Human-aided Multi-Entity Bayesian Networks Learning from Relational Data
Cheol Young Park, Kathryn Blackmond Laskey

TL;DR
This paper proposes a framework for learning Multi-Entity Bayesian Networks (MEBNs) from data combined with expert knowledge, aiming to automate and improve the efficiency of modeling complex, uncertain, knowledge-rich domains.
Contribution
It introduces a novel MEBN learning framework that integrates data-driven methods with expert input, reducing manual effort and enhancing model quality.
Findings
The proposed framework outperforms manual modeling in development efficiency.
Experimental results show improved accuracy of MEBN models learned from data.
The approach effectively combines domain knowledge with data for better reasoning under uncertainty.
Abstract
An Artificial Intelligence (AI) system is an autonomous system which emulates human mental and physical activities such as Observe, Orient, Decide, and Act, called the OODA process. An AI system performing the OODA process requires a semantically rich representation to handle a complex real world situation and ability to reason under uncertainty about the situation. Multi-Entity Bayesian Networks (MEBNs) combines First-Order Logic with Bayesian Networks for representing and reasoning about uncertainty in complex, knowledge-rich domains. MEBN goes beyond standard Bayesian networks to enable reasoning about an unknown number of entities interacting with each other in various types of relationships, a key requirement for the OODA process of an AI system. MEBN models have heretofore been constructed manually by a domain expert. However, manual MEBN modeling is labor-intensive and…
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Taxonomy
TopicsBayesian Modeling and Causal Inference · Data Quality and Management · AI-based Problem Solving and Planning
