Explainable Artificial Intelligence
Explainable Artificial Intelligence (XAI) aims to make the decision-making processes of complex AI models more transparent and understandable, addressing concerns about trust and accountability, particularly in high-stakes applications like healthcare and finance. Current research focuses on developing and evaluating various explanation methods, including those based on feature attribution (e.g., SHAP, LIME), prototype generation, and counterfactual examples, often applied to deep neural networks and other machine learning models. The ultimate goal is to improve the reliability and usability of AI systems by providing insights into their predictions and enhancing human-AI collaboration.
Papers
Explainable Artificial Intelligence: Precepts, Methods, and Opportunities for Research in Construction
Peter ED Love, Weili Fang, Jane Matthews, Stuart Porter, Hanbin Luo, Lieyun Ding
Explainable Artificial Intelligence in Construction: The Content, Context, Process, Outcome Evaluation Framework
Peter ED Love, Jane Matthews, Weili Fang, Stuart Porter, Hanbin Luo, Lieyun Ding