Grey random dynamic multiple-attribute decision-making method

Haitao Li, Jiefang Wang, D. Luo, Dongyang Pang
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Abstract

In view of the uncertain multi-attribute decision-making problems when the state probabilities and options' attribute values are both three-parameter interval grey number, based on the application demand of risky investment decisions, a grey-stochastic risk dynamic multi-attribute decision making method based on Markov chain is proposed. The grey probability of state stochastic occurrence and the grey probability matrix of state stochastic transition are defined, then, the grey probability distribution of states at each future time is obtained based on the Markov chain transfer prediction method. Time weights are established by solving the optimization model, which is based on variance and time degree. Afterwards, the dynamic risk decision-making matrix is assembled into a static non-risk decision-making matrix. Finally, by means of constructing the optimal and inferior ideal projects, and based on Deng's grey relational analysis, the relative superior membership degree, which is used to measure the degree of each alternative project belonging to the optimal ideal project, can be figured out to rank the alternative projects. An example is presented to illustrate the effectiveness and feasibility of the proposed method.
灰色随机动态多属性决策方法
针对状态概率和期权属性值均为三参数区间灰数时的不确定多属性决策问题,根据风险投资决策的应用需求,提出了一种基于马尔可夫链的灰色随机风险动态多属性决策方法。定义了状态随机发生的灰色概率和状态随机转移的灰色概率矩阵,然后基于马尔可夫链转移预测方法得到了未来各时刻状态的灰色概率分布。通过求解基于方差和时间度的优化模型,建立时间权重。然后,将动态风险决策矩阵组装为静态非风险决策矩阵。最后,通过构建最优和次优理想方案,并基于Deng的灰色关联分析,求出各备选方案属于最优理想方案的程度的相对优隶属度,对备选方案进行排序。算例验证了该方法的有效性和可行性。
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