Abstract
With the growing use of internet across the world
,the threats posed by it are numerous. The information you get
and share across the internet is accessible, can be tracked and
modified. Malicious websites play a pivotal role in effecting your
system. These websites reach users through emails, text
messages, pop ups or devious advertisements. The outcome of
these websites or Uniform Resource Locators (URLs) would often
be a downloaded malware, spyware, ransomware and
compromised accounts. A malicious website or URL requires
action on the users side, however in the case of drive by only
downloads, the website will attempt to install software on the
computer without asking users permission first. We put forward a
model to forecast a URL is malicious or benign, based on the
application layer and network characteristics. Machine learning
algorithms for classification are used to develop a classifier using
the targeted dataset. The targeted dataset is divided into training
and validation sets. These sets are used to train and validate the
classifier model. The hyper parameters are tuned to refine the
model and generate better results
Publisher
Blue Eyes Intelligence Engineering and Sciences Engineering and Sciences Publication - BEIESP
Subject
Management of Technology and Innovation,General Engineering
Cited by
3 articles.
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