企业管理辅导机制

V. Tsyganov
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引用次数: 14

摘要

不确定条件下企业管理的适应性机制是基于认知方法和对人为因素的考虑。在已知随机业务潜力概率特征的情况下,解决了随机业务潜力的分类问题。否则按照导师的指导进行分类。然后利用随机逼近法确定决策规则的最优参数。形成了管理层、导师和员工对商业潜力认识不对称的问题。研究表明,员工的不良活动可能会提供与潜力不相等的业务输出。这就转移了决策规则参数的评估。为了解决这个问题,管理者被认为是使用导师指导的学习者,当他们都没有意识到主动因素(员工)的潜力时。学习者的分类、排序和激励程序构成了辅导机制。主动系统由主动要素和中心组成,中心有导师和学习者管理子系统,具有辅导机制。活动单元选择自己的状态来最大化自己的目标函数。为活动元素定义了一组选项。证明了主动单元利用潜能的辅导机制综合的充分条件,并确定了决策规则的最优参数。通过构建大型企业俄罗斯铁路公司能源效率提高辅导机制的实例,对所得结果进行了说明。
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Tutoring Mechanisms of Business Management
Adaptive mechanisms of business management in conditions of uncertainty are based on a cognitive approach and consideration of a human factor. The task of classification of a random business potential is solved if its probabilistic characteristics are known. Otherwise classification with tutor's instructions is used. Then to determine the optimal parameter of the decision rule, a stochastic approximation is used. The problem of asymmetric awareness of management, tutor, and staff about business potential is formulated. It is shown that undesirable activity of staff can provide business output that is not equal to the potential. That shifts the assessment of decision rule parameter. To solve this problem, the manager is considered as Learner using the instructions of the Tutor, when both of them are not aware of the potential of the active element (staff). Learner's classification, ranking and incentive procedures constitute the tutoring mechanism. Then the active system as a whole consists of the active element, and the Center, which has a management subsystem, including Tutor and Learner with tutoring mechanism. The active element selects its state to maximize own aim function. The set of options for the active element is defined. Sufficient conditions are proved for the synthesis of the tutoring mechanism, in which active element uses the potential, and the optimal parameter of the decision rule is determined. The obtained results are illustrated by the example of constructing the tutoring mechanism for increasing energy efficiency of large-scale corporation Russian Railways.
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