- S. Abiteboul, R. Hull, and V. Vianu. Foundations of Databases. Addison-Wesley, 1995. Google ScholarDigital Library
- M. Arenas, L. E. Bertossi, and J. Chomicki. Consistent query answers in inconsistent databases. In PODS, 1999. Google ScholarDigital Library
- C. Batini and M. Scannapieco. Data Quality: Concepts, Methodologies and Techniques. Springer, 2006. Google ScholarDigital Library
- L. E. Bertossi, S. Kolahi, and L. V. S. Lakshmanan. Data cleaning and query answering with matching dependencies and matching functions. In ICDT, 2011. Google ScholarDigital Library
- G. Beskales, I. F. Ilyas, and L. Golab. Sampling the repairs of functional dependency violations under hard constraints. PVLDB, 2010. Google ScholarDigital Library
- G. Beskales, M. A. Soliman, I. F. Ilyas, and S. Ben-David. Modeling and querying possible repairs in duplicate detection. In VLDB, 2009. Google ScholarDigital Library
- P. Bohannon, W. Fan, M. Flaster, and R. Rastogi. A cost-based model and effective heuristic for repairing constraints by value modification. In SIGMOD, 2005. Google ScholarDigital Library
- L. Bravo, W. Fan, and S. Ma. Extending dependencies with conditions. In VLDB, 2007. Google ScholarDigital Library
- J. Chomicki and J. Marcinkowski. Minimal-change integrity maintenance using tuple deletions. Inf. Comput., 2005. Google ScholarDigital Library
- X. Chu, P. Papotti, and I. Ilyas. Holistic data cleaning: Put violations into context. In ICDE, 2013. Google ScholarDigital Library
- G. Cong, W. Fan, F. Geerts, X. Jia, and S. Ma. Improving data quality: Consistency and accuracy. In VLDB, 2007. Google ScholarDigital Library
- M. Dallachiesa, A. Ebaid, A. Eldawy, A. K. Elmagarmid, I. F. Ilyas, M. Ouzzani, and N. Tang. NADEEF: a commodity data cleaning system. In SIGMOD, 2013. Google ScholarDigital Library
- A. Ebaid, A. K. Elmagarmid, I. F. Ilyas, M. Ouzzani, J.-A. Quiané-Ruiz, N. Tang, and S. Yin. NADEEF: A generalized data cleaning system. PVLDB, 2013. Google ScholarDigital Library
- W. Fan. Dependencies revisited for improving data quality. In PODS, 2008. Google ScholarDigital Library
- W. Fan, F. Geerts, X. Jia, and A. Kementsietsidis. Conditional functional dependencies for capturing data inconsistencies. TODS, 2008. Google ScholarDigital Library
- W. Fan, F. Geerts, N. Tang, and W. Yu. Inferring data currency and consistency for conflict resolution. In ICDE, 2013. Google ScholarDigital Library
- W. Fan, X. Jia, J. Li, and S. Ma. Reasoning about record matching rules. PVLDB, 2009. Google ScholarDigital Library
- W. Fan, J. Li, S. Ma, N. Tang, and W. Yu. Interaction between record matching and data repairing. In SIGMOD, 2011. Google ScholarDigital Library
- W. Fan, J. Li, S. Ma, N. Tang, and W. Yu. Towards certain fixes with editing rules and master data. VLDB J., 2012. Google ScholarDigital Library
- I. Fellegi and D. Holt. A systematic approach to automatic edit and imputation. J. American Statistical Association, 1976.Google Scholar
- T. N. Herzog, F. J. Scheuren, and W. E. Winkler. Data Quality and Record Linkage Techniques. Springer, 2009. Google ScholarDigital Library
- S. Kolahi and L. Lakshmanan. On approximating optimum repairs for functional dependency violations. In ICDT, 2009. Google ScholarDigital Library
- C. Mayfield, J. Neville, and S. Prabhakar. ERACER: a database approach for statistical inference and data cleaning. In SIGMOD, 2010. Google ScholarDigital Library
- F. Naumann, A. Bilke, J. Bleiholder, and M. Weis. Data fusion in three steps: Resolving schema, tuple, and value inconsistencies. IEEE Data Eng. Bull., 2006.Google Scholar
- C. H. Papadimitriou. Computational Complexity. Addison Wesley, 1994.Google Scholar
- V. Raman and J. M. Hellerstein. Potter's Wheel: An interactive data cleaning system. In VLDB, 2001. Google ScholarDigital Library
- R. Singh and S. Gulwani. Learning semantic string transformations from examples. PVLDB, 2012. Google ScholarDigital Library
- M. Yakout, A. K. Elmagarmid, J. Neville, M. Ouzzani, and I. F. Ilyas. Guided data repair. PVLDB, 2011. Google ScholarDigital Library
Index Terms
- Towards dependable data repairing with fixing rules
Recommendations
Dependable Data Repairing with Fixing Rules
Challenge Papers, Experience Paper and Research PapersOne of the main challenges that data-cleaning systems face is to automatically identify and repair data errors in a dependable manner. Though data dependencies (also known as integrity constraints) have been widely studied to capture errors in data, ...
Interaction between Record Matching and Data Repairing
Central to a data cleaning system are record matching and data repairing. Matching aims to identify tuples that refer to the same real-world object, and repairing is to make a database consistent by fixing errors in the data by using integrity ...
Alliance Rules for Data Warehouse Cleansing
ICSPS '09: Proceedings of the 2009 International Conference on Signal Processing SystemsData Cleansing is an activity performed on the data sets of data warehouse to enhance and maintain the quality and consistency of the data. This paper addresses the problems related with dirty data, entrance of dirty data and detection of dirty data in ...
Comments