Techniques for Missing Value Recovering in Imbalanced Databases: Application in a Marketing Database with Massive Missing Data | IEEE Conference Publication | IEEE Xplore

Techniques for Missing Value Recovering in Imbalanced Databases: Application in a Marketing Database with Massive Missing Data


Abstract:

Missing data in databases are considered to be one of the biggest problems faced on data mining application. This problem can be aggravated when there is massive missing ...Show More

Abstract:

Missing data in databases are considered to be one of the biggest problems faced on data mining application. This problem can be aggravated when there is massive missing data in the presence of imbalanced databases. Several techniques as imputation, classifiers and approximation of patterns have been proposed and compared, but these comparisons do not consider adverse conditions found in real databases. In this work, it is presented a comparison of techniques used to classify records from a real imbalanced database with massive missing data, where the main objective is the database pre-processing to recover and select records completely filled for a further application of the techniques. It was compared algorithms such as clustering, decision tree, artificial neural networks and Bayesian classifier. Through the results, it can be verified that the problem characterization and database understanding are essential steps for a correct techniques comparison in a real problem. It was observed that artificial neural networks are an interesting alternative for this kind of problem since it is capable to obtain satisfactory results even when dealing with real-world problems.
Date of Conference: 08-11 October 2006
Date Added to IEEE Xplore: 16 July 2007
ISBN Information:
Print ISSN: 1062-922X
Conference Location: Taipei, Taiwan

References

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