ISSN No:2250-3676 ----- Crossref DOI Prefix: 10.64771 ----- Impact Factor: 9.625
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(Peer Reviewed, Referred & Indexed Journal)


    AUTOMATIC MAIL DELETION SYSTEM USING ML ALGORITHMS

    Mr N. Hari Krishna1 ,Landa Vishnu2 , Myla Vamsi Krishna3 , Korampalli Mahesh4 ,Nalajala Sai Kumar5

    Author

    ID: 2550

    DOI: Https://doi.org/10.5281/zenodo.19452624

    Abstract :

    Email Communication Has Become An Essential Part Of Modern Digital Communication; However, The Rapid Growth Of Unwanted Emails Such As Spam, Advertisements, And Phishing Messages Creates Difficulties In Managing Inboxes Effectively. This Project Proposes An Automatic Mail Deletion System Using Machine Learning Algorithms To Automatically Identify And Remove Unwanted Emails From The Inbox. The System Analyzes Email Content, Subject Lines, Sender Information, And Other Metadata To Classify Emails As Important Or Unwanted. Machine Learning Algorithms Such As Naïve Bayes, Support Vector Machine (SVM), And Random Forest Are Implemented To Build The Prediction Model. The Dataset Consists Of Labeled Email Messages That Are Categorized As Spam Or Non-spam. Data Preprocessing Techniques Such As Text Cleaning, Tokenization, And Feature Extraction Are Applied To Prepare The Dataset For Model Training. The Proposed System Improves Email Management By Automatically Filtering And Deleting Irrelevant Emails, Reducing Manual Effort, And Enhancing User Productivity And Security In Digital Communication Environments.

    Published:

    07-4-2026

    Issue:

    Vol. 26 No. 4 (2026)


    Page Nos:

    1629-1634


    Section:

    Articles

    License:

    This work is licensed under a Creative Commons Attribution-NonCommercial-NoDerivatives 4.0 International License.

    How to Cite

    Mr N. Hari Krishna1 ,Landa Vishnu2 , Myla Vamsi Krishna3 , Korampalli Mahesh4 ,Nalajala Sai Kumar5, AUTOMATIC MAIL DELETION SYSTEM USING ML ALGORITHMS , 2026, International Journal of Engineering Sciences and Advanced Technology, 26(4), Page 1629-1634, ISSN No: 2250-3676.

    DOI: https://doi.org/10.5281/zenodo.19452624