DocumentCode :
692441
Title :
Semi-supervised Learning with Concept Drift Using Particle Dynamics Applied to Network Intrusion Detection Data
Author :
Breve, Fabricio ; Liang Zhao
Author_Institution :
Inst. of Geosci. & Exact Sci. (IGCE), Sao Paulo State Univ. (UNESP), Rio Claro, Brazil
fYear :
2013
fDate :
8-11 Sept. 2013
Firstpage :
335
Lastpage :
340
Abstract :
Concept drift, which refers to non stationary learning problems over time, has increasing importance in machine learning and data mining. Many concept drift applications require fast response, which means an algorithm must always be (re)trained with the latest available data. But the process of data labeling is usually expensive and/or time consuming when compared to acquisition of unlabeled data, thus usually only a small fraction of the incoming data may be effectively labeled. Semi-supervised learning methods may help in this scenario, as they use both labeled and unlabeled data in the training process. However, most of them are based on assumptions that the data is static. Therefore, semi-supervised learning with concept drifts is still an open challenging task in machine learning. Recently, a particle competition and cooperation approach has been developed to realize graph-based semi-supervised learning from static data. We have extend that approach to handle data streams and concept drift. The result is a passive algorithm which uses a single classifier approach, naturally adapted to concept changes without any explicit drift detection mechanism. It has built-in mechanisms that provide a natural way of learning from new data, gradually "forgetting" older knowledge as older data items are no longer useful for the classification of newer data items. The proposed algorithm is applied to the KDD Cup 1999 Data of network intrusion, showing its effectiveness.
Keywords :
data mining; graph theory; learning (artificial intelligence); security of data; concept drift; data mining; graph-based semisupervised learning; machine learning; network intrusion detection data; nonstationary learning problems; particle dynamics; static data; Algorithm design and analysis; Computational intelligence; Conferences; Data mining; Machine learning algorithms; Semisupervised learning; Vectors; Concept Drift; Network Intrusion Detection; Semi-Supservised Learning;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Computational Intelligence and 11th Brazilian Congress on Computational Intelligence (BRICS-CCI & CBIC), 2013 BRICS Congress on
Conference_Location :
Ipojuca
Type :
conf
DOI :
10.1109/BRICS-CCI-CBIC.2013.63
Filename :
6855872
Link To Document :
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