Constructing target-aware results for keyword search on knowledge graphs
Document Type
Article
Publication Date
7-1-2017
Abstract
Existing work of processing keyword searches on graph data focuses on efficiency of result generation. However, being oblivious to user search intention, a query result may contain multiple instances of user search target, and multiple query results may contain information for the same instance of user search target. With the misalignment between query results and search targets, a ranking function is unable to effectively rank the instances of search targets. In this paper we propose the concept of target-aware query results driven by inferred user search intention. We leverage the Information Theory and develop a general probability model to infer search targets by analyzing return specifiers, modifiers, relatedness relationships, and query keywords’ information gain. Then we propose two important properties for a target-aware result: atomicity and intactness. We develop techniques to efficiently generate target-aware results. Extensive experimental evaluation shows the effectiveness and efficiency of our approach.
Identifier
85015697199 (Scopus)
Publication Title
Data and Knowledge Engineering
External Full Text Location
https://doi.org/10.1016/j.datak.2017.02.001
ISSN
0169023X
First Page
1
Last Page
23
Volume
110
Recommended Citation
    Shan, Yi; Li, Mingda; and Chen, Yi, "Constructing target-aware results for keyword search on knowledge graphs" (2017). Faculty Publications.  9468.
    
    
    
        https://digitalcommons.njit.edu/fac_pubs/9468
    
 
				 
					