Query strategy for sequential ontology debugging

04/29/2010
by   Kostyantyn Shchekotykhin, et al.
0

Debugging of ontologies is an important prerequisite for their wide-spread application, especially in areas that rely upon everyday users to create and maintain knowledge bases, as in the case of the Semantic Web. Recent approaches use diagnosis methods to identify causes of inconsistent or incoherent ontologies. However, in most debugging scenarios these methods return many alternative diagnoses, thus placing the burden of fault localization on the user. This paper demonstrates how the target diagnosis can be identified by performing a sequence of observations, that is, by querying an oracle about entailments of the target ontology. We exploit a-priori probabilities of typical user errors to formulate information-theoretic concepts for query selection. Our evaluation showed that the proposed method significantly reduces the number of required queries compared to myopic strategies. We experimented with different probability distributions of user errors and different qualities of the a-priori probabilities. Our measurements showed the advantageousness of information-theoretic approach to query selection even in cases where only a rough estimate of the priors is available.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
07/20/2011

Interactive ontology debugging: two query strategies for efficient fault localization

Effective debugging of ontologies is an important prerequisite for their...
research
09/17/2012

RIO: Minimizing User Interaction in Ontology Debugging

Efficient ontology debugging is a cornerstone for many activities in the...
research
04/02/2019

Are Query-Based Ontology Debuggers Really Helping Knowledge Engineers?

Real-world semantic or knowledge-based systems, e.g., in the biomedical ...
research
09/05/2012

Direct computation of diagnoses for ontology debugging

Modern ontology debugging methods allow efficient identification and loc...
research
12/14/2016

Scalable Computation of Optimized Queries for Sequential Diagnosis

In many model-based diagnosis applications it is impossible to provide s...
research
01/16/2020

On Expert Behaviors and Question Types for Efficient Query-Based Ontology Fault Localization

We challenge existing query-based ontology fault localization methods wr...
research
02/14/2012

Active Diagnosis via AUC Maximization: An Efficient Approach for Multiple Fault Identification in Large Scale, Noisy Networks

The problem of active diagnosis arises in several applications such as d...

Please sign up or login with your details

Forgot password? Click here to reset