Title of article :
Minimizing False Positives of a Decision Tree Classifier
for Intrusion Detection on the Internet
Author/Authors :
Satoru Ohta، نويسنده , , Ryosuke Kurebayashi ?
Kiyoshi Kobayashi، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2008
Abstract :
Machine learning or data mining technologies are often used in network
intrusion detection systems. An intrusion detection system based on machine
learning utilizes a classifier to infer the current state from the observed traffic
attributes. The problem with learning-based intrusion detection is that it leads to
false positives and so incurs unnecessary additional operation costs. This paper
investigates a method to decrease the false positives generated by an intrusion
detection system that employs a decision tree as its classifier. The paper first points
out that the information-gain criterion used in previous studies to select the attributes
in the tree-constructing algorithm is not effective in achieving low false
positive rates. Instead of the information-gain criterion, this paper proposes a new
function that evaluates the goodness of an attribute by considering the significance
of error types. The proposed function can successfully choose an attribute that
suppresses false positives from the given attribute set and the effectiveness of using
it is confirmed experimentally. This paper also examines the more trivial leaf
rewriting approach to benchmark the proposed method. The comparison shows that
the proposed attribute evaluation function yields better solutions than the leaf
rewriting approach
Keywords :
Internet Intrusion detection Data mining Machine learning Decision tree
Journal title :
Journal of Network and Systems Management
Journal title :
Journal of Network and Systems Management