理解系统利益相关者行为的因果关系角色

Jaemun Sim, Kyoung-Yun Kim
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引用次数: 1

摘要

了解利益相关者的行为对于设计系统至关重要,因为系统应该满足和支持利益相关者,以便利益相关者采用该系统(Jiao & Chen, 2006)。理解涉众的行为需要了解他们如何在设计的系统中工作,以及他们如何对设计的产品做出反应。此外,如果我们能够理解为什么利益相关者以这种方式工作或响应,我们就可以预测利益相关者的行为。因果关系是指因果关系。因果关系对利益相关者行为分析至关重要。利益相关者行为的因果关系分析有助于系统的设计和分析,提供了三个方面的知识(即利益相关者行为对新系统的预测、新系统设计的动机和新系统本身)。这三种视角的具体例子如下:首先,我们可以建立一个利益相关者响应模型。该模型可以是社会科学中的结构假设模型(Biddle & Marlin, 1987;Bagozzi & Yi, 1988)和消费者对产品的认知模型(Khalid & Helander, 2004;李,2004)。其次,由模型推断(或评估)的涉众的不满意可以成为新系统的动机。最后,利益相关者行为的因果关系本身可以作为一个智能系统来实现。例如,可以将因果关系转换为数学模型,如运筹学模型(Shannon et al., 1980)。本文收集了四篇论文,其中前两篇主要研究了利益相关者行为预测,如合作知识共享与企业创新和客户对剃须产品心理反应之间的假设模型。另外两篇论文讨论了医疗保健访问调度系统的动机
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Roles of Causality for Understanding the Behavior of System Stakeholders
The understanding of stakeholder’s behavior is essential to design a system because the system should satisfy and support stakeholders for the stakeholders to adopt the system (Jiao & Chen, 2006). Understanding of stakeholders’ behavior requires knowledge about how they work in the designed system and how they respond to the designed product. Furthermore, if we can understand why the stakeholders work or respond in such a way, we can predict the behavior of stakeholders. The causality refers to the relationship between causes and effects. The causality is essential to stakeholder behavior analysis. The causality analysis of the stakeholder behaviour contributes to the system design and analysis by providing knowledge on three perspectives (i.e., the prediction of stakeholder behavior to the new system, the motivation of the new system design, and the new system itself). Specific examples for these three perspectives are following: first, we can build a stakeholder response model. The model can be a structural-hypothetic model in social science (Biddle & Marlin, 1987; Bagozzi & Yi, 1988) and customer’s cognition model for a product (Khalid & Helander, 2004; Li, 2004). Second, stakeholder’s dissatisfaction inferred by (or evaluated from) the model can be a motivation for a new system. Lastly, the causality of stakeholder’s behavior can be implemented as an intelligent system itself. For instance, the causality can be converted into a mathematical model like operations research model (Shannon et al., 1980). This issue gathers four papers among which the first two concentrate on stakeholder behavior prediction such as the hypothetical model between the cooperative knowledge sharing and firm’s innovativeness and the customer’s psychological response for a shaving product. The other two papers discuss about the healthcare visiting scheduling system motivated by
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