DocumentCode
2805831
Title
Alternative Strategies to Explore the SNNB Algorithm Performance
Author
Laura Cruz, R. ; Joaquin Perez, O. ; Pazos R., R. ; Vanesa Landero, N. ; Alvarez H., V.M. ; Gomez S., C.G.
Author_Institution
Technological Institute of Cd. Madero, Mexico
fYear
2006
fDate
Nov. 2006
Firstpage
187
Lastpage
198
Abstract
Data mining is the process of extracting useful knowledge from large datasets. A subarea of data mining is the classification that induces a set of models for predicting the label of the unknown class. The Naive Bayes classifier is simple, efficient and robust; its performance has been improved by some works, which focused on finding an instances subset in a conditional way and selecting the appropriate classifier with the highest probability. In this paper we propose to modify the Selective Neighborhood based Naive Bayes (SNNB) algorithm, using and combining other distance measurements, instance organization, instance space search and model selection. The proposed combinations are aimed at exploring the classifying accuracy of the SNNB algorithm. Experimental results show that the best strategy found (using 26 datasets from the UCI repository) won in 15 cases and only lost in 3 cases
Keywords
Bayesian methods; Classification tree analysis; Data mining; Decision trees; Diversity reception; Extraterrestrial measurements; Machine learning algorithms; Niobium; Predictive models; Robustness;
fLanguage
English
Publisher
ieee
Conference_Titel
Artificial Intelligence, 2006. MICAI '06. Fifth Mexican International Conference on
Conference_Location
Mexico City, Mexico
Print_ISBN
0-7695-2722-1
Type
conf
DOI
10.1109/MICAI.2006.7
Filename
4022152
Link To Document