Javascript must be enabled to continue!
Application of the Agent-Based Ontology Matching Technology in the Relational Database
View through CrossRef
As the relational database be the main data storage mode, but the traditional keyword based syntactic matching defects in precision and recall. This paper provides a ontology matching mechanisms for relational database, which realizes the semantic level of the data retrieval by using the intelligent search technology from Agent and Ontology. The mechanism using DCL domain ontology, SQC services query policy, SearchPolicyMap mapping to solve the problems as data object description, retrieval conditions description, and the mapping between those two description. And provided the preconditions for the semantic matching under the relational database. Solve the semantic matching problem of interaction between human and Agent by the WI interface and CM mechanism . Solve the problem of interaction between Agent and relational database by the service customization Interface SBI. Finally, solve the problem of semantic retrieval and quantitative calculation by querying adapter QA and core algorithm CMA. The mechanism has a strong practicality and application domains independent. Can implement a specific level semantics of relational database retrieval through the application domain ontology creation and mapping configuration.
Title: Application of the Agent-Based Ontology Matching Technology in the Relational Database
Description:
As the relational database be the main data storage mode, but the traditional keyword based syntactic matching defects in precision and recall.
This paper provides a ontology matching mechanisms for relational database, which realizes the semantic level of the data retrieval by using the intelligent search technology from Agent and Ontology.
The mechanism using DCL domain ontology, SQC services query policy, SearchPolicyMap mapping to solve the problems as data object description, retrieval conditions description, and the mapping between those two description.
And provided the preconditions for the semantic matching under the relational database.
Solve the semantic matching problem of interaction between human and Agent by the WI interface and CM mechanism .
Solve the problem of interaction between Agent and relational database by the service customization Interface SBI.
Finally, solve the problem of semantic retrieval and quantitative calculation by querying adapter QA and core algorithm CMA.
The mechanism has a strong practicality and application domains independent.
Can implement a specific level semantics of relational database retrieval through the application domain ontology creation and mapping configuration.
Related Results
Autonomy on Trial
Autonomy on Trial
Photo by CHUTTERSNAP on Unsplash
Abstract
This paper critically examines how US bioethics and health law conceptualize patient autonomy, contrasting the rights-based, individualist...
2021 Census to Census Coverage Survey Matching Results.
2021 Census to Census Coverage Survey Matching Results.
The 2021 England and Wales Census was matched to the Census Coverage Survey (CCS). This was an essential requisite for estimating undercount in the Census. To ensure outputs could ...
A novel approach for learning Ontology from Relational Database: From the construction to the evaluation
A novel approach for learning Ontology from Relational Database: From the construction to the evaluation
Abstract
The aim of converting relational database into Ontology is to provide applications that are based on the semantic representation of the data. Whereas, representing...
A novel approach for learning ontology from relational database: from the construction to the evaluation
A novel approach for learning ontology from relational database: from the construction to the evaluation
AbstractThe aim of converting relational database into Ontology is to provide applications that are based on the semantic representation of the data. Whereas, representing the data...
FOntCell: Fusion of Ontologies of Cells
FOntCell: Fusion of Ontologies of Cells
AbstractHigh-throughput cell-data technologies such as single-cell RNA-Seq create a demand for algorithms for automatic cell classification and characterization. There exist severa...
Development and Evaluation of an Adolescents' Depression Ontology for Analyzing Social Data
Development and Evaluation of an Adolescents' Depression Ontology for Analyzing Social Data
This study aims to develop and evaluate an ontology for adolescents' depression to be used for collecting and analyzing social data. The ontology was developed according to the &am...
Grid Computing for Ontology Matching
Grid Computing for Ontology Matching
This chapter is examines the challenge of ontology matching in a grid environment in a scalable and high efficient way. For this, ontology matching approaches as well as grid compu...
Grid Computing for Ontology Matching
Grid Computing for Ontology Matching
This chapter is examines the challenge of ontology matching in a grid environment in a scalable and high efficient way. For this, ontology matching approaches as well as grid compu...

