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Interactive Rule Learning for Access Control: Concepts and Design

Beckerle, Matthias ; Martucci, Leonardo ; Mühlhäuser, Max ; Ries, Sebastian (2011)
Interactive Rule Learning for Access Control: Concepts and Design.
In: International Journal on Advances in Intelligent Systems
Book Section, Bibliographie

Abstract

Nowadays the majority of users are unable to properly configure security mechanisms mostly because they are not usable for them. To reach the goal of having usable security mechanisms, the best solution is to minimize the amount of user interactions and simplify configuration tasks. Automation is a proper solution for minimizing the amount of user interaction. Fully automated security systems are possible for most security objectives, with the exception of the access control policy generation. Fully automated access control policy generation is currently not possible because individual preferences must be taken into account and, thus, requires user interaction. To address this problem we propose a mechanism that assists users to generate proper access control rule sets that reflect their individual preferences. We name this mechanism Interactive Rule Learning for Access Control (IRL). IRL is designed to generate concise rule sets for Attribute-Based Access Control (ABAC). The resulting approach leads to adaptive access control rule sets that can be used for so called smart products. Therefore, we first describe the requirements and metrics for usable access control rule sets for smart products. Moreover, we present the design of a security component which implements, among other security functionalities, our proposed IRL on ABAC. This design is currently being implemented as part of the ICT 7th Framework Programme SmartProducts of the European Commission.

Item Type: Book Section
Erschienen: 2011
Creators: Beckerle, Matthias ; Martucci, Leonardo ; Mühlhäuser, Max ; Ries, Sebastian
Type of entry: Bibliographie
Title: Interactive Rule Learning for Access Control: Concepts and Design
Language: German
Date: 2011
Publisher: IARIA
Issue Number: 3 & 4
Book Title: International Journal on Advances in Intelligent Systems
Series Volume: 4
Corresponding Links:
Abstract:

Nowadays the majority of users are unable to properly configure security mechanisms mostly because they are not usable for them. To reach the goal of having usable security mechanisms, the best solution is to minimize the amount of user interactions and simplify configuration tasks. Automation is a proper solution for minimizing the amount of user interaction. Fully automated security systems are possible for most security objectives, with the exception of the access control policy generation. Fully automated access control policy generation is currently not possible because individual preferences must be taken into account and, thus, requires user interaction. To address this problem we propose a mechanism that assists users to generate proper access control rule sets that reflect their individual preferences. We name this mechanism Interactive Rule Learning for Access Control (IRL). IRL is designed to generate concise rule sets for Attribute-Based Access Control (ABAC). The resulting approach leads to adaptive access control rule sets that can be used for so called smart products. Therefore, we first describe the requirements and metrics for usable access control rule sets for smart products. Moreover, we present the design of a security component which implements, among other security functionalities, our proposed IRL on ABAC. This design is currently being implemented as part of the ICT 7th Framework Programme SmartProducts of the European Commission.

Uncontrolled Keywords: - SST - Area Smart Security and Trust;- SST: CASED:;adaptivity, usability, access control, rule learning
Identification Number: TUD-CS-2011-2920
Divisions: 20 Department of Computer Science
20 Department of Computer Science > Telecooperation
LOEWE
LOEWE > LOEWE-Zentren
LOEWE > LOEWE-Zentren > CASED – Center for Advanced Security Research Darmstadt
Date Deposited: 31 Dec 2016 12:59
Last Modified: 14 Jun 2021 06:14
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