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International Journal of Creative and Open Research in Engineering and Management

A Peer-Reviewed, Open-Access International Journal Supporting Multidisciplinary Research, Digital Publishing Standards, DOI Registration, and Academic Indexing.
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ISSN: 3108-1754 (Online)
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ISO Certification: 9001:2015
Publication Fee: 599/- INR
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License: CC BY 4.0
Peer Review: Double Blind
Volume 02, Issue 05

Published on: May 2026

MENTAL HEALTH RISK PREDICTION FOR COLLEGE STUDENTS USING MACHINE LEARNING

Shreya BP Sheethal V Sharvari G Sharanya K

Dr. Savitha G

Department of CSE

R V Institute of Technology and Management Bangalore India

Article Status

Plagiarism Passed Peer Reviewed Open Access

Available Documents

Abstract

Most college kids find their heads spinning when school work piles up, friendships shift, or home feels too far away. When life gets like that, tension builds - sometimes tipping into worry or sadness strong enough to mess with sleep, focus, meals.Spotting those shifts fast matters because reaching out early tends to lighten the load before it grows heavier. Help at the right moment changes how things unfold later on.

Nowadays more schools turn to number-focused methods. Computers try spotting kids who might struggle using math tools hidden inside programs. One way uses past choices to guess future ones another draws lines between types of behavior one sorts outcomes by closeness while others grow like trees from decisions made before. Some work better than others depending on what you need found out. How well each does its job shows which fits best when results matter.

One way this research worked began by testing several prediction methods for student mental health concerns. Not until the data passed close review did any modeling start - only then could analysis move forward. Effectiveness of every method came into view through common evaluation metrics, each revealing different results.

Surprisingly, Logistic Regression stood out with better accu-racy than fancier models. That hints at how straightforward approaches might work just as well when spotting possible mental health issues. With an eye on obvious trends instead of heavy math, the method stays quick and easy to follow.

One thing stands clear: machines might help spot trouble before it grows. Spotting signs earlier means schools can step in faster - less guesswork, more care where it counts. Help arrives when needed, easing strain on student minds everywhere

Index Terms—College students; Mental health; Machine learn-ing; Logistic Regression; Early detection; Predictive modeling

How to Cite this Paper

BP, S., V, S., G, S. & K, S. (2026). Mental Health Risk Prediction for College Students Using Machine Learning. International Journal of Creative and Open Research in Engineering and Management, <i>02</i>(05). https://doi.org/10.55041/ijcope.v2i5.058

BP, Shreya, et al.. "Mental Health Risk Prediction for College Students Using Machine Learning." International Journal of Creative and Open Research in Engineering and Management, vol. 02, no. 05, 2026, pp. . doi:https://doi.org/10.55041/ijcope.v2i5.058.

BP, Shreya,Sheethal V,Sharvari G, and Sharanya K. "Mental Health Risk Prediction for College Students Using Machine Learning." International Journal of Creative and Open Research in Engineering and Management 02, no. 05 (2026). https://doi.org/https://doi.org/10.55041/ijcope.v2i5.058.

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References


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Ethical Compliance & Review Process

  • All submissions are screened under plagiarism detection.
  • Review follows editorial policy.
  • Authors retain copyright.
  • Peer Review Type: Double-Blind Peer Review
  • Published on: May 04 2026
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