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Dive into the research topics where Yujiao Zhou is active.

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Featured researches published by Yujiao Zhou.


european conference on artificial intelligence | 2012

Large-scale interactive ontology matching: algorithms and implementation

Ernesto Jiménez-Ruiz; Bernardo Cuenca Grau; Yujiao Zhou; Ian Horrocks

In this paper we present the ontology matching system LogMap 2, a much improved version of its predecessor LogMap. LogMap 2 supports user interaction during the matching process, which is essential for use cases requiring very accurate mappings. Interactivity, however, imposes very strict scalability requirements; we are able to satisfy these requirements by providing real-time user response even for large-scale ontologies. Finally, LogMap 2 implements scalable reasoning and diagnosis algorithms, which minimise any logical inconsistencies introduced by the matching process.


international world wide web conferences | 2013

Making the most of your triple store: query answering in OWL 2 using an RL reasoner

Yujiao Zhou; Bernardo Cuenca Grau; Ian Horrocks; Zhe Wu; Jay Banerjee

Triple stores implementing the RL profile of OWL 2 are becoming increasingly popular. In contrast to unrestricted OWL 2, the RL profile is known to enjoy favourable computational properties for query answering, and state-of-the-art RL reasoners such as OWLim and Oracles native inference engine of Oracle Spatial and Graph have proved extremely successful in industry-scale applications. The expressive restrictions imposed by OWL 2 RL may, however, be problematical for some applications. In this paper, we propose novel techniques that allow us (in many cases) to compute exact query answers using an off-the-shelf RL reasoner, even when the ontology is outside the RL profile. Furthermore, in the cases where exact query answers cannot be computed, we can still compute both lower and upper bounds on the exact answers. These bounds allow us to estimate the degree of incompleteness of the RL reasoner on the given query, and to optimise the computation of exact answers using a fully-fledged OWL 2 reasoner. A preliminary evaluation using the RDF Semantic Graph feature in Oracle Database has shown very promising results with respect to both scalability and tightness of the bounds.


international semantic web conference | 2013

Complete Query Answering over Horn Ontologies Using a Triple Store

Yujiao Zhou; Yavor Nenov; Bernardo Cuenca Grau; Ian Horrocks

In our previous work, we showed how a scalable OWL 2 RL reasoner can be used to compute both lower and upper bound query answers over very large datasets and arbitrary OWL 2 ontologies. However, when these bounds do not coincide, there still remain a number of possible answer tuples whose status is not determined. In this paper, we show how in the case of Horn ontologies one can exploit the lower and upper bounds computed by the RL reasoner to efficiently identify a subset of the data and ontology that is large enough to resolve the status of these tuples, yet small enough so that the status can be computed using a fully-fledged OWL 2 reasoner. The resulting hybrid approach has enabled us to compute exact answers to queries over datasets and ontologies where previously only approximate query answering was possible.


Nature Precedings | 2011

LogMap 2.0: towards logic-based, scalable and interactive ontology matching

Ernesto Jiménez-Ruiz; Bernardo Cuenca Grau; Yujiao Zhou


national conference on artificial intelligence | 2014

Pay-as-you-go OWL query answering using a triple store

Yujiao Zhou; Yavor Nenov; Bernardo Cuenca Grau; Ian Horrocks


Journal of Artificial Intelligence Research | 2015

PAGOdA: pay-as-you-go ontology query answering using a datalog reasoner

Yujiao Zhou; Bernardo Cuenca Grau; Yavor Nenov; Mark Kaminski; Ian Horrocks


Description Logics | 2012

Efficient Upper Bound Computation of Query Answers in Expressive Description Logics

Yujiao Zhou; Bernardo Cuenca Grau; Ian Horrocks


Description Logics | 2015

PAGOdA: Pay−as−you−go ABox Reasoning

Yujiao Zhou; Bernardo Cuenca Grau; Yavor Nenov; Ian Horrocks


SWAT4LS | 2014

Querying Life Science Ontologies with SemFacet

Bernardo Cuenca Grau; Evgeny Kharlamov; Sarunas Marciuska; Dmitriy Zheleznyakov; Yujiao Zhou


Description Logics | 2014

Pay-as-you-go Ontology Query Answering Using a Datalog Reasoner.

Yujiao Zhou; Yavor Nenov; Bernardo Cuenca Grau; Ian Horrocks

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