Analyzing Enterprise Attribute-Dependent KPIs/KGIs by Bayesian Network-Leveraging LDA

Yutaka Iwakami, Hironori Takuma, M. Iwashita
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Abstract

In product development, key performance indicators (KPIs) and key goal indicators (KGIs) have complex influences on each other. To understand the structure among them, Bayesian network analysis is one of effective methods. However, relationships among KPIs/KGIs often differ in attributes of enterprises, such as business type and annual sales. In this study, the authors incorporate topics obtained via latent Dirichlet allocation (LDA) into Bayesian network as nodes. With this “Bayesian network with topic nodes,” how KPIs affect the results of KGIs can be probabilistically inferenced and graphically observed according to attributes of enterprises. Furthermore, by configuring cultural or national differences as topic nodes, the proposed methods are expected to contribute overcoming barriers caused by these differences and accelerating improvement of product development in the global society.
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利用LDA的贝叶斯网络分析企业属性相关kpi / kgi
在产品开发过程中,关键绩效指标(kpi)与关键目标指标(kgi)之间存在着复杂的相互影响。要了解其中的结构,贝叶斯网络分析是有效的方法之一。然而,kpi / kgi之间的关系往往因企业的属性而异,例如业务类型和年销售额。在本研究中,作者将通过潜在狄利克雷分配(latent Dirichlet allocation, LDA)获得的主题作为节点纳入贝叶斯网络。有了这个“带有主题节点的贝叶斯网络”,kpi如何影响kgi的结果可以根据企业的属性进行概率推断和图形化观察。此外,通过将文化或民族差异配置为主题节点,所提出的方法有望有助于克服这些差异造成的障碍,加速全球社会产品开发的改进。
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