
The Technique of Multi-aspect Evaluation and Categorization of Malicious Information Objects on the Internet
Author(s) -
Alexander Branitskiy,
Igor Saenko
Publication year - 2019
Publication title -
trudy učebnyh zavedenij svâzi
Language(s) - English
Resource type - Journals
eISSN - 2712-8830
pISSN - 1813-324X
DOI - 10.31854/1813-324x-2019-5-3-58-65
Subject(s) - the internet , computer science , categorization , process (computing) , data mining , artificial intelligence , machine learning , information retrieval , world wide web , operating system
Under the influence of rapid development in the sphere of information technologies, rises the challenge related to detection of malicious information sources on the Internet. To solve this we can use machine learning methods as one of the most popular and powerful tools designed to identify dependencies between input (observed) data and output (desired) results. This article presents a methodology which is aimed at multi-level processing of input data about malicious information objects on the Internet and providing their multi-aspect assessment and categorization using machine learning methods. The purpose of the investigation is to improve the efficiency of the detecting process of malicious information on the Internet using the examples of Web-pages classification.