Randomized Explainable Machine Learning Models for Efficient Medical Diagnosis

Project Code :TCMAPY1905

Objective

The primary objective of this project is to develop and evaluate randomized explainable machine learning models that provide accurate, efficient, and interpretable solutions for medical diagnosis. The project aims to reduce computational complexity and training time while maintaining high diagnostic accuracy by integrating ensemble-based algorithms such as Random Forest, XGBoost, Stacking Classifier, and Voting Classifier. Additionally, it focuses on enhancing the transparency and interpretability of model decisions using explainable AI techniques, thereby assisting medical professionals in understanding the underlying reasoning behind predictions. This approach ensures reliable, fast, and trustworthy diagnostic support in healthcare environments.

Abstract

The integration of machine learning (ML) in medical diagnostics has significantly advanced the accuracy and efficiency of disease detection. However, conventional deep learning and deterministic models often face challenges such as high computational overhead and lack of interpretability, limiting their deployment in resource-constrained healthcare environments. This study presents a comprehensive analysis of randomized explainable machine learning models for efficient medical diagnosis. The proposed framework leverages ensemble-based classifiers—Random Forest, XGBoost Classifier, Stacking Classifier, and Voting Classifier—to balance predictive accuracy, computational efficiency, and interpretability. Randomization within these algorithms enhances generalization, reduces overfitting, and accelerates model training. Furthermore, explainability methods are incorporated to ensure transparent decision-making, aiding clinicians in understanding key diagnostic features influencing predictions. The comparative evaluation demonstrates that randomized ensemble classifiers achieve near state-of-the-art diagnostic performance while significantly lowering computational costs. This approach enables faster, reliable, and interpretable predictions suitable for time-sensitive medical applications, offering a promising pathway toward sustainable, explainable, and efficient healthcare AI systems.

Keywords: Randomized Machine Learning, Explainable AI, Medical Diagnosis, Random Forest, XGBoost, Ensemble Learning, Stacking Classifier, Voting Classifier, Computational Efficiency, Healthcare Analytics.

NOTE: Without the concern of our team, please don't submit to the college. This Abstract varies based on student requirements.

Block Diagram

Specifications

Hardware Requirements

Processor                                 - I3/Intel Processor

Hard Disk                                - 160GB

Key Board                              - Standard Windows Keyboard

Mouse                                     - Two or Three Button Mouse

Monitor                                   - SVGA

RAM                                       - 8GB

 

Software Requirements:

Operating System                   :  Windows 7/8/10

Server side Script                    :  HTML, CSS, Bootstrap & JS

Programming Language         :  Python

Libraries                                  :  Django, Pandas, Numpy, Tensorflow, Scikit-learn.

IDE/Workbench                      :  VS Code

Technology                             :  Python 3.10

Database                                 :  SQLite

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