Title :
Finding top-k semantically related terms from relational keyword search
Author :
Xiangfu Meng ; Jingyu Shao
Author_Institution :
Sch. of Electron. & Inf. Eng., Liaoning Tech. Univ., Huludao, China
Abstract :
Due to the insufficient knowledge of users about the database schema and content, most of them cannot easy to find appropriate keywords to express their query intentions. This paper proposes a novel approach, which can provide a list of keywords that semantically related to the set of given query keywords by analyzing the correlations between terms in database and query keywords. The suggestion would broaden the knowledge of users and help them to formulate more efficient keyword queries. To capture the correlations between terms in database and query keywords, a coupling relationship measuring method is proposed to model both the term intra- and intercouplings, which can reveal the explicit and implicit relationships between terms. For a given keyword query, based on the coupling relationships between terms, an order of terms in database is created for each query keyword and then the threshold algorithm (TA) is to expeditiously generate top-k ranked semantically related terms. The experiments demonstrate that our term coupling relationship measuring method can efficiently capture the semantic correlations between terms. The performance of top-k related term selection algorithm is also demonstrated.
Keywords :
query processing; relational databases; database content; database schema; query intentions; query keywords; relational keyword search; term coupling relationship measuring method; threshold algorithm; top-k ranked semantically related terms; top-k related term selection algorithm; top-k semantically related terms; Databases; Joints; Nickel; Relational database; keyword search; term coupling relationship; top-k selection;
Conference_Titel :
Data Science and Advanced Analytics (DSAA), 2014 International Conference on
DOI :
10.1109/DSAA.2014.7058119