区间模糊共识决策模型及实验分析研究任务书

 2021-08-19 23:30:20

1. 毕业设计(论文)主要目标:

研究区间模糊共识决策有很大意义,它为专家参与有效性的理论反思提供另一种视角。基于不同理论视角的研究都将问题归结于利益诉求的表达,在选用哪些专家对问题进行决策时,参与结构的开放性会影响参与结构的有效性。是因为专家们不同学历水平、权利地位而不同的权重使决策过程不能达成共识,参与决策的过程会因为无法协调的矛盾而走向失败。这引起了我们队决策结构的反思,对共识决策形成的机理的探索将为决策结构的反思提供另一种可能。在研究共识决策的过程中,我们综合了关于共识研究和模糊研究的相关成果,涉及多个学科。在本文的研究中,涉及到了MATLAB、管理学、经济学等学科,有助于推动共识构建理论与实践的发展。一般情况下,共识决策的达成需要不断修改多个专家的初始意见并使之趋于一致,在对专家意见进行集结的时候由于利用不同的距离共识得到的共识的程度不同,寻找适合一个群体决策的距离公式在计算共识水平是群体决策的关键一步,如何选择最佳距离公式专从而得到最佳的群体共识目标往往是人们所关注的焦点问题,这也是本文所研究的内容,即研究群体集结时的距离公式具有重要的意义。尽管共识决策已经得到了很大的发展,但仍有一些点需要深入研究完善。在中外的研究成果中,大都涉及共识决策的方法以及如何进行最优决策的问题。往往较少研究当决策值是模糊区间的时的共识决策问题,本文研究的主要内容是比较不同的距离公式的区间模糊共识决策模型以及对其用MATLAB进行实验分析,最后得出最佳的距离公式。

2. 毕业设计(论文)主要内容:

本文主要分为三个部分,主要研究内容如下:

一.绪论。

介绍本文的研究背景、研究目标与研究意义,以及本文的研究思路,交代研究涉及的内容。首先介绍了模糊共识决策的研究背景然后是国内外研究现状,包括模糊群体决策方法研究现状和模糊共识群体决策方法研究现状。

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