Ontology alignment: A Content-Based Bayesian Approach
Vladimir Menkov, Paul Kantor

TL;DR
This paper introduces a Bayesian approach for ontology alignment using a probabilistic model to relate database fields, enabling more efficient integration of disparate data sources for timely information access.
Contribution
It presents a novel content-based Bayesian method for computing ontology alignment matrices, leveraging a flexible probabilistic regression model for improved data integration.
Findings
Effective computation of alignment matrix coefficients
Use of a probabilistic model for flexible generalization
Application to diverse data sources
Abstract
There are many legacy databases, and related stores of information that are maintained by distinct organizations, and there are other organizations that would like to be able to access and use those disparate sources. Among the examples of current interest are such things as emergency room records, of interest in tracking and interdicting illicit drugs, or social media public posts that indicate preparation and intention for a mass shooting incident. In most cases, this information is discovered too late to be useful. While agencies responsible for coordination are aware of the potential value of contemporaneous access to new data, the costs of establishing a connection are prohibitive. The problem grown even worse with the proliferation of ``hash-tagging,'' which permits new labels and ontological relations to spring up overnight. While research interest has waned, the need for…
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Taxonomy
TopicsAdvanced Text Analysis Techniques · Complex Network Analysis Techniques · Biomedical Text Mining and Ontologies
MethodsLogistic Regression
