预测组合中的偏差-方差权衡与权重收缩

Bias–Variance Trade-Off and Shrinkage of Weights in Forecast Combination

Management Science · 2020
被引 20
人大 A+FT50UTD24ABS 4*

中文导读

研究了预测组合中均衡权重与最优权重的偏差-方差权衡,提出一种收缩方法以最小化期望误差,并在专业预测者调查数据上验证其有效性。

Abstract

Combining forecasts is an established approach for improving forecast accuracy. So-called optimal weights (OWs) estimate combination weights by minimizing errors on past forecasts. Yet the most successful and common approach ignores all training data and assigns equal weights (EWs) to forecasts. We analyze this phenomenon by relating forecast combination to statistical learning theory, which decomposes forecast errors into three components: bias, variance, and irreducible error. In this framework, EWs minimize the variance component (errors resulting from estimation uncertainty) but ignore the bias component (errors from under-sensitivity to training data). OWs, in contrast, minimize the bias and ignore the variance component. Reducing one component in general increases the other. To address this trade-off between bias and variance, we first derive the expected squared error of a combination using weights between EWs and OWs (technically, OWs shrunk toward EWs) and decompose it into the three error components. We then use the components to derive the shrinkage factor between EWs and OWs that minimizes the expected error. We evaluate the approach on forecasts from the Federal Reserve Bank of Philadelphia’s Survey of Professional Forecasters. For these forecasts, we first show that assumptions regarding the error distribution that are commonly used in theoretical analyses are likely to be violated in practice. We then demonstrate that our approach improves over EWs and OWs if the assumptions are met, for instance, as the result of using a standardization procedure for the training data. This paper was accepted by Han Bleichrodt, decision analysis.

预测组合权重收缩偏差-方差权衡最优权重