Analysis from Intracranial EEG Andrew B. Gardner 146 p...
To address the shortcomings of currently available genome editing and in vivo directed evolution tec...
Dissertation presented as the partial requirement for obtaining a Master's degree in Data Science a...
Biomedical imaging allows doctors to examine the condition of a patient’s organs or tissues without ...
Epilepsy is a kind of chronic brain disfunction, manifesting as recurrent seizures which is caused b...