Abstract
The detection of outliers in the field of data mining (DM) and the process of knowledge discovery in databases (KDD) is of great interest in areas that require support systems for decision making. A straightforward application can be found in the financial area, where DM can potentially detect financial fraud or find errors produced by the users. Thus, it is essential to evaluate the veracity of the information, through the use of methods for the detection of unusual behaviors in the data. This paper proposes a method to detect values that are considered outliers in a database of nominal type data. The method implements a global algorithm of "k" closest neighbors, a clustering algorithm called k-means and a statistical method called chi-square. These techniques have been implemented on a database of clients who have requested a financial credit. The experiment was performed on a data set with 1180 tuples, where, outliers were deliberately introduced. The results showed that the proposed method is able to detect all the outliers entered.
| Original language | Spanish |
|---|---|
| Journal | Enfoque UTE. Revista de ingeniería científica |
| State | Published - 1 Jan 2020 |
Keywords
- Outlier; Data mining; KNN; Chi-square; Financial fraud
Projects
- 1 Finished
-
FOG Computing applied to monitoring devices used in assisted life environments (Environment Living); Study case: platform for the elderly.
Cedillo Orellana, I. P. (Director), Campos Argudo, K. P. (Researcher), Granda Juca, M. F. (Researcher), Ortiz Segarra, J. I. (Researcher), Parra Gonzalez, L. O. (Researcher), Acosta-Urigüen, M. I. (Research Associate), Erazo Garzon, L. X. (Research Associate), Orellana Cordero, M. P. (Research Associate), Bermeo Arpi, A. E. (Assimilated Technical Staff), Arias Ochoa, J. H. (Research Assistant) & Arteaga Garcia, E. J. (Research Assistant)
3/09/18 → 28/02/21
Project: Research
Cite this
- APA
- Author
- BIBTEX
- Harvard
- Standard
- RIS
- Vancouver