Dissertação
Seleção de variáveis de rede para detecção de intrusão
Fecha
2012-10-22Registro en:
ALVES, Victor Machado. NETWORK FEATURE SELECTION FOR INTRUSION DETECTION. 2012. 75 f. Dissertação (Mestrado em Ciência da Computação) - Universidade Federal de Santa Maria, Santa Maria, 2012.
Autor
Alves, Victor Machado
Institución
Resumen
Intrusion Detection Systems are considered important mechanisms to ensure protection for
computer networks. However, the information used by these systems should be properly selected,
because the accuracy and performance are sensitive to the quality and size of the analyzed
data. The selection of variables for Intrusion Detection Systems (IDS) is a key point in the
design of IDS. The process of selection of variables, or features, makes the choice of appropriate
information by removing irrelevant data that affect the result of detection. However, existing
approaches to assist IDS select the variables only once, not adapting behavioral changes. The
variation of the network traffic is not so accompanied by these selectors. A strategy for reducing
the false alarm rate based on abnormalities in IDS is evaluating whether a same time interval
abrupt changes occur in more than one variable network. However, this strategy takes as hypothesis
that the variables are related, requiring a prior procedure for variable selection. This
paper proposes a dynamic method of selecting variables for network IDS, called SDCorr (Selection
by Dynamic Correlation), which operates in the mode filter and as an evaluator uses the
Pearson correlation test. The method dynamically adapts to changes in network traffic through
the selection of new variables at each iteration with the detector. Therefore allow track changes
in data and establish relationships between variables. As a result, it improves the accuracy and
performance of the IDS by eliminating unnecessary variables and decreasing the size of the
analyzed data.