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A multiple kernel learning-based decision support model for contractor pre-qualification

机译:基于多核学习的承包商资格预审决策支持模型

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摘要

Due to the complex nature of the contractor pre-qualification such as subjectivity, non-linearity and multi-criteria, advanced model should be required for achieving a high accuracy of this decision-making process. Previous studies have been conducted to build up quantitative decision models for contractor pre-qualification, among them artificial neural network (ANN) and support vector machine (SVM) have been proved to be desirable in solving the pre-qualification problem with regards to their higher accuracy and efficiency for solving the non-linear problem of classification. Based on the algorithm of SVM, multiple kernel learning (MKL) method was developed and it has been proved to perform better than SVM in other areas. Hence, MKL is proposed in this research, the capability of MKL was compared with SVM through a case study. From the result, it has been proved that both SVM and MKL perform well in classification, and MKL is more preferable than SVM, with a proper parameter setting. Therefore, MKL can enhance the decision making of contractor pre-qualification.
机译:由于承包商资格预审的复杂性,例如主观性,非线性和多重标准,因此需要高级模型来实现此决策过程的高精度。已经进行了先前的研究以建立承包商资格预审的定量决策模型,其中,人工神经网络(ANN)和支持向量机(SVM)已被证明对于解决承包商资格预审的较高问题是理想的。解决非线性分类问题的准确性和效率。基于支持向量机的算法,发展了多核学习(MKL)方法,并已证明在其他领域比支持向量机具有更好的性能。因此,本研究提出了MKL,并通过案例研究将MKL的功能与SVM进行了比较。从结果可以证明,SVM和MKL在分类上均表现良好,并且MKL比SVM更具有更好的参数设置。因此,MKL可以增强承包商资格预审的决策。

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