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2018-08-23
Jinan, S., Kefeng, P., Xuefeng, C., Junfu, Z..  2017.  Security Patterns from Intelligent Data: A Map of Software Vulnerability Analysis. 2017 ieee 3rd international conference on big data security on cloud (bigdatasecurity), ieee international conference on high performance and smart computing (hpsc), and ieee international conference on intelligent data and security (ids). :18–25.

A significant milestone is reached when the field of software vulnerability research matures to a point warranting related security patterns represented by intelligent data. A substantial research material of empirical findings, distinctive taxonomy, theoretical models, and a set of novel or adapted detection methods justify a unifying research map. The growth interest in software vulnerability is evident from a large number of works done during the last several decades. This article briefly reviews research works in vulnerability enumeration, taxonomy, models and detection methods from the perspective of intelligent data processing and analysis. This article also draws the map which associated with specific characteristics and challenges of vulnerability research, such as vulnerability patterns representation and problem-solving strategies.

2018-04-30
Kafali, Ö, Jones, J., Petruso, M., Williams, L., Singh, M. P..  2017.  How Good Is a Security Policy against Real Breaches? A HIPAA Case Study 2017 IEEE/ACM 39th International Conference on Software Engineering (ICSE). :530–540.

Policy design is an important part of software development. As security breaches increase in variety, designing a security policy that addresses all potential breaches becomes a nontrivial task. A complete security policy would specify rules to prevent breaches. Systematically determining which, if any, policy clause has been violated by a reported breach is a means for identifying gaps in a policy. Our research goal is to help analysts measure the gaps between security policies and reported breaches by developing a systematic process based on semantic reasoning. We propose SEMAVER, a framework for determining coverage of breaches by policies via comparison of individual policy clauses and breach descriptions. We represent a security policy as a set of norms. Norms (commitments, authorizations, and prohibitions) describe expected behaviors of users, and formalize who is accountable to whom and for what. A breach corresponds to a norm violation. We develop a semantic similarity metric for pairwise comparison between the norm that represents a policy clause and the norm that has been violated by a reported breach. We use the US Health Insurance Portability and Accountability Act (HIPAA) as a case study. Our investigation of a subset of the breaches reported by the US Department of Health and Human Services (HHS) reveals the gaps between HIPAA and reported breaches, leading to a coverage of 65%. Additionally, our classification of the 1,577 HHS breaches shows that 44% of the breaches are accidental misuses and 56% are malicious misuses. We find that HIPAA's gaps regarding accidental misuses are significantly larger than its gaps regarding malicious misuses.

2018-02-21
Bojanova, I., Black, P. E., Yesha, Y..  2017.  Cryptography classes in bugs framework (BF): Encryption bugs (ENC), verification bugs (VRF), and key management bugs (KMN). 2017 IEEE 28th Annual Software Technology Conference (STC). :1–8.

Accurate, precise, and unambiguous definitions of software weaknesses (bugs) and clear descriptions of software vulnerabilities are vital for building the foundations of cybersecurity. The Bugs Framework (BF) comprises rigorous definitions and (static) attributes of bug classes, along with their related dynamic properties, such as proximate, secondary and tertiary causes, consequences, and sites. This paper presents an overview of previously developed BF classes and the new cryptography related classes: Encryption Bugs (ENC), Verification Bugs (VRF), and Key Management Bugs (KMN). We analyze corresponding vulnerabilities and provide their clear descriptions by applying the BF taxonomy. We also discuss the lessons learned and share our plans for expanding BF.

2017-12-12
Zaytsev, A., Malyuk, A., Miloslavskaya, N..  2017.  Critical Analysis in the Research Area of Insider Threats. 2017 IEEE 5th International Conference on Future Internet of Things and Cloud (FiCloud). :288–296.

The survey of related works on insider information security (IS) threats is presented. Special attention is paid to works that consider the insiders' behavioral models as it is very up-to-date for behavioral intrusion detection. Three key research directions are defined: 1) the problem analysis in general, including the development of taxonomy for insiders, attacks and countermeasures; 2) study of a specific IS threat with forecasting model development; 3) early detection of a potential insider. The models for the second and third directions are analyzed in detail. Among the second group the works on three IS threats are examined, namely insider espionage, cyber sabotage and unintentional internal IS violation. Discussion and a few directions for the future research conclude the paper.

2017-12-04
Donno, M. De, Dragoni, N., Giaretta, A., Spognardi, A..  2017.  Analysis of DDoS-capable IoT malwares. 2017 Federated Conference on Computer Science and Information Systems (FedCSIS). :807–816.

The Internet of Things (IoT) revolution promises to make our lives easier by providing cheap and always connected smart embedded devices, which can interact on the Internet and create added values for human needs. But all that glitters is not gold. Indeed, the other side of the coin is that, from a security perspective, this IoT revolution represents a potential disaster. This plethora of IoT devices that flooded the market were very badly protected, thus an easy prey for several families of malwares that can enslave and incorporate them in very large botnets. This, eventually, brought back to the top Distributed Denial of Service (DDoS) attacks, making them more powerful and easier to achieve than ever. This paper aims at provide an up-to-date picture of DDoS attacks in the specific subject of the IoT, studying how these attacks work and considering the most common families in the IoT context, in terms of their nature and evolution through the years. It also explores the additional offensive capabilities that this arsenal of IoT malwares has available, to mine the security of Internet users and systems. We think that this up-to-date picture will be a valuable reference to the scientific community in order to take a first crucial step to tackle this urgent security issue.

2017-11-27
Meng, Q., Shameng, Wen, Chao, Feng, Chaojing, Tang.  2016.  Predicting buffer overflow using semi-supervised learning. 2016 9th International Congress on Image and Signal Processing, BioMedical Engineering and Informatics (CISP-BMEI). :1959–1963.

As everyone knows vulnerability detection is a very difficult and time consuming work, so taking advantage of the unlabeled data sufficiently is needed and helpful. According the above reality, in this paper a method is proposed to predict buffer overflow based on semi-supervised learning. We first employ Antlr to extract AST from C/C++ source files, then according to the 22 buffer overflow attributes taxonomies, a 22-dimension vector is extracted from every function in AST, at last, the vector is leveraged to train a classifier to predict buffer overflow vulnerabilities. The experiment and evaluation indicate our method is correct and efficient.

2017-04-20
McCall, Roderick, McGee, Fintan, Meschtscherjakov, Alexander, Louveton, Nicolas, Engel, Thomas.  2016.  Towards A Taxonomy of Autonomous Vehicle Handover Situations. Proceedings of the 8th International Conference on Automotive User Interfaces and Interactive Vehicular Applications. :193–200.

This paper proposes a taxonomy of autonomous vehicle handover situations with a particular emphasis on situational awareness. It focuses on a number of research challenges such as: legal responsibility, the situational awareness level of the driver and the vehicle, the knowledge the vehicle must have of the driver's driving skills as well as the in-vehicle context. The taxonomy acts as a starting point for researchers and practitioners to frame the discussion on this complex problem.

2017-03-08
Yao, X., Zhou, X., Ma, J..  2015.  Object event visibility for anti-counterfeiting in RFID-enabled product supply chains. 2015 Science and Information Conference (SAI). :141–150.

RFID-enabled product supply chain visibility is usually implemented by building up a view of the product history of its activities starting from manufacturing or even earlier with a dynamically updated e-pedigree for track-and-trace, which is examined and authenticated at each node of the supply chain for data consistence with the pre-defined one. However, while effectively reducing the risk of fakes, this visibility can't guarantee that the product is authentic without taking further security measures. To the best of our knowledge, this requires deeper understandings on associations of object events with the counterfeiting activities, which is unfortunately left blank. In this paper, the taxonomy of counterfeiting possibilities is initially developed and analyzed, the structure of EPC-based events is then re-examined, and an object-centric coding mechanism is proposed to construct the object-based event “pedigree” for such event exception detection and inference. On this basis, the system architecture framework to achieve the objectivity of object event visibility for anti-counterfeiting is presented, which is also applicable to other aspects of supply chain management.

2017-03-07
Botas, Á, Rodríguez, R. J., Väisänen, T., Zdzichowski, P..  2015.  Counterfeiting and Defending the Digital Forensic Process. 2015 IEEE International Conference on Computer and Information Technology; Ubiquitous Computing and Communications; Dependable, Autonomic and Secure Computing; Pervasive Intelligence and Computing. :1966–1971.

During the last years, criminals have become aware of how digital evidences that lead them to courts and jail are collected and analyzed. Hence, they have started to develop antiforensic techniques to evade, hamper, or nullify their evidences. Nowadays, these techniques are broadly used by criminals, causing the forensic analysis to be in a state of decay. To defeat against these techniques, forensic analyst need to first identify them, and then to mitigate somehow their effects. In this paper, wereview the anti-forensic techniques and propose a new taxonomy that relates them to the initial phase of a forensic process mainly affected by each technique. Furthermore, we introduce mitigation techniques for these anti-forensic techniques, considering the chance to overcome the anti-forensic techniques and the difficulty to apply them.

2015-05-06
Klaper, David, Hovy, Eduard.  2014.  A Taxonomy and a Knowledge Portal for Cybersecurity. Proceedings of the 15th Annual International Conference on Digital Government Research. :79–85.

Smart government is possible only if the security of sensitive data can be assured. The more knowledgeable government officials and citizens are about cybersecurity, the better are the chances that government data is not compromised or abused. In this paper, we present two systems under development that aim at improving cybersecurity education. First, we are creating a taxonomy of cybersecurity topics that provides links to relevant educational or research material. Second, we are building a portal that serves as platform for users to discuss the security of websites. These sources can be linked together. This helps to strengthen the knowledge of government officials and citizens with regard to cybersecurity issues. These issues are a central concern for open government initiatives.

 

2015-05-05
Bhandari, P., Gujral, M.S..  2014.  Ontology based approach for perception of network security state. Engineering and Computational Sciences (RAECS), 2014 Recent Advances in. :1-6.

This paper presents an ontological approach to perceive the current security status of the network. Computer network is a dynamic entity whose state changes with the introduction of new services, installation of new network operating system, and addition of new hardware components, creation of new user roles and by attacks from various actors instigated by aggressors. Various security mechanisms employed in the network does not give the complete picture of security of complete network. In this paper we have proposed taxonomy and ontology which may be used to infer impact of various events happening in the network on security status of the network. Vulnerability, Network and Attack are the main taxonomy classes in the ontology. Vulnerability class describes various types of vulnerabilities in the network which may in hardware components like storage devices, computing devices or networks devices. Attack class has many subclasses like Actor class which is entity executing the attack, Goal class describes goal of the attack, Attack mechanism class defines attack methodology, Scope class describes size and utility of the target, Automation level describes the automation level of the attack Evaluation of security status of the network is required for network security situational awareness. Network class has network operating system, users, roles, hardware components and services as its subclasses. Based on this taxonomy ontology has been developed to perceive network security status. Finally a framework, which uses this ontology as knowledgebase has been proposed.
 

Schneider, S., Lansing, J., Fangjian Gao, Sunyaev, A..  2014.  A Taxonomic Perspective on Certification Schemes: Development of a Taxonomy for Cloud Service Certification Criteria. System Sciences (HICSS), 2014 47th Hawaii International Conference on. :4998-5007.

Numerous cloud service certifications (CSCs) are emerging in practice. However, in their striving to establish the market standard, CSC initiatives proceed independently, resulting in a disparate collection of CSCs that are predominantly proprietary, based on various standards, and differ in terms of scope, audit process, and underlying certification schemes. Although literature suggests that a certification's design influences its effectiveness, research on CSC design is lacking and there are no commonly agreed structural characteristics of CSCs. Informed by data from 13 expert interviews and 7 cloud computing standards, this paper delineates and structures CSC knowledge by developing a taxonomy for criteria to be assessed in a CSC. The taxonomy consists of 6 dimensions with 28 subordinate characteristics and classifies 328 criteria, thereby building foundations for future research to systematically develop and investigate the efficacy of CSC designs as well as providing a knowledge base for certifiers, cloud providers, and users.
 

Jiankun Hu, Pota, H.R., Song Guo.  2014.  Taxonomy of Attacks for Agent-Based Smart Grids. Parallel and Distributed Systems, IEEE Transactions on. 25:1886-1895.

Being the most important critical infrastructure in Cyber-Physical Systems (CPSs), a smart grid exhibits the complicated nature of large scale, distributed, and dynamic environment. Taxonomy of attacks is an effective tool in systematically classifying attacks and it has been placed as a top research topic in CPS by a National Science Foundation (NSG) Workshop. Most existing taxonomy of attacks in CPS are inadequate in addressing the tight coupling of cyber-physical process or/and lack systematical construction. This paper attempts to introduce taxonomy of attacks of agent-based smart grids as an effective tool to provide a structured framework. The proposed idea of introducing the structure of space-time and information flow direction, security feature, and cyber-physical causality is innovative, and it can establish a taxonomy design mechanism that can systematically construct the taxonomy of cyber attacks, which could have a potential impact on the normal operation of the agent-based smart grids. Based on the cyber-physical relationship revealed in the taxonomy, a concrete physical process based cyber attack detection scheme has been proposed. A numerical illustrative example has been provided to validate the proposed physical process based cyber detection scheme.
 

2015-04-30
Mingqiang Li, Lee, P.P.C..  2014.  Toward I/O-efficient protection against silent data corruptions in RAID arrays. Mass Storage Systems and Technologies (MSST), 2014 30th Symposium on. :1-12.

Although RAID is a well-known technique to protect data against disk errors, it is vulnerable to silent data corruptions that cannot be detected by disk drives. Existing integrity protection schemes designed for RAID arrays often introduce high I/O overhead. Our key insight is that by properly designing an integrity protection scheme that adapts to the read/write characteristics of storage workloads, the I/O overhead can be significantly mitigated. In view of this, this paper presents a systematic study on I/O-efficient integrity protection against silent data corruptions in RAID arrays. We formalize an integrity checking model, and justify that a large proportion of disk reads can be checked with simpler and more I/O-efficient integrity checking mechanisms. Based on this integrity checking model, we construct two integrity protection schemes that provide complementary performance advantages for storage workloads with different user write sizes. We further propose a quantitative method for choosing between the two schemes in real-world scenarios. Our trace-driven simulation results show that with the appropriate integrity protection scheme, we can reduce the I/O overhead to below 15%.

2014-10-24
Breaux, T.D., Hibshi, H., Rao, A, Lehker, J..  2012.  Towards a framework for pattern experimentation: Understanding empirical validity in requirements engineering patterns. Requirements Patterns (RePa), 2012 IEEE Second International Workshop on. :41-47.

Despite the abundance of information security guidelines, system developers have difficulties implementing technical solutions that are reasonably secure. Security patterns are one possible solution to help developers reuse security knowledge. The challenge is that it takes experts to develop security patterns. To address this challenge, we need a framework to identify and assess patterns and pattern application practices that are accessible to non-experts. In this paper, we narrowly define what we mean by patterns by focusing on requirements patterns and the considerations that may inform how we identify and validate patterns for knowledge reuse. We motivate this discussion using examples from the requirements pattern literature and theory in cognitive psychology.