软件项目管理中的风险和不确定性评估:综合决策树和蒙特卡罗建模

Q3 Computer Science Radioelectronic and Computer Systems Pub Date : 2023-09-29 DOI:10.32620/reks.2023.3.17
Anastasiia Strielkina, Artem Tetskyi, Vladyslava Krasilshchykova
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引用次数: 0

摘要

本文的主题是软件项目管理背景下的风险和不确定性评估。本文讨论了项目经理在处理软件项目的复杂性和不断发展的技术需求所带来的不确定性时所面临的困难。本研究包括文献回顾、数据制作、可视化、统计分析和数学建模。本研究的目标是创建一种系统的方法,通过考虑软件开发中固有的不确定性来帮助项目经理做出决策,并找到可能成功地降低风险、改进决策并最终导致成功项目实施的方法和过程。执行了以下任务:通过检查决策理论的最新技术及其在软件项目管理中的应用来评估风险和不确定性;制定综合策略,将蒙特卡罗模拟与决策树相结合,以评估软件项目管理中的风险和不确定性;生成数据,将其可视化,并进行统计分析,以了解项目成果,成本和时间如何受到影响;使用决策树识别影响项目结果和决策的重要变量;使用蒙特卡罗模拟方法创建项目方案,并权衡每种方案的可能性;并为项目经理提供知识和建议,帮助他们做出明智的决策,成功地管理风险。方法。为了评估软件项目管理中的风险和不确定性,本文分析了目前常用的决策理论方法以及决策树和蒙特卡罗仿真技术。结果。本研究提供了关于项目结果、成本和持续时间在不同技术之间如何变化的深入见解。通过决策树显示对项目成功有实质性影响的关键因素。根据这项研究的发现,结合决策理论和统计分析使项目经理能够在不确定的情况下做出明智的决策。结论。项目经理可以通过应用这些前沿方法来改进决策制定、降低风险和整体项目的成功。为了使这些技术适应独特的软件项目管理环境和现实世界的情况,在实践中进一步的研究和实现是必要的。通过使用这些技术,软件开发部门将能够更好地管理项目的复杂性,并在设定的财务和时间参数内提供良好的结果。
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Risk and uncertainty assessment in software project management: integrating decision trees and Monte Carlo modeling
The evaluation of risk and uncertainty in the context of software project management is the subject of this paper. This paper discusses the difficulties faced by project managers in handling uncertainty brought on by the complex nature of software projects and the ever evolving requirements of technology. A review of the literature, data production, visualization, statistical analysis, and mathematical modeling are included in this study. The goal of this study is to create a methodical approach to assist project managers in making decisions by considering the inherent uncertainty in software development and to find approaches and procedures that may successfully reduce risks, improve decision-making, and eventually result in the implementation of successful projects. The following tasks were carried out: to evaluate risk and uncertainty by examining the state-of-the-art in decision theory and its applications in software project management; to develop an integrated strategy that blends Monte Carlo Simulation with Decision Trees to assess risk and uncertainty in software project management; to generate data, visualize it, and perform statistical analysis to comprehend how project outcomes, costs, and time are affected; to identify important variables affecting project results and decision-making using decision trees; to use Monte Carlo simulation to create project scenarios and weigh the likelihood of each; and to supply project managers with knowledge and suggestions to help them make informed decisions and successfully manage risks. Methods. To evaluate risk and uncertainty in software project management, this paper analyzes the decision theory approaches currently used as well as Decision Trees and Monte Carlo Simulation techniques. Results. This study offers thorough insights into how project results, costs, and duration vary among various techniques. The critical factors that have a substantial influence on project success are shown through decision trees. According to the study’s findings, combining decision theory and statistical analysis equips project managers to make wise decisions despite uncertainty. Conclusions. Project managers may improve decision making, risk reduction, and overall project success by applying these cutting-edge approaches. To adapt these techniques to unique software project management contexts and real-world situations, further study and implementation in practice are necessary. With the use of such techniques, the software development sector would be better able to manage the complexity of projects and provide good results within set financial and time parameters.
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来源期刊
Radioelectronic and Computer Systems
Radioelectronic and Computer Systems Computer Science-Computer Graphics and Computer-Aided Design
CiteScore
3.60
自引率
0.00%
发文量
50
审稿时长
2 weeks
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