4 research outputs found

    A Node-failure-resilient Anonymous Communication Protocol through Commutative Path Hopping

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    Using IMPRINT to Guide Experimental Design with Simulated Task Environments

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    Experimental Designs involving Simulated Task Environments aim to explore interesting conditions with human subjects. By using activity simulators such as IMPRINT, it may be possible to identify these conditions of interest without the need for human subjects. This thesis presents research that aims to demonstrate that IMPRINT can be used to predict human performance in a task environment representing the task performed by Network Analysts of the 33rd Network Warfare Squadron. The research is done by examining the task performed by the Network Analysts, and then designing a Simulated Task Environment modeled on this task. A model of the task performed is also built in IMPRINT. With a first iteration, it was found that the IMPRINT model was not able to predict performance in a majority of cases, however the methodology illustrates a starting point that others may use

    Decision Support Elements and Enabling Techniques to Achieve a Cyber Defence Situational Awareness Capability

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    [ES] La presente tesis doctoral realiza un an谩lisis en detalle de los elementos de decisi贸n necesarios para mejorar la comprensi贸n de la situaci贸n en ciberdefensa con especial 茅nfasis en la percepci贸n y comprensi贸n del analista de un centro de operaciones de ciberseguridad (SOC). Se proponen dos arquitecturas diferentes basadas en el an谩lisis forense de flujos de datos (NF3). La primera arquitectura emplea t茅cnicas de Ensemble Machine Learning mientras que la segunda es una variante de Machine Learning de mayor complejidad algor铆tmica (lambda-NF3) que ofrece un marco de defensa de mayor robustez frente a ataques adversarios. Ambas propuestas buscan automatizar de forma efectiva la detecci贸n de malware y su posterior gesti贸n de incidentes mostrando unos resultados satisfactorios en aproximar lo que se ha denominado un SOC de pr贸xima generaci贸n y de computaci贸n cognitiva (NGC2SOC). La supervisi贸n y monitorizaci贸n de eventos para la protecci贸n de las redes inform谩ticas de una organizaci贸n debe ir acompa帽ada de t茅cnicas de visualizaci贸n. En este caso, la tesis aborda la generaci贸n de representaciones tridimensionales basadas en m茅tricas orientadas a la misi贸n y procedimientos que usan un sistema experto basado en l贸gica difusa. Precisamente, el estado del arte muestra serias deficiencias a la hora de implementar soluciones de ciberdefensa que reflejen la relevancia de la misi贸n, los recursos y cometidos de una organizaci贸n para una decisi贸n mejor informada. El trabajo de investigaci贸n proporciona finalmente dos 谩reas claves para mejorar la toma de decisiones en ciberdefensa: un marco s贸lido y completo de verificaci贸n y validaci贸n para evaluar par谩metros de soluciones y la elaboraci贸n de un conjunto de datos sint茅ticos que referencian un铆vocamente las fases de un ciberataque con los est谩ndares Cyber Kill Chain y MITRE ATT & CK.[CA] La present tesi doctoral realitza una an脿lisi detalladament dels elements de decisi贸 necessaris per a millorar la comprensi贸 de la situaci贸 en ciberdefensa amb especial 猫mfasi en la percepci贸 i comprensi贸 de l'analista d'un centre d'operacions de ciberseguretat (SOC). Es proposen dues arquitectures diferents basades en l'an脿lisi forense de fluxos de dades (NF3). La primera arquitectura empra t猫cniques de Ensemble Machine Learning mentre que la segona 茅s una variant de Machine Learning de major complexitat algor铆tmica (lambda-NF3) que ofereix un marc de defensa de major robustesa enfront d'atacs adversaris. Totes dues propostes busquen automatitzar de manera efectiva la detecci贸 de malware i la seua posterior gesti贸 d'incidents mostrant uns resultats satisfactoris a aproximar el que s'ha denominat un SOC de pr貌xima generaci贸 i de computaci贸 cognitiva (NGC2SOC). La supervisi贸 i monitoratge d'esdeveniments per a la protecci贸 de les xarxes inform脿tiques d'una organitzaci贸 ha d'anar acompanyada de t猫cniques de visualitzaci贸. En aquest cas, la tesi aborda la generaci贸 de representacions tridimensionals basades en m猫triques orientades a la missi贸 i procediments que usen un sistema expert basat en l貌gica difusa. Precisament, l'estat de l'art mostra serioses defici猫ncies a l'hora d'implementar solucions de ciberdefensa que reflectisquen la rellev脿ncia de la missi贸, els recursos i comeses d'una organitzaci贸 per a una decisi贸 m茅s ben informada. El treball de recerca proporciona finalment dues 脿rees claus per a millorar la presa de decisions en ciberdefensa: un marc s貌lid i complet de verificaci贸 i validaci贸 per a avaluar par脿metres de solucions i l'elaboraci贸 d'un conjunt de dades sint猫tiques que referencien un铆vocament les fases d'un ciberatac amb els est脿ndards Cyber Kill Chain i MITRE ATT & CK.[EN] This doctoral thesis performs a detailed analysis of the decision elements necessary to improve the cyber defence situation awareness with a special emphasis on the perception and understanding of the analyst of a cybersecurity operations center (SOC). Two different architectures based on the network flow forensics of data streams (NF3) are proposed. The first architecture uses Ensemble Machine Learning techniques while the second is a variant of Machine Learning with greater algorithmic complexity (lambda-NF3) that offers a more robust defense framework against adversarial attacks. Both proposals seek to effectively automate the detection of malware and its subsequent incident management, showing satisfactory results in approximating what has been called a next generation cognitive computing SOC (NGC2SOC). The supervision and monitoring of events for the protection of an organisation's computer networks must be accompanied by visualisation techniques. In this case, the thesis addresses the representation of three-dimensional pictures based on mission oriented metrics and procedures that use an expert system based on fuzzy logic. Precisely, the state-of-the-art evidences serious deficiencies when it comes to implementing cyber defence solutions that consider the relevance of the mission, resources and tasks of an organisation for a better-informed decision. The research work finally provides two key areas to improve decision-making in cyber defence: a solid and complete verification and validation framework to evaluate solution parameters and the development of a synthetic dataset that univocally references the phases of a cyber-attack with the Cyber Kill Chain and MITRE ATT & CK standards.Llopis S谩nchez, S. (2023). Decision Support Elements and Enabling Techniques to Achieve a Cyber Defence Situational Awareness Capability [Tesis doctoral]. Universitat Polit猫cnica de Val猫ncia. https://doi.org/10.4995/Thesis/10251/19424

    Information Pooling Bias in Collaborative Cyber Forensics

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    abstract: Cyber threats are growing in number and sophistication making it important to continually study and improve all dimensions of cyber defense. Human teamwork in cyber defense analysis has been overlooked even though it has been identified as an important predictor of cyber defense performance. Also, to detect advanced forms of threats effective information sharing and collaboration between the cyber defense analysts becomes imperative. Therefore, through this dissertation work, I took a cognitive engineering approach to investigate and improve cyber defense teamwork. The approach involved investigating a plausible team-level bias called the information pooling bias in cyber defense analyst teams conducting the detection task that is part of forensics analysis through human-in-the-loop experimentation. The approach also involved developing agent-based models based on the experimental results to explore the cognitive underpinnings of this bias in human analysts. A prototype collaborative visualization tool was developed by considering the plausible cognitive limitations contributing to the bias to investigate whether a cognitive engineering-driven visualization tool can help mitigate the bias in comparison to off-the-shelf tools. It was found that participant teams conducting the collaborative detection tasks as part of forensics analysis, experience the information pooling bias affecting their performance. Results indicate that cognitive friendly visualizations can help mitigate the effect of this bias in cyber defense analysts. Agent-based modeling produced insights on internal cognitive processes that might be contributing to this bias which could be leveraged in building future visualizations. This work has multiple implications including the development of new knowledge about the science of cyber defense teamwork, a demonstration of the advantage of developing tools using a cognitive engineering approach, a demonstration of the advantage of using a hybrid cognitive engineering methodology to study teams in general and finally, a demonstration of the effect of effective teamwork on cyber defense performance.Dissertation/ThesisDoctoral Dissertation Applied Psychology 201
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