2021
DOI: 10.11144/javeriana.iued25.svmu
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Support Vector Machines Used for the Prediction of the Structural Conditions of Pipes in Bogota’s Sewer System

Abstract: Objective: this paper focused on: (i) developing a deterioration model based on support vector machines (SVM) from its regression approach to separate the prediction of the structural condition of sewer pipes from a classification by grades and predict the scores obtained by failures found in CCTV inspections; and (ii) comparing the prediction results of the proposed model with the ones obtained by a deterioration model based on SVM classification tasks to explore the advantages and disadvantages of their pred… Show more

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Cited by 2 publications
(1 citation statement)
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“…If no correlation or weak correlation was found to use a linear regression model, a SVM model could be used due to its ability to solve nonlinear problems using pattern recognition and function estimation (Hernández et al, 2021). SVM is used as a prediction tool, separating the sample into two planes, since solves the adjustment of a function that describes a relationship between X (object) and the answer Y using S (the data set) (Galarza-Molina, 2017).…”
Section: Support Vector Machinementioning
confidence: 99%
“…If no correlation or weak correlation was found to use a linear regression model, a SVM model could be used due to its ability to solve nonlinear problems using pattern recognition and function estimation (Hernández et al, 2021). SVM is used as a prediction tool, separating the sample into two planes, since solves the adjustment of a function that describes a relationship between X (object) and the answer Y using S (the data set) (Galarza-Molina, 2017).…”
Section: Support Vector Machinementioning
confidence: 99%