Go home now Header Background Image
Search
Submission Procedure
share: |
 
Follow us
 
 
 
 
Volume 15 / Issue 12

available in:   PDF (716 kB) PS (9 MB)
 
get:  
Similar Docs BibTeX   Write a comment
  
get:  
Links into Future
 
DOI:   10.3217/jucs-015-12-2287

 

Causality Join Query Processing for Data Streams via a Spatiotemporal Sliding Window

Oje Kwon (Pusan National University, South Korea)

Ki-Joune Li (Pusan National University, South Korea)

Abstract: Data streams collected from sensors contain a large volume of useful information including causal relationships. Causality join query processing involves retrieving a set of pairs (cause, effect) from streams of data. However, some causal pairs may be omitted from the query result, due to the delay between sensors and the data stream management system, and the limited size of the sliding window. In this paper, we first investigate temporal, spatial, and spatiotemporal aspects of causality join query processing for data streams. Second, we propose several strategies for sliding window management based on these results. The accuracy of the proposed strategies is studied via intensive experimentation. The result shows that we can improve the accuracy of causality join query processing in data streams with respect to the simple FIFO strategy.

Keywords: causality join query processing, data stream, spatiotemporal sliding window

Categories: H.3.3