5 research outputs found
Automatic rule extraction from access rules using Genetic Programming
International audienceThe security policy rules in companies are generally proposed by the Chief Security Officer (CSO), who must, for instance, select by hand which access events are allowed and which ones should be forbidden. In this work we propose a way to automatically obtain rules that gen-eralise these single-event based rules using Genetic Programming (GP), which, besides, should be able to present them in an understandable way. Our GP-based system obtains good dataset coverage and small ratios of false positives and negatives in the simulation results over real data, after testing different fitness functions and configurations in the way of coding the individuals
A review of k-NN algorithm based on classical and Quantum Machine Learning
[EN] Artificial intelligence algorithms, developed for traditional
computing, based on Von Neumann鈥檚 architecture, are slow and expen-
sive in terms of computational resources. Quantum mechanics has opened
up a new world of possibilities within this field, since, thanks to the basic
properties of a quantum computer, a great degree of parallelism can be
achieved in the execution of the quantum version of machine learning
algorithms. In this paper, a study has been carried out on these proper-
ties and on the design of their quantum computing versions. More specif-
ically, the study has been focused on the quantum version of the k-NN
algorithm that allows to understand the fundamentals when transcribing
classical machine learning algorithms into its quantum versions