WITHDRAWN Building Trust in AI: The Crucial Role of Human Centered Machine Learning in Safety Critical Domains

Conference: Symposium on Data Science and Statistics (SDSS) 2025
05/01/2025: 1:15 PM - 2:45 PM MDT
Lightning 

Description

Abstract: The integration of machine learning (ML) models in safety-critical domains like aviation, healthcare etc., not only present significant opportunities but also pose serious challenges. ML /AI models implemented in the safety critical domain are known to improve performance and decision-making, but they also pose unacceptable dangers in various applications.

Firstly, the presentation focuses on the need for interpretable ML models emphasizing on the reliability, safety and trustworthiness.

Secondly presentation walks you through the success of Human in loop interpretable machine learning models and their role in bridging gap between domain experts and ML. In order to achieve model transparency, the presentation will go over the techniques like feature importance analysis, visualization tools and model-agnostics methods. Examples of these techniques are LIME and SHAP. Talk will also discuss the tactics for integrating the overcoming scalability challenges and human feedback loops.

Overall, the objectives of the Lightning Talk are to deliver a thorough understanding of impact and real-time application of human-in-the-loop interpretable ML models in safety-critical environments.

Keywords

Explainable AI

Interpretable Machine Learning

Safety Critical Domains 

Presenting Author

Akshata Moharir

First Author

Akshata Moharir

Tracks

Software & Data Science Technologies
Symposium on Data Science and Statistics (SDSS) 2025