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Data-Driven Decision Tree Classification for Product Portfolio Design Optimization

机译:产品组合设计优化的数据驱动决策树分类

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摘要

The formulation of a product portfolio requires extensive knowledge about the product market space and also the technical limitations of a company's engineering design and manufacturing processes. A design methodology is presented that significantly enhances the product portfolio design process by eliminating the need for an exhaustive search of all possible product concepts. This is achieved through a decision tree data mining technique that generates a set of product concepts that are subsequently validated in the engineering design using multilevel optimization techniques. The final optimal product portfolio evaluates products based on the following three criteria: (1) it must satisfy customer price and performance expectations (based on the predictive model) defined here as the feasibility criterion; (2) the feasible set of products/variants validated at the engineering level must generate positive profit that we define as the optimality criterion; (3) the optimal set of products/variants should be a manageable size as defined by the enterprise decision makers and should therefore not exceed the product portfolio limit. The strength of our work is to reveal the tremendous savings in time and resources that exist when decision tree data mining techniques are incorporated into the product portfolio design and selection process. Using data mining tree generation techniques, a customer data set of 40,000 responses with 576 unique attribute combinations (entire set of possible product concepts) is narrowed down to 46 product concepts and then validated through the multilevel engineering design response of feasible products. A cell phone example is presented and an optimal product portfolio solution is achieved that maximizes company profit, without violating customer product performance expectations.
机译:产品组合的制定需要对产品市场空间以及公司工程设计和制造过程的技术限制有广泛的了解。通过消除对所有可能的产品概念的详尽搜索的需求,提出了一种可显着增强产品组合设计流程的设计方法。这是通过决策树数据挖掘技术实现的,该技术生成了一组产品概念,随后在产品设计中使用多级优化技术对其进行了验证。最终的最佳产品组合根据以下三个标准评估产品:(1)它必须满足此处定义为可行性标准的客户价格和性能期望(基于预测模型); (2)在工程水平上验证的一组可行的产品/变体必须产生我们定义为最优性准则的正利润; (3)最佳的产品/变量集应该是企业决策者定义的可管理的大小,因此不应超过产品组合的限制。我们的工作实力是揭示将决策树数据挖掘技术整合到产品组合设计和选择过程中时所节省的时间和资源。使用数据挖掘树生成技术,将具有576个独特属性组合(整个可能的产品概念)的40,000个响应的客户数据集缩小为46个产品概念,然后通过可行产品的多级工程设计响应进行验证。给出了一个手机示例,并获得了一个最佳的产品组合解决方案,该解决方案可以在不违反客户产品性能预期的情况下,最大化公司的利润。

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  • 来源
    《Journal of Computing and Information Science in Engineering 》 |2009年第4期| 041004.1-041004.14| 共14页
  • 作者单位

    Department of Industrial and Enterprise Systems Engineering, University of Illinois at Urbana-Champaign, 104 S. Mathews Avenue, Urbana, IL 61801;

    Department of Industrial and Enterprise Systems Engineering, University of Illinois at Urbana-Champaign, 104 S. Mathews Avenue, Urbana, IL 61801;

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  • 正文语种 eng
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