Book Details

EXPLAINABLE ARTIFICIAL INTELLIGENT MODEL FOR ACCURATE PREDICTIVE LEARNING

International Journal of Computer Science (IJCS) Published by SK Research Group of Companies (SKRGC)

Download this PDF format

Abstract

Explainable Artificial Intelligence (XAI) has emerged as a critical research domain aimed at enhancing the transparency, interpretability, and trustworthiness of complex machine learning models. While modern AI systems such as deep neural networks deliver high predictive accuracy, they often function as “black boxes,” making it difficult for users to understand how decisions are made. This limitation restricts their adoption in high-stakes domains such as healthcare, finance, autonomous systems, and industrial automation. This paper proposes an Explainable Artificial Intelligent (XAI) model designed for accurate predictive learning by integrating interpretable machine learning techniques with high-performance predictive algorithms. The proposed model combines feature attribution methods, post-hoc explanation techniques, and intrinsic interpretability mechanisms to improve transparency without sacrificing accuracy. Furthermore, it introduces a hybrid architecture that balances model complexity and interpretability, ensuring both robust prediction performance and human-understandable explanations. The study also evaluates the performance of the proposed model using standard datasets and compares it with traditional machine learning and deep learning models. Experimental results demonstrate that the XAI model achieves competitive accuracy while significantly improving interpretability

References

  1. M. T. Ribeiro, S. Singh, and C. Guestrin, “Why Should I Trust You?: Explaining the Predictions of Any Classifier,” KDD, 2016.
  2. S. Lundberg and S.-I. Lee, “A Unified Approach to Interpreting Model Predictions,” NeurIPS, 2017.
  3. D. Gunning, “Explainable Artificial Intelligence (XAI),” DARPA Program Report, 2019.
  4.  I. Goodfellow, Y. Bengio, and A. Courville, Deep Learning, MIT Press, 2016.
  5. Z. Lipton, “The Mythos of Model Interpretability,” Communications of the ACM, 2018.

Keywords

Explainable AI, Predictive Learning, Machine Learning, Model Interpretability, SHAP, LIME, Deep Learning, Feature Attribution.

Image
  • Format Volume 14, Issue 1, No 28, 2026
  • Copyright All Rights Reserved ©2026
  • Year of Publication 2026
  • Author Mrs. Susha K B, Dr. H Jayamangala
  • Reference IJCS-709
  • Page No 001-008

Copyright 2026 SK Research Group of Companies. All Rights Reserved.