NEURO-FUZZY DATA MINING SYSTEM FOR IDENTIFYING E-COMMERCE RELATED THREATS

E-commerce is driven via Information Technology (IT) especially the web it mostly relies upon on innovative technologies that are facilitated by Electronic Data Interchange (EDI) and Electronic Payment over the web. Several researches have shown that e-commerce platforms are compromised by means of...

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Veröffentlicht in:Malaysian Journal of Computing 2020-09, Vol.5 (2), p.537-552
Hauptverfasser: Haruna, Saibu Aliyu, Akinyede, Raphael Olufemi, Kehinde, Boyinbode Olutayo
Format: Artikel
Sprache:eng
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Zusammenfassung:E-commerce is driven via Information Technology (IT) especially the web it mostly relies upon on innovative technologies that are facilitated by Electronic Data Interchange (EDI) and Electronic Payment over the web. Several researches have shown that e-commerce platforms are compromised by means of phishing and fraud attacks. This has necessitated trying to find innovative methodologies for defending e-commerce systems and users from the said threats. This research integrates Case Based Reasoning (CBR) and Adaptive Neuro-Fuzzy Inference System (ANFIS) to spot and categorise e-commerce websites transactions as legitimate or illegitimate by analyzing and evaluating some attributes. this may provide an invulnerable platforms for e-commerce users. The system, which was implemented on MATLAB, are often deployed on e-commerce systems and servers to watch e-commerce requests with the aim of identifying legitimate and illegitimate websites and transactions. The results of the implementation indicates that the machine is promising.
ISSN:2231-7473
2600-8238
DOI:10.24191/mjoc.v5i2.8642