Abstract

Given the significance of skyline queries, they are incorporated in various modern applications including personalized recommendation systems as well as decision-making and decision-support systems. Skyline queries are used to identify superior data items in the database. Most of the previously proposed skyline algorithms work on a complete database where the data are always present (non-missing). However, in many contemporary real-world databases, particularly those databases with large cardinality and high dimensionality, such assumption is not necessarily valid. Hence, missing data pose new challenges if the processing skyline queries cannot easily apply those methods that are designed for complete data. This is due to the fact that imperfect data cause the loss of the transitivity property of the skyline method and cyclic dominance . This paper presents a framework called Optimized Incomplete Skyline (OIS) which utilizes a technique that simplifies the skyline process on a database with missing data and helps prune the data items before performing the skyline process. The proposed strategy assures that the number of the domination tests is significantly reduced. A set of experiments has been accomplished using both real and synthetic datasets aimed at validating the performance of the framework. The experiment results confirm that the OIS framework is indeed superior and steadily outperforms the current approaches in terms of the number of domination tests required to retrieve the skylines.

Highlights

  • Given the significance of skyline queries, they are incorporated in various modern applications including personalized recommendation systems as well as decision-making and decision-support systems

  • Missing data pose new challenges if the processing skyline queries cannot apply those methods that are designed for complete data

  • This is due to the fact that imperfect data cause the loss of the transitivity property of the skyline method and cyclic dominance

Read more

Summary

Search Search Results

By: Gulzar, Y (Gulzar, Yonis)[ 1 ] ; Alwan, AA (Alwan, Ali A.)[ 2 ] ; Turaev, S (Turaev, Sherzod)[ 3 ] View Web of Science ResearcherID and ORCID.

Funding Agency
A Framework for Identifying Skylines over Incomplete Data
DERIVING SKYLINE POINTS OVER DYNAMIC AND INCOMPLETE DATABASES
SaLSa: Computing the Skyline without scanning the whole sky
13. Skyline with presorting
17. Processing skyline queries in incomplete database
19. A Framework for Evaluating Skyline Queries over Incomplete Data
Full Text
Paper version not known

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call

Disclaimer: All third-party content on this website/platform is and will remain the property of their respective owners and is provided on "as is" basis without any warranties, express or implied. Use of third-party content does not indicate any affiliation, sponsorship with or endorsement by them. Any references to third-party content is to identify the corresponding services and shall be considered fair use under The CopyrightLaw.