We formally introduce a time series statistical learning method, called Adaptive Learning, capable of handling model selection, out-of-sample forecasting and interpretation in a noisy environment. Through simulation studies we demonstrate that the method can outperform traditional model selection techniques such as AIC and BIC in the presence of regime-switching, as well as facilitating window size determination when the Data Generating Process is time-varying. Empirically, we use the method to forecast S&P 500 returns across multiple forecast horizons, employing information from the VIX Curve and the Yield Curve. We find that Adaptive Learning models are generally on par with, if not better than, the best of the parametric models a posteriori, evaluated in terms of MSE, while also outperforming under cross validation. We present a financial application of the learning results and an interpretation of the learning regime during the 2020 market crash. These studies can be extended in both a statistical direction and in terms of financial applications.
翻译:我们正式引入了时间序列统计学习方法,称为适应学习,能够处理模型选择、超模预测和在吵闹的环境中解释。通过模拟研究,我们证明该方法可以比传统模型选择技术,如在系统转换时使用AIC和BIC, 以及当数据生成过程时间变换时促进窗口规模的确定。我们利用VIX曲线和Yield曲线的信息,利用该方法预测多个预测地平线的S & P 500回报。我们发现适应学习模式一般与后代模型的最佳参数相同,如果不是好的话,而是后代模型,同时在交叉验证中也好。我们在2020年市场崩溃期间对学习结果进行财务应用和对学习机制的解释。这些研究可以在统计方向和金融应用方面扩展。