Principles of Explainable Artificial Intelligence VOL-2 : Theory Models & Proofs
Overview
INTRODUCTION
Explainable Artificial Intelligence (XAI) has rapidly evolved into one of the most critical dimensions of modern AI research. As deep learning models have grown in size, complexity, and power, the opacity of their decision-making processes has raised significant concerns regarding fairness, accountability, regulatory compliance, trustworthiness, and ethical use. This book, Principles of Explainable Artificial Intelligence: Theory, Models & Proofs, written by Anshuman Mishra, addresses this global need by presenting a mathematically grounded, logically rigorous, and research-centric exploration of XAI principles.
The book is designed not only for students and beginners but also for researchers, practitioners, faculty members, competitive exam aspirants, and professionals seeking deep mathematical understanding behind the explainability mechanisms of AI systems. It emphasizes the foundational structures of interpretability-causal reasoning, attribution theory, game-theoretic fairness, statistical transparency, and formal mathematical proofs.
Rather than treating explainability tools like SHAP, LIME, or Grad-CAM as black-box techniques, this book dissects why these methods work, how they are derived mathematically, and what theoretical foundations justify their use. By combining classical mathematics, probability theory, statistical modeling, causal inference, and computational reasoning, this book enables the reader to understand explainability as a formal scientific discipline. THE PURPOSE OF THIS BOOK
The primary objective of this book is to bridge the gap between "practical explainability tools" and the deep mathematical frameworks upon which they are built. Many books in the market offer high-level descriptions or code-based tutorials on XAI techniques. However, few provide a rigorous mathematical treatment of the field.
This book offers:
- A clear understanding of the mathematical foundations behind explainability.
- Detailed proofs explaining why certain XAI methods satisfy fairness or attribution properties.
- Derivations of Shapley values from cooperative game theory.
- Detailed causal reasoning with do-calculus, DAGs, interventions, and counterfactuals.
- Gradient-level interpretability used in deep learning and large language models.
- Evaluation metrics with formal definitions and proofs.
- Demonstrations of how statistical inference and causality form the backbone of transparency in AI.
As AI systems increasingly influence critical decision-making areas-healthcare diagnoses, financial risk assessments, loan approvals, autonomous driving, medical imaging, legal judgments, industrial automation, and more-transparency becomes essential.
This book argues that explainability is not an optional feature; it is a fundamental requirement grounded in:
- Ethics: Preventing discrimination and biases in model outcomes.
- Trust: Helping users understand and trust AI-driven decisions.
- Accountability: Allowing organizations to justify automated decisions.
- Regulatory Compliance: Laws such as the EU AI Act, GDPR, and emerging Indian AI policies demand transparent AI.
- Debugging & Improvement: Interpretability helps identify model weaknesses and data inconsistencies.
- Safety: Especially crucial in autonomous and medical systems.
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Details
- ISBN-13: 9798275224139
- ISBN-10: 9798275224139
- Publisher: Independently Published
- Publish Date: November 2025
- Dimensions: 11 x 8.5 x 0.74 inches
- Shipping Weight: 1.81 pounds
- Page Count: 354
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