Network-Based Financial Forecasting: A Statistical and Economic Analysis

Eduard Baitinger
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Abstract

One of the main challenges facing researchers and industry professionals for decades is the successful prediction of asset returns. This paper enriches this endeavor by an in-depth analysis of topological metrics of correlation networks applied to financial forecasting. While academic research often focuses on statistical performance metrics, industry professionals are more interested in the economic value-added of competing forecasting approaches. Since statistical significance does not automatically imply economic significance, this article devotes attention to both types of performance metrics. We show that the benchmark mean model is indeed difficult to beat when it comes to statistical performance metrics. However, considering economic metrics, network-based predictors generate a clear value-added, which also applies to the multi risky asset allocation dimension.
基于网络的财务预测:一个统计和经济分析
几十年来,研究人员和行业专业人士面临的主要挑战之一是成功预测资产回报。本文通过深入分析应用于财务预测的相关网络的拓扑度量来丰富这一努力。学术研究通常侧重于统计绩效指标,而行业专业人士对竞争预测方法的经济附加值更感兴趣。由于统计显著性并不自动意味着经济显著性,因此本文将重点关注这两种类型的性能指标。我们表明,当涉及到统计性能指标时,基准均值模型确实很难被击败。然而,考虑到经济指标,基于网络的预测产生了明显的增值,这也适用于多风险资产配置维度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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