An updated Pattern classification over performance security robustness evaluation
Abstract
Further, an incipient filter has been suggested in the proposed work by the interfacing of rule predicated filtering followed by content predicated filtering for more efficient results. The system evaluates at design phase the security of pattern classifiers, namely, the performance degradation under potential attacks they may incur during operation. A framework is used for evaluation of classifier security that formalizes and generalizes the training and testing datasets. As this antagonistic situation is not considered by traditional configuration techniques, design transfer frameworks may show susceptibilities, whose abuse might astringently influence their execution, and subsequently restrain their commonsense utility. Extending example assignment hypothesis and configuration routines to antagonistic settings is subsequently a novel and exceptionally germane examination bearing, which has not yet been pursued in an efficient way.
Keywords
Pattern classification; adversarial classification; performance evaluation; security evaluation; robustness evaluation
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PDFCopyright (c) 2015 Ms. kanadepriyanka arjun, Bhakare Mahesh mahadev, Dhokalevijay Nanabhau, Ajay Gupta
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