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Ingeniería, investigación y tecnología
On-line version ISSN 2594-0732Print version ISSN 1405-7743
Abstract
PEREZ-SALVADOR, Blanca Rosa; SANCHEZ-LORDMENDEZ, Carlos Gabriel and BAPTISTA-GONZALEZ, Héctor Alfredo. Binary classification to predict familiar thrombosis. Ing. invest. y tecnol. [online]. 2017, vol.18, n.4, pp.457-464. ISSN 2594-0732.
Thrombosis and other health problems can be difficult to diagnose. The diagnosis is a classification problem. In this work a classification problem is solved using free software on a database of patients from the National Institute of Perinatology Isidro Reyes Espinoza (Instituto Nacional de Perinatología Isidro Espinoza Reyes) with thrombosis problems. In this work the risk that a person will develop the disease mentioned was analyzed. The study includes, variables selection, imputation and analysis of two classification methods: one based on logistic regression and the other in the likelihood ratio. The results indicate that the likelihood ratio classification was better than logistic regression classification.
Keywords : binary classification; logistic regression; Neyman-Pearson lemma; deviance.