Performance Analysis of Malicious URL Detection by using RNN and LSTM

Autor: Arivukarasi M, Hindustan Institute of Technology and Science HITS, ANTONI DOSS
Rok vydání: 2020
Předmět:
Zdroj: 2020 Fourth International Conference on Computing Methodologies and Communication (ICCMC).
Popis: In the cutting edge age, all data is effectively open through sites and because of this reason individuals depend totally on online assets. On the in opposition to its focal points, protection and security in online media are the primary concern overall as a result of the ascent in phishing assaults propelled on the web. The quantity of phishing sites expands each month focusing on in excess of 450 brands, according to the reports distributed by against phishing working groups. Generally boycotts are utilized to distinguish the URL assaults. In any case, with the exponential increment in the quantity of phishing sites, this strategy has its own restrictions and it additionally neglects to identify recently created phishing URLs which can be unraveled utilizing AI or profound learning strategies. Here we present a near report between established AI procedure calculated relapse utilizing bigram, profound learning strategies like convolution neural network and Recurrent Neural Network long present moment memory as models used to identify noxious Uniform Resource Locators. On correlation Recurrent neural network and long short term memory gave the best exactness of about 98% for the grouping of phishing Uniform Resources.
Databáze: OpenAIRE