FOR IMPROVING USER SATISFACTION

Storing data in relational databases is widely increasing to support keyword queries but search results does not gives effective answers to keyword query and hence it is inflexible from user perspective. It would be helpful to recognize such type of queries which gives results with low ranking. Here we estimate prediction of query performance to find out effectiveness of a search performed in response to query and features of such hard queries is studied by taking into account contents of the database and result list. One relevant problem of database is the presence of missing data and it can be handled by imputation. Here an inTeractive Retrieving-Inferring data imputation method (TRIP) is used which achieves retrieving and inferring alternately to fill the missing attribute values in the database. So by considering both the prediction of hard queries and imputation over the database, we can get better keyword search results.

[1]  Luis Gravano,et al.  Efficient IR-Style Keyword Search over Relational Databases , 2003, VLDB.

[2]  Alon Y. Halevy,et al.  Data Integration for the Relational Web , 2009, Proc. VLDB Endow..

[3]  Shichao Zhang,et al.  Shell-neighbor method and its application in missing data imputation , 2011, Applied Intelligence.

[4]  Rahul Gupta,et al.  Answering Table Augmentation Queries from Unstructured Lists on the Web , 2009, Proc. VLDB Endow..

[5]  W. Bruce Croft,et al.  A Probabilistic Retrieval Model for Semistructured Data , 2009, ECIR.

[6]  Paul N. Bennett,et al.  Predicting Query Performance via Classification , 2010, ECIR.

[7]  Panayiotis Tsaparas,et al.  Structured annotations of web queries , 2010, SIGMOD Conference.

[8]  Yeye He,et al.  Keyword++ , 2010, Proc. VLDB Endow..

[9]  Jianmin Wang,et al.  SPARK2: Top-k Keyword Query in Relational Databases , 2011, IEEE Trans. Knowl. Data Eng..

[10]  Marianne Winslett,et al.  How schema independent are schema free query interfaces? , 2011, 2011 IEEE 27th International Conference on Data Engineering.

[11]  Oren Kurland,et al.  Back to the roots: a probabilistic framework for query-performance prediction , 2012, CIKM.

[12]  Vagelis Hristidis,et al.  Predicting the effectiveness of keyword queries on databases , 2012, CIKM.

[13]  Marta Indulska,et al.  WebPut: Efficient Web-Based Data Imputation , 2012, WISE.

[14]  Surajit Chaudhuri,et al.  InfoGather: entity augmentation and attribute discovery by holistic matching with web tables , 2012, SIGMOD Conference.

[15]  Vagelis Hristidis,et al.  Efficient Prediction of Difficult Keyword Queries over Databases , 2014, IEEE Transactions on Knowledge and Data Engineering.

[16]  Shuai Ma,et al.  Interaction between Record Matching and Data Repairing , 2014, JDIQ.

[17]  Hong Cheng,et al.  TRIP: An Interactive Retrieving-Inferring Data Imputation Approach , 2015, IEEE Transactions on Knowledge and Data Engineering.