ClarifAI: Enhancing AI Interpretability and Transparency through Case-Based Reasoning and Ontology-Driven Approach for Improved Decision-Making
Srikanth Vemula

TL;DR
ClarifAI is a novel framework that combines case-based reasoning and ontologies to improve AI transparency and interpretability, especially in high-stakes decision-making contexts.
Contribution
It introduces a new ontology-driven, case-based reasoning approach to enhance AI interpretability and explanation capabilities.
Findings
Enhanced explanation mechanisms for AI decisions
Potential applications across various sectors
Improved stakeholder understanding of AI outputs
Abstract
This Study introduces Clarity and Reasoning Interface for Artificial Intelligence(ClarifAI), a novel approach designed to augment the transparency and interpretability of artificial intelligence (AI) in the realm of improved decision making. Leveraging the Case-Based Reasoning (CBR) methodology and integrating an ontology-driven approach, ClarifAI aims to meet the intricate explanatory demands of various stakeholders involved in AI-powered applications. The paper elaborates on ClarifAI's theoretical foundations, combining CBR and ontologies to furnish exhaustive explanation mechanisms. It further elaborates on the design principles and architectural blueprint, highlighting ClarifAI's potential to enhance AI interpretability across different sectors and its applicability in high-stake environments. This research delineates the significant role of ClariAI in advancing the interpretability…
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Taxonomy
TopicsExplainable Artificial Intelligence (XAI) · Big Data and Business Intelligence
