启发式
认知重构
资源配置
产品(数学)
分解
计算机科学
运筹学
资源(消歧)
价值(数学)
工作(物理)
新产品开发
人力资源
数学优化
资源管理(计算)
管理科学
微观经济学
决策问题
简单(哲学)
启发式
平面图(考古学)
决策分析
决策论
风险分析(工程)
过程(计算)
决策支持系统
订单(交换)
运营管理
经济
作者
Damian R. Beil,Izak Duenyas,Stephen Leider,Jiawei Li,Anyan Qi
出处
期刊:Management Science
[Institute for Operations Research and the Management Sciences]
日期:2025-09-26
卷期号:72 (6): 5150-5170
标识
DOI:10.1287/mnsc.2021.01097
摘要
We experimentally study dynamic resource allocation decisions using product development as the context. A product manager must accept or reject a series of design improvement opportunities, given a limited budget. Human subjects perform well when the cost-to-implement is fixed throughout the project. However, in a more complex setting where the cost increases for the latter half of the project, subjects’ performance worsens substantially. We use the strategy frequency estimation method to analyze subjects’ decision mechanisms and find that many subjects are (a) mis-weighting future periods (underweighting in the simple case, overweighting in the complex) and (b) focusing on only the highest value opportunities. These heuristics perform poorly in the complex setting, leading to excess savings and are a counterproductive reaction to the cost increase. Top performers in the complex setting do well by decomposing the problem into two subproblems resembling the simpler setting, which they can handle nearly optimally. In a second study, we test managerial interventions based on prompting this decomposition approach to improve performance in the complex setting. Merely prompting subjects to consider problem decomposition is largely ineffective. However, additionally sharing a “best practice” budget plan that gives information about how and why top performers decompose the problem significantly improves performance. Our results highlight when decision makers will perform well or poorly in a dynamic resource allocation problem and show effective ways to reframe the problem and improve their performance. This paper was accepted by Vishal Gaur, operations management. Funding: The work of D. Beil, I. Duenyas, and J. Li was supported by the Ford Motor Company [Grant AWD006449]. Supplemental Material: The online appendix and data files are available at https://doi.org/10.1287/mnsc.2021.01097 .
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