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Performance Analysis of Ml Techniques for Spam Filtering
Author(s) -
T. Logeswari
Publication year - 2020
Publication title -
international research journal on advanced science hub
Language(s) - English
Resource type - Journals
ISSN - 2582-4376
DOI - 10.47392/irjash.2020.161
Subject(s) - computer science , forum spam , spambot , the internet , bag of words model , filter (signal processing) , volume (thermodynamics) , machine learning , artificial intelligence , data mining , world wide web , spamming , computer vision , physics , quantum mechanics
The rise in the volume of unwanted spam emails has made the development of a lot more necessary more reliable and robust filters for antispam. Current machine learning approaches are used to excel Spam emails can be detected and filtered. Filtering solutions to text spam. The analysis discusses core principles, actions, efficacy, and Spam filtering trend for research. The first topic in the research study aims at the requests Machine learning approaches for the operation of filters of spam by the leading providers of internet infrastructure (ISPs) The increasing quantity of unnecessary bulk email (also called spam) has generated a secure need Filters for anti-spam. Then the review compares the strengths and disadvantages of existing methods of machine learning and open research Spam handling problems. As future strategies suggested extreme leaning and strongly opposed schooling that can handle the danger of spam emails effectively. KeywordsSpam, Machine learning, Computer Security, Recall, Precision

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