Sequential asset ranking in nonstationary time series

Gabriel Borrageiro, Nikan B. Firoozye, P. Barucca
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Abstract

We extend the research into cross-sectional momentum trading strategies. Our main result is our novel ranking algorithm, the naive Bayes asset ranker (nbar), which we use to select subsets of assets to trade from the S&P 500 index. We perform feature representation transfer from radial basis function networks to a curds and whey (caw) multivariate regression model that takes advantage of the correlations between the response variables to improve predictive accuracy. The nbar ranks this regression output by forecasting the one-step-ahead sequential posterior probability that individual assets will be ranked higher than other portfolio constituents. Earlier algorithms, such as the weighted majority, deal with nonstationarity by ensuring the weights assigned to each expert never dip below a minimum threshold without ever increasing weights again. Our ranking algorithm allows experts who previously performed poorly to have increased weights when they start performing well. Our algorithm outperforms a strategy that would hold the long-only S&P 500 index with hindsight, despite the index appreciating by 205% during the test period. It also outperforms a regress-then-rank baseline, the caw model.
非平稳时间序列中的顺序资产排序
我们将研究扩展到横截面动量交易策略。我们的主要成果是我们的新颖排名算法,朴素贝叶斯资产排名(nbar),我们使用它从标准普尔500指数中选择要交易的资产子集。我们将特征表示从径向基函数网络转移到凝乳和乳清(caw)多元回归模型,该模型利用响应变量之间的相关性来提高预测精度。nbar通过预测单个资产排名高于其他投资组合成分的前一步顺序后验概率,对回归输出进行排名。早期的算法,如加权多数算法,通过确保分配给每个专家的权重不会低于最小阈值而不会再次增加权重来处理非平稳性。我们的排名算法允许以前表现不佳的专家在开始表现良好时增加权重。尽管标普500指数在测试期间升值了205%,但我们的算法表现优于事后持有该指数的策略。它也优于回归-排名基线,即法律模型。
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