
Extreme Learning Model Based Phishing Classifier
Author(s) -
Praveen Tumuluru,
Radha Manohar Jonnalagadda,
Divya Sai Sree Konatham,
Vineetha Samineni,
Lakshmi Ramani Burra
Publication year - 2019
Publication title -
international journal of recent technology and engineering
Language(s) - English
Resource type - Journals
ISSN - 2277-3878
DOI - 10.35940/ijrte.d9984.118419
Subject(s) - phishing , blacklist , computer science , password , credit card , blacklisting , the internet , computer security , world wide web , classifier (uml) , artificial intelligence , payment
Phishing Is An Act Of Attempting To Acquire The Users’ Data Such As Usernames, Passwords And Credit Card Details As It Was The Trustworthy Entity In An Electronic Communication. Because Of The Quick Development Of The Internet, Clients Change Their Inclination From Customary Shopping To The Electronic Business. Rather Than Bank Or Shop Robbery, These Days Culprit Attempt To Discover Their Victims In The Internet With Some Particular Tricks. By Utilizing The Mysterious Structure Of The Internet, The Culprits Set Out New Strategies, For Example, Phishing, To Betray Victims With The Utilization Of Fake Webpages To Gather Their Delicate Data, For Example, Account Ids, Usernames, Passwords, And So On. Understanding Whether A Website Page Is Genuine Or Phishing Is A Very Testing Issue, Because Of Its Semantics-Based Assault Structure, Which Predominantly Misuses The Pc Users’ Susceptibilities. Despite The Fact That Most Of The Software Companies Introduce Many Anti-Phishing Products, Which Use Blacklist Generator, Heuristic Approach And Ml-Based Methodologies, These Products Can’t Stop All Of The Phishing Attacks. The Main Objective Of This Paper Is To Find An Efficient Approach For Distinguishing The Phishing Sites Which Depends On The Extreme Learning Model. Specifically, The Proposed Method Computes Some Features As Input And Checks Whether The Given Url Is Phishing Url Or The Legitimate Url. The Proposed Extreme Learning Model Attains 97% Accuracy Rate For Detection Of Phishing Urls And If The Hidden Layers Increases The Accuracy Is Also Discussed.