Artigo Revisado por pares

On the relative importance of linear model and human judge(s) in combined forecasting

2012; Elsevier BV; Volume: 120; Issue: 1 Linguagem: Inglês

10.1016/j.obhdp.2012.08.003

ISSN

1095-9920

Autores

Matthias Seifert, Allègre L. Hadida,

Tópico(s)

Data Analysis with R

Resumo

When and to what extent should forecasts rely on linear model or human judgment? The judgmental forecasting literature suggests that aggregating model and judge using a simple 50:50 split tends to outperform the two inputs alone. However, current research disregards the important role that the structure of the task, judges' level of expertise, and the number of individuals providing a forecasting judgment may play. Ninety-two music industry professionals and 88 postgraduate students were recruited in a field experiment to predict chart entry positions of pop music singles in the UK and Germany. The results of a lens model analysis show how task structure and domain-specific expertise moderate the relative importance of model and judge. The study also delineates an upper boundary to which aggregating multiple judgments in model-expert combinations adds predictive accuracy. It is suggested that ignoring the characteristics of task and/or judge may lead to suboptimal forecasting performance.

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