posted on 2018-12-18, 09:36authored byThein Than Tun, Mu Yang, Arosha K. Bandara, Yijun Yu, A. Nhlabatsi, N. Khan, K.M. Khan, Bashar NuseibehBashar Nuseibeh
In an adaptive security-critical system, security mechanisms change
according to the type of threat posed by the environment. Specifying
the behavior of these systems is diicult because conditions
of the environment are diicult to describe until the system has
been deployed and used for a length of time. This paper deines
the problem of adaptation in security-critical systems, and outlines
the RELAIS approach for expressing requirements and specifying
the behavior in a way that helps identify the need for adaptation,
and the appropriate adaptation behavior at runtime. The paper
introduces the notion of adaptation via input approximation and
proposes statistical machine learning techniques for realizing it.
The approach is illustrated with a running example and is applied
to a realistic security example from a cloud-based ile-sharing application.
Bayesian classiication and logistic regression methods are
used to implement adaptive speciications and these methods ofer
diferent levels of adaptive security and usability in the ile-sharing
application.
Funding
Study on Aerodynamic Characteristics Control of Slender Body Using Active Flow Control Technique