Skyline Recommendation in Distributed Networks

Skyline Recommendation in Distributed Networks

Zhenhua Huang1, Jiawen Zhang1, Zheng Liu1, Bo Zhang2, and Dong Wang3

1School of Electronics and Information, Tongji University, China

2College of Information Mechanical and Electrical Engineering, Shanghai Normal University, China

3College of Computer Science and Information Engineering, Shanghai Institute of Technology, China

Abstract: Skyline recommendation technology has recently received a lot of attention in the database community. However, the existing works mostly focus on how to obtain skyline objects from fine-grained data in centralized environments. And the time cost of skyline recommendation will increase exponentially as the number of data and skyline recommendation instructions increases, which will seriously influence the recommendation efficiency. Motivated by the above fact, this paper proposes an efficient algorithm Skyline Recommendation Algorithm in Distributed Networks (SRADN) in Super-Peer Architecture (SPA) distributed networks to handle multiple subspace skyline recommendations by prestoring the set of skyline snapshots under the cost constraint of maintenance and communication. The proposed SRADN algorithm fully considers the characteristic of storage and communication of SPA networks, and uses the map/reduce distributed computation model. The SRADN algorithm can quickly produce the optimal set of skyline snapshots through the following two phases: Heuristically constructing the initial set of snapshots, and adjusting the set of snapshots based on the genetic algorithm. The detailed theoretical analyses and extensive experiments demonstrate that the proposed SRADN algorithm is both efficient and effective.

 

Keywords: Skyline recommendation, distributed networks, map/reduce, genetic algorithm.

Received August 30, 2014; accepted December 16, 2014

 

Read 2454 times Last modified on Wednesday, 08 May 2019 03:50
Share
Top
We use cookies to improve our website. By continuing to use this website, you are giving consent to cookies being used. More details…