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Optimizing parameters of support vector machine using fast messy genetic algorithm for dispute classification
Affiliation:1. Nagoya Institute of Technology, Department of Computer Science, Gokisho, Showa, Nagoya, Aichi, 466-8555, Japan;2. University of the Ryukyus, Department of Electrical Engineering, Nakagami, Nishihara, Okinawa, 903-0213, Japan;1. Department of Computer Languages and Systems, University of Seville, Av Reina Mercedes S/N, 41012 Seville, Spain;2. School of Information Systems, Computing and Mathematics, Brunel University, Uxbridge, Middlesex UB7 7NU, United Kingdom;1. Department of Computer Science, Institute of Mathematics and Statistics, University of Sao Paulo, Rua do Matao, 1010, Cidade Universitaria, CEP 05508-090 Sao Paulo, SP, Brazil;2. Computing Institute, Federal University of Alagoas, Campus A.C. Simoes, BR 104, Norte, km 97, Cidade Universitaria, CEP 57072-970 Maceio, AL, Brazil;3. Department of Computer Systems, Institute of Mathematics and Computional Sciences, University of Sao Paulo, Avenida Trabalhador Sao-carlense, 400 Centro, CEP 13566-590 Sao Carlos, SP, Brazil
Abstract:Hybrid system is a potential tool to deal with construction engineering and management problems. This study proposes an optimized hybrid artificial intelligence model to integrate a fast messy genetic algorithm (fmGA) with a support vector machine (SVM). The fmGA-based SVM (GASVM) is used for early prediction of dispute propensity in the initial phase of public–private partnership projects. Particularly, the SVM mainly provides learning and curve fitting while the fmGA optimizes SVM parameters. Measures in term of accuracy, precision, sensitivity, specificity, and area under the curve and synthesis index are used for performance evaluation of proposed hybrid intelligence classification model. Experimental comparisons indicate that GASVM achieves better cross-fold prediction accuracy compared to other baseline models (i.e., CART, CHAID, QUEST, and C5.0) and previous works. The forecasting results provide the proactive-warning and decision-support information needed to manage potential disputes.
Keywords:Classification model  Hybrid intelligence  Optimization  Support vector machine  Fast messy genetic algorithm  Dispute prediction  Project management
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