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Decision Tree Modeling Using Integrated Multilevel Stochastic Networks

机译:集成多级随机网络的决策树建模

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Decision trees (DTs) have proven to be valuable tools for decision making. The common approach for using DTs is calculating the expected value (EV) based on single-number estimates, but the single-number EV method has limited the DTs' real-life applications to a narrow scope of decision problems. This paper introduces the stochastic multilevel decision tree (MLDT) modeling approach, which is useful for analyzing decision problems characterized by uncertainty and complexity. The MLDT's advantages are shown through a computer simulation program: the Decision Support Simulation System (DSSS). The DSSS allows users to model probabilistic linear graph networks and provides a hierarchical modeling method for modeling decision trees to present uncertainties more accurately. It consists of three modules: tree analysis networks (TANs), the shortest and longest path dynamic programming analysis network, and cost time analysis networks. The paper only discusses the TAN module by presenting the MLDT concept under the TAN of the DSSS computer application. The content of the paper includes the modeling approach, its advantages, and examples that can be used in modeling stochastic trees. The DT-DSSS was verified by conducting several tests and validated by using it extensively for undergraduate courses in civil engineering at the University of Calgary for the last two academic years.
机译:事实证明,决策树(DT)是决策的重要工具。使用DT的常用方法是基于单数估计来计算期望值(EV),但是单数EV方法将DT的实际应用限制在决策问题的狭窄范围内。本文介绍了随机多级决策树(MLDT)建模方法,该方法可用于分析具有不确定性和复杂性的决策问题。 MLDT的优势通过计算机仿真程序得以展示:决策支持仿真系统(DSSS)。 DSSS允许用户对概率线性图网络进行建模,并提供用于对决策树进行建模以更准确地呈现不确定性的分层建模方法。它由三个模块组成:树分析网络(TAN),最短和最长路径动态编程分析网络以及成本时间分析网络。本文仅通过介绍DSSS计算机应用程序的TAN下的MLDT概念来讨论TAN模块。本文的内容包括建模方法,其优势以及可用于对随机树进行建模的示例。 DT-DSSS经过多次测试验证,并在过去两个学年中将其广泛用于卡尔加里大学土木工程本科课程。

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