3 research outputs found

    Sharing Computer Network Logs for Security and Privacy: A Motivation for New Methodologies of Anonymization

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    Logs are one of the most fundamental resources to any security professional. It is widely recognized by the government and industry that it is both beneficial and desirable to share logs for the purpose of security research. However, the sharing is not happening or not to the degree or magnitude that is desired. Organizations are reluctant to share logs because of the risk of exposing sensitive information to potential attackers. We believe this reluctance remains high because current anonymization techniques are weak and one-size-fits-all--or better put, one size tries to fit all. We must develop standards and make anonymization available at varying levels, striking a balance between privacy and utility. Organizations have different needs and trust other organizations to different degrees. They must be able to map multiple anonymization levels with defined risks to the trust levels they share with (would-be) receivers. It is not until there are industry standards for multiple levels of anonymization that we will be able to move forward and achieve the goal of widespread sharing of logs for security researchers.Comment: 17 pages, 1 figur

    Privacy-preserving alert correlation and report retrieval

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    Intrusion Detection Systems (IDSs) have been widely deployed on both hosts and networks and serve as a second line of defense. Generally, an IDS flags malicious activates as IDS alerts and forwards them to security officers for further responses. The core issue of IDSs is to minimize both false positives and false negatives. Previous research shows that alert correlation is an effective solution. Moreover, alert correlation (in particular, under the cross-domain setting) can fuse distributed information together and thus be able to detect large-scale attacks that local analysis fails to handle. However, in practice the wide usage of alert correlation is hindered by the privacy concern. In this thesis, we propose the TEIRESIAS protocol, which can ensure the privacy-preserving property during the whole process of sharing and correlating alerts, when incorporated with anonymous communication systems. Furthermore, we also take the fairness issue into consideration when designing the procedure of retrieving the results of correlation. More specifically, a contributor can privately retrieve correlated reports in which she involved. The TEIRESIAS protocol is based mainly on searchable encryption, including both symmetric-key encryption with keyword search (SEKS) and public-key encryption with keyword search (PEKS). While designing TEIRESIAS, we identify a new statistical guessing attack against PEKS. To address this problem, we propose the PEKSrand scheme, which is an extension of PEKS and can mitigate both brute-force guessing attacks and statistical guessing attacks. The PEKSrand scheme can either be used independently or be combined with TEIRESIAS to further improve its privacy protection

    Evaluating the Design of an Audit Data Pseudonymizer Using Basic Building Blocks for Anonymity ∗

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    Using an audit data pseudonymization system as an example, we show how the APES approach for basic anonymity building blocks can be used to informally evaluate the design of a given anonymity system. As a by-product we obtain indications of the usefulness and (in)completeness of the APES building blocks approach.
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