38th Annual IEEE Conference on Local Computer Networks 2013
DOI: 10.1109/lcn.2013.6761298
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Automated diagnosis of known and unknown soft-failure in user devices using transformed Signatures and single classifier architecture

Abstract: We present an automated solution for rapid diagnosis of both known and unknown "soft-failures" in network User Devices (UDs). A multiclass classifier is first trained with the known faults and during diagnosis, the unknown faults are clustered to determine the existence of a new fault. Then, in an iterative process, the classifier is re-trained with the newly detected fault. The system relies on 410 features long Normalized Statistical Signature (NSSs) for fault characterization. Since, the high dimensionality… Show more

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“…We perform a detailed comparison of performance between both EigenNSS and FisherNSS with data gathered from real-world networks. Preliminary results of the work have been published in a conference paper [13]. Whilst the published work only offer a limited discussion focused just on EigenNSS, this publication significantly extends the concept to introduce the FisherNSS.…”
Section: A Motivationmentioning
confidence: 96%
“…We perform a detailed comparison of performance between both EigenNSS and FisherNSS with data gathered from real-world networks. Preliminary results of the work have been published in a conference paper [13]. Whilst the published work only offer a limited discussion focused just on EigenNSS, this publication significantly extends the concept to introduce the FisherNSS.…”
Section: A Motivationmentioning
confidence: 96%