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摘要: 现代的决策问题与传统环境相比具有两个特点, 首先是系统自动化水平的提高带来的大量原始数据, 另外则是由于现实决策问题的复杂性和不确定性导致的机理模型无法准确建立. 面对这样的特点, 传统的基于机理模型的决策方法无法得到有效应用, 于是, 大量的研究工作围绕基于数据的决策方法展开. 本文根据决策问题的性质从三个方面综述了当前被普遍关注和应用的基于数据的决策方法: 分类方法、决策分析方法和优化方法, 针对各种具体方法, 总结了该方法的特征、发展过程以及前景.Abstract: There are two distinguishing characteristics for modern decision making problems in comparison with the traditional situation: one is the availability of large amount of original data emerging with the development of system automation technology; the other is the complexity and uncertainty underlying the real-life decision problems, which make it infeasible to establish precise models. Traditional model-based decision making methodologies are inefficient under this circumstance. Therefore, a number of research works have been conducted on data-based decision making methodologies. This paper reviews the prevalent data-based decision making methodologies from three aspects based on the characteristics of the considered decision problems: classification methodology, decision analysis methodology, and optimization methodology. The characteristics, development history, and perspective are summarized for each specific methodology.
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Key words:
- Data-based /
- decision making /
- classification /
- decision analysis /
- optimization
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