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Solving support vector machine classification problems and their applications to supplier selection.

机译:解决支持向量机分类问题及其在供应商选择中的应用。

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摘要

Recently, interdisciplinary (management, engineering, science, and economics) collaboration research has been growing to achieve the synergy and to reinforce the weakness of each discipline. Along this trend, this research combines three topics: mathematical programming, data mining, and supply chain management. A new pegging algorithm is developed for solving the continuous nonlinear knapsack problem. An efficient solving approach is proposed for solving the ν-support vector machine for classification problem in the field of data mining. The new pegging algorithm is used to solve the subproblem of the support vector machine problem. For the supply chain management, this research proposes an efficient integrated solving approach for the supplier selection problem. The support vector machine is applied to solve the problem of selecting potential supplies in the procedure of the integrated solving approach.;In the first part of this research, a new pegging algorithm solves the continuous nonlinear knapsack problem with box constraints. The problem is to minimize a convex and differentiable nonlinear function with one equality constraint and box constraints. Pegging algorithm needs to calculate primal variables to check bounds on variables at each iteration, which frequently is a time-consuming task. The newly proposed dual bound algorithm checks the bounds of Lagrange multipliers without calculating primal variables explicitly at each iteration. In addition, the calculation of the dual solution at each iteration can be reduced by a proposed new method for updating the solution.;In the second part, this research proposes several streamlined solution procedures of ν-support vector machine for the classification. The main solving procedure is the matrix splitting method. The proposed method in this research is a specified matrix splitting method combined with the gradient projection method, line search technique, and the incomplete Cholesky decomposition method. The method proposed can use a variety of methods for line search and parameter updating. Moreover, large scale problems are solved with the incomplete Cholesky decomposition and some efficient implementation techniques.;To apply the research findings in real-world problems, this research developed an efficient integrated approach for supplier selection problems using the support vector machine and the mixed integer programming. Supplier selection is an essential step in the procurement processes. For companies considering maximizing their profits and reducing costs, supplier selection requires seeking satisfactory suppliers and allocating proper orders to the selected suppliers. In the early stage of supplier selection, a company can use the support vector machine classification to choose potential qualified suppliers using specific criteria. However, the company may not need to purchase from all qualified suppliers. Once the company determines the amount of raw materials and components to purchase, the company then selects final suppliers from which to order optimal order quantities at the final stage of the process. Mixed integer programming model is then used to determine final suppliers and allocates optimal orders at this stage.
机译:最近,跨学科(管理,工程,科学和经济学)协作研究不断发展,以实现协同增效并加强每个学科的弱点。沿着这一趋势,本研究结合了三个主题:数学编程,数据挖掘和供应链管理。为解决连续非线性背包问题,开发了一种新的定位算法。提出了一种有效的解决方法,用于解决数据挖掘领域中用于分类问题的ν支持向量机。新的挂钩算法用于解决支持向量机问题的子问题。对于供应链管理,本研究针对供应商选择问题提出了一种有效的集成解决方案。应用支持向量机来解决集成求解方法中潜在供应商的选择问题。在本研究的第一部分,一种新的钉住算法解决了具有箱约束的连续非线性背包问题。问题在于最小化具有一个等式约束和盒式约束的凸且可微的非线性函数。固定算法需要计算原始变量,以在每次迭代时检查变量的边界,这通常是一项耗时的任务。新提出的双边界算法检查Lagrange乘法器的边界,而无需在每次迭代时显式计算原始变量。另外,可以通过提出一种新的更新解方法来减少每次迭代对偶解的计算。第二部分,本研究提出了几种支持向量机的简化流分类方法。主要的求解过程是矩阵分裂法。本研究中提出的方法是将梯度投影方法,线搜索技术和不完全Cholesky分解方法相结合的指定矩阵拆分方法。所提出的方法可以使用多种方法进行线搜索和参数更新。此外,通过不完全的Cholesky分解和一些有效的实现技术可以解决大规模问题。为了将研究结果应用到实际问题中,本研究使用支持向量机和混合整数为供应商选择问题开发了一种有效的集成方法。编程。选择供应商是采购过程中必不可少的步骤。对于考虑最大限度地提高利润和降低成本的公司,选择供应商需要寻找满意的供应商并将适当的订单分配给选定的供应商。在供应商选择的早期阶段,公司可以使用支持向量机分类来根据特定条件选择潜在的合格供应商。但是,公司可能不需要从所有合格的供应商那里购买。一旦公司确定了要采购的原材料和零件的数量,公司便选择最终供应商,以便在流程的最后阶段从中订购最优的订货数量。然后,在此阶段使用混合整数规划模型确定最终供应商并分配最佳订单。

著录项

  • 作者

    Kim, Gitae.;

  • 作者单位

    Kansas State University.;

  • 授予单位 Kansas State University.;
  • 学科 Engineering Industrial.;Operations Research.
  • 学位 Ph.D.
  • 年度 2011
  • 页码 123 p.
  • 总页数 123
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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