Behavioral Malware Detection in Delay Tolerant Networks - 2014 PROJECT TITLE :Behavioral Malware Detection in Delay Tolerant Networks - 2014ABSTRACT:The delay-tolerant-network (DTN) model is becoming a viable Communication alternative to the traditional infrastructural model for modern mobile consumer electronics equipped with short-range Communication technologies such as Bluetooth, NFC, and Wi-Fi Direct. Proximity malware is a class of malware that exploits the opportunistic contacts and distributed nature of DTNs for propagation. Behavioral characterization of malware is an effective alternative to pattern matching in detecting malware, especially when dealing with polymorphic or obfuscated malware. In this paper, we first propose a general behavioral characterization of proximity malware which based on naive Bayesian model, which has been successfully applied in non-DTN settings such as filtering email spams and detecting botnets. We identify two unique challenges for extending Bayesian malware detection to DTNs ("insufficient evidence versus evidence collection risk" and "filtering false evidence sequentially and distributedly"), and propose a simple yet effective method, look ahead, to address the challenges. Furthermore, we propose two extensions to look ahead, dogmatic filtering, and adaptive look ahead, to address the challenge of "malicious nodes sharing false evidence." Real mobile network traces are used to verify the effectiveness of the proposed methods. Did you like this research project? To get this research project Guidelines, Training and Code... Click Here facebook twitter google+ linkedin stumble pinterest A Stochastic Model to Investigate Data Center Performance and QoS in IaaS Cloud Computing Systems - 2014 CLOUDQUAL A Quality Model for Cloud Services - 2014