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Technology transfer motivation analysis based on fuzzy type 2 signal detection theory

机译:基于模糊2型信号检测理论的技术转移动力分析

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摘要

This paper presents a complete study based on signal detection theory (SDT) for deciding the motivation factors that motivate academic researchers to participate in the technology transfer process (university-industry relationship). Moreover, this study determines the researchers' perception about the motivations strategies designed in universities. The paper focuses on positive motivation factors such as academic prestige, competition, generation of resources, the solution of complex problems, professional challenge, personal gains, personal gratification and the solution of society problems. The negative motivation factors studied in the paper are as follows: innovation environment, time required, and lack of incentive and fear of contravening university policies. The importance of SDT lies in the fact that it is a theory that can deal with observer perception and the ways in which choices are made. This paper proposes fuzzy sets type 2 in SDT to expand its potential and understand the decision of the researchers during the technology transfer process under conditions of uncertainty. Although fuzzy type 1 detection theory (FDT) allows signals to overlap (non-binary description), a complete representation of uncertainty is not incorporated. Thus, fuzzy type 2 signal detection theory (FDT2) is proposed to model the uncertainties and noise condition under technology transfer process. High standards of motivation can maintain and attract competent researchers at universities; thus, this paper deals in a deep fashion with all the main aspects about those motivation factors using FDT2.
机译:本文提出了一个基于信号检测理论(SDT)的完整研究,用于确定激励学术研究人员参与技术转让过程的动力因素(大学与产业之间的关系)。此外,这项研究确定了研究人员对大学设计的激励策略的看法。本文着重于积极的动机因素,例如学历,竞争,资源的产生,解决复杂问题,职业挑战,个人收获,个人满足和社会问题的解决。本文研究的负面动机因素如下:创新环境,所需时间,缺乏动机和害怕违反大学政策。 SDT的重要性在于它是一种可以处理观察者感知以及做出选择的方法的理论。本文提出了SDT中的模糊集类型2,以扩展其潜力并了解研究人员在不确定条件下技术转让过程中的决策。尽管模糊1型检测理论(FDT)允许信号重叠(非二进制描述),但不确定性的完整表示并未纳入其中。因此,提出了模糊2型信号检测理论(FDT2)对技术转移过程中的不确定性和噪声条件进行建模。高标准的动机可以维持并吸引大学中有能力的研究人员;因此,本文深入探讨了使用FDT2的那些动机因素的所有主要方面。

著录项

  • 来源
    《AI & society》 |2016年第2期|245-257|共13页
  • 作者单位

    School of Engineering, Tecnologico de Monterrey, Calle del Puente #222, Col. Ejidos de Huipulco, Tlalpan, C.P. 14380 Mexico City, D.F., Mexico;

    Arizona Science and Technology Enterprises (AzTE), Arizona State University, Phoenix, AZ, USA;

    School of Engineering, Tecnologico de Monterrey, Calle del Puente #222, Col. Ejidos de Huipulco, Tlalpan, C.P. 14380 Mexico City, D.F., Mexico;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Signal detection theory; Fuzzy logic type 2; Technology transfer motivation;

    机译:信号检测理论;模糊逻辑类型2;技术转让动机;

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