Back to Search Start Over

Data Partitioning for Parallel Entity Matching

Authors :
Kirsten, Toralf
Kolb, Lars
Hartung, Michael
Groß, Anika
Köpcke, Hanna
Rahm, Erhard
Publication Year :
2010

Abstract

Entity matching is an important and difficult step for integrating web data. To reduce the typically high execution time for matching we investigate how we can perform entity matching in parallel on a distributed infrastructure. We propose different strategies to partition the input data and generate multiple match tasks that can be independently executed. One of our strategies supports both, blocking to reduce the search space for matching and parallel matching to improve efficiency. Special attention is given to the number and size of data partitions as they impact the overall communication overhead and memory requirements of individual match tasks. We have developed a service-based distributed infrastructure for the parallel execution of match workflows. We evaluate our approach in detail for different match strategies for matching real-world product data of different web shops. We also consider caching of in-put entities and affinity-based scheduling of match tasks.<br />Comment: 11 pages

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.1006.5309
Document Type :
Working Paper