Analyzing Decision-Making Approaches in Identifying Suspicious Diabetes
Patients: A Comparative Study of Rough Set, Soft Set, and Rough set
based Bayesian Decision Theory
- Sarfraz Ahmed,
- * SwapnilBharadwaj
Sarfraz Ahmed
The Assam Kaziranga University
Corresponding Author:sarfraz@kazirangauniversity.in
Author ProfileAbstract
This research compares decision-making techniques for diagnosing
diabetes, including Bayesian decision theory, rough set theory, and
fuzzy soft set theory. It discusses applying Bayesian decision theory
and rough set theory, utilizing the latter to approximate three-way
regions for patient classification. The study aims to provide effective
medication plans by considering uncertainty. It concludes that the
Bayesian rough set theory-based method identifies boundary regions for
further investigation. It suggests decision-making based on minimum
overall cost and provides a framework for more precise medical diagnoses
for diabetic patients.08 Jun 2024Submitted to Journal of Software: Evolution and Process 12 Jun 2024Submission Checks Completed
12 Jun 2024Assigned to Editor
26 Jun 2024Reviewer(s) Assigned