DocumentCode :
1759126
Title :
TRIP: An Interactive Retrieving-Inferring Data Imputation Approach
Author :
Zhixu Li ; Lu Qin ; Hong Cheng ; Xiangliang Zhang ; Xiaofang Zhou
Author_Institution :
Sch. of Comput. Sci. & Technol., Soochow Univ., Suzhou, China
Volume :
27
Issue :
9
fYear :
2015
fDate :
Sept. 1 2015
Firstpage :
2550
Lastpage :
2563
Abstract :
Data imputation aims at filling in missing attribute values in databases. Most existing imputation methods to string attribute values are inferring-based approaches, which usually fail to reach a high imputation recall by just inferring missing values from the complete part of the data set. Recently, some retrieving-based methods are proposed to retrieve missing values from external resources such as the World Wide Web, which tend to reach a much higher imputation recall, but inevitably bring a large overhead by issuing a large number of search queries. In this paper, we investigate the interaction between the inferring-based methods and the retrieving-based methods. We show that retrieving a small number of selected missing values can greatly improve the imputation recall of the inferring-based methods. With this intuition, we propose an inTeractive Retrieving-Inferring data imPutation approach (TRIP), which performs retrieving and inferring alternately in filling in missing attribute values in a data set. To ensure the high recall at the minimum cost, TRIP faces a challenge of selecting the least number of missing values for retrieving to maximize the number of inferable values. Our proposed solution is able to identify an optimal retrieving-inferring scheduling scheme in deterministic data imputation, and the optimality of the generated scheme is theoretically analyzed with proofs. We also analyze with an example that the optimal scheme is not feasible to be achieved in τ-constrained stochastic data imputation (τ-SDI), but still, our proposed solution identifies an expected-optimal scheme in τ-SDI. Extensive experiments on four data collections show that TRIP retrieves on average 20 percent missing values and achieves the same high recall that was reached by the retrieving-based approach.
Keywords :
data handling; database management systems; query processing; τ-SDI; τ-constrained stochastic data imputation; TRIP; World Wide Web; data imputation; deterministic data imputation; expected-optimal scheme; high imputation recall; inferring-based methods; interactive retrieving-inferring data imputation approach; missing attribute values; missing values; retrieving-based approach; retrieving-based methods; search queries; string attribute values; Databases; Educational institutions; Electronic mail; Merging; Optimal scheduling; System recovery; Web pages; Data Imputation; Data Repairing; Data imputation; Interactive Retrieving-Inferring; data repairing; interactive retrieving-inferring;
fLanguage :
English
Journal_Title :
Knowledge and Data Engineering, IEEE Transactions on
Publisher :
ieee
ISSN :
1041-4347
Type :
jour
DOI :
10.1109/TKDE.2015.2411276
Filename :
7056462
Link To Document :
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