Author:
Touazi Faycal,Boustil Amel
Abstract
Purpose
The purpose of this paper is to address the need for new approaches in locating items that closely match user preference criteria due to the rise in data volume of knowledge bases resulting from Open Data initiatives. Specifically, the paper focuses on evaluating SPARQL qualitative preference queries over user preferences in SPARQL.
Design/methodology/approach
The paper outlines a novel approach for handling SPARQL preference queries by representing preferences through symbolic weights using the possibilistic logic (PL) framework. This approach allows for the management of symbolic weights without relying on numerical values, using a partial ordering system instead. The paper compares this approach with numerous other approaches, including those based on skylines, fuzzy sets and conditional preference networks.
Findings
The paper highlights the advantages of the proposed approach, which enables the representation of preference criteria through symbolic weights and qualitative considerations. This approach offers a more intuitive way to convey preferences and manage rankings.
Originality/value
The paper demonstrates the usefulness and originality of the proposed SPARQL language in the PL framework. The approach extends SPARQL by incorporating symbolic weights and qualitative preferences.
Subject
Computer Networks and Communications,Information Systems
Reference41 articles.
1. Skyline queries over possibilistic RDF data;International Journal of Approximate Reasoning,2018
2. A fuzzy extension of SPARQL based on fuzzy sets and aggregators,2017
3. Fuzzy queries of social networks with FSA-SPARQL;Expert Systems with Applications,2018
4. Possibilistic preference networks;Information Sciences,2018
5. Combining RDF and SPARQL with CP-theories to reason about preferences in a linked data setting;Semantic Web,2020