Biblio
The wireless boundaries of networks are becoming increasingly important from a security standpoint as the proliferation of 802.11 WiFi technology increases. Concurrently, the complexity of 802.11 access point implementation is rapidly outpacing the standardization process. The result is that nascent wireless functionality management is left up to the individual provider's implementation, which creates new vulnerabilities in wireless networks. One such functional improvement to 802.11 is the virtual access point (VAP), a method of broadcasting logically separate networks from the same physical equipment. Network reconnaissance benefits from VAP identification, not only because network topology is a primary aim of such reconnaissance, but because the knowledge that a secure network and an insecure network are both being broadcast from the same physical equipment is tactically relevant information. In this work, we present a novel graph-theoretic approach to VAP identification which leverages a body of research concerned with establishing community structure. We apply our approach to both synthetic data and a large corpus of real-world data to demonstrate its efficacy. In most real-world cases, near-perfect blind identification is possible highlighting the effectiveness of our proposed VAP identification algorithm.
The unauthorized access or theft of sensitive, personal information is becoming a weekly news item. The illegal dissemination of proprietary information to media outlets or competitors costs industry untold millions in remediation costs and losses every year. The 2013 data breach at Target, Inc. that impacted 70 million customers is estimated to cost upwards of 1 billion dollars. Stolen information is also being used to damage political figures and adversely influence foreign and domestic policy. In this paper, we offer some techniques for better understanding the health and security of our networks. This understanding will help professionals to identify network behavior, anomalies and other latent, systematic issues in their networks. Software-Defined Networks (SDN) enable the collection of network operation and configuration metrics that are not readily available, if available at all, in traditional networks. SDN also enables the development of software protocols and tools that increases visibility into the network. By accumulating and analyzing a time series data repository (TSDR) of SDN and traditional metrics along with data gathered from our tools we can establish behavior and security patterns for SDN and SDN hybrid networks. Our research helps provide a framework for a range of techniques for administrators and automated system protection services that give insight into the health and security of the network. To narrow the scope of our research, this paper focuses on a subset of those techniques as they apply to the confidence analysis of a specific network path at the time of use or inspection. This confidence analysis allows users, administrators and autonomous systems to decide whether a network path is secure enough for sending their sensitive information. Our testing shows that malicious activity can be identified quickly as a single metric indicator and consistently within a multi-factor indicator analysis. Our research includes the implementation of - hese techniques in a network path confidence analysis service, called Confidence Assessment as a Service. Using our behavior and security patterns, this service evaluates a specific network path and provides a confidence score for that path before, during and after the transmission of sensitive data. Our research and tools give administrators and autonomous systems a much better understanding of the internal operation and configuration of their networks. Our framework will also provide other services that will focus on detecting latent, systemic network problems. By providing a better understanding of network configuration and operation our research enables a more secure and dependable network and helps prevent the theft of information by malicious actors.