Demand Forecasting: Evidence-Based Methods

K. Green, J. Armstrong
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引用次数: 63

Abstract

We looked at evidence from comparative empirical studies to identify methods that can be useful for predicting demand in various situations and to warn against methods that should not be used. In general, use structured methods and avoid intuition, unstructured meetings, focus groups, and data mining. In situations where there are sufficient data, use quantitative methods including extrapolation, quantitative analogies, rule-based forecasting, and causal methods. Otherwise, use methods that structure judgement including surveys of intentions and expectations, judgmental bootstrapping, structured analogies, and simulated interaction. Managers' domain knowledge should be incorporated into statistical forecasts. Methods for combining forecasts, including Delphi and prediction markets, improve accuracy. We provide guidelines for the effective use of forecasts, including such procedures as scenarios. Few organizations use many of the methods described in this paper. Thus, there are opportunities to improve efficiency by adopting these forecasting practices.
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需求预测:基于证据的方法
我们研究了比较实证研究的证据,以确定可以用于预测各种情况下需求的方法,并对不应该使用的方法提出警告。一般来说,使用结构化方法,避免直觉、非结构化会议、焦点小组和数据挖掘。在有足够数据的情况下,使用定量方法,包括外推法、定量类比法、基于规则的预测法和因果法。否则,使用结构化判断的方法,包括意图和期望调查、判断引导、结构化类比和模拟交互。管理人员的领域知识应纳入统计预测。结合预测的方法,包括德尔菲和预测市场,提高了准确性。我们提供了有效使用预测的指导方针,包括情景等程序。很少有组织使用本文中描述的许多方法。因此,有机会通过采用这些预测实践来提高效率。
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