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Multivariate adaptive regression splines for analysis of geotechnical engineering systems
Institution:1. Department of Civil Engineering, University of Zabol, P.B. 9861335856, Zabol, Iran;2. Faculty of Computer Technologies and Eng., International Black Sea University, Tbilisi, Georgia;3. School of Natural Sciences and Engineering, Ilia State University, Tbilisi, Georgia;1. Department of Geoscience, University of Calgary, 2500 University Drive, Calgary, Alberta, T2N 1N4, Canada;2. Seven Generations Energy, 101,9601 - 113 St., Grande Prairie, Alberta, T8V 6H2, Canada;3. BRGM, French Geological Survey, 2 Avenue Claude Guillemin, BP 6009, 45060 Orléans CEDEX 2, France;4. TOTAL CSTJF, Avenue Larribau, Pau, F-64000, France;1. Centre for Offshore Foundation Systems and ARC CoE for Geotechnical Science and Engineering, The University of Western Australia, 35 Stirling Hwy, Crawley, WA 6009, Australia;2. ARC CoE for Geotechnical Science and Engineering, The University of Newcastle, Callaghan, NSW 2308, Australia;3. IMS Ingenieurgesellschaft mbH , A company in the Ramboll Group, Stadtdeich 7, 20097 Hamburg, Germany;1. Department of Accounting, Mashhad Branch, Islamic Azad University, Mashhad, Iran;2. Department of Accounting, Faculty of Economics and Business Administration, Ferdowsi University of Mashhad (FUM), Mashhad, Iran;3. Department of Statistics, School of Mathematical Sciences, University of Shahrood, Shahrood, Iran
Abstract:With the rapid increases in processing speed and memory of low-cost computers, it is not surprising that various advanced computational learning tools such as neural networks have been increasingly used for analyzing or modeling highly nonlinear multivariate engineering problems. These algorithms are useful for analyzing many geotechnical problems, particularly those that lack a precise analytical theory or understanding of the phenomena involved. In situations where measured or numerical data are available, neural networks have been shown to offer great promise for mapping the nonlinear interactions (dependency) between the system’s inputs and outputs. Unlike most computational tools, in neural networks no predefined mathematical relationship between the dependent and independent variables is required. However, neural networks have been criticized for its long training process since the optimal configuration is not known a priori. This paper explores the use of a fairly simple nonparametric regression algorithm known as multivariate adaptive regression splines (MARS) which has the ability to approximate the relationship between the inputs and outputs, and express the relationship mathematically. The main advantages of MARS are its capacity to produce simple, easy-to-interpret models, its ability to estimate the contributions of the input variables, and its computational efficiency. First the MARS algorithm is described. A number of examples are then presented that explore the generalization capabilities and accuracy of this approach in comparison to the back-propagation neural network algorithm.
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