RIFT: Pretraining and Applications for Representations of Interrelated Financial Time Series

Alik Sokolov, Joshua Kim, Brydon Parker, Benjamin Fattori, Luis Seco
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Abstract

This article introduces a new financial time-series representation model called representations of interrelated financial time series (RIFT). RIFT combines a novel pretraining task and neural network architecture to create generalized representations of multiple financial time-series inputs. The network uses a Siamese architecture to predict pairwise future correlations of securities; the encoder can then be used to create representations of individual securities for downstream tasks. Similar to successful applications of transfer learning in other domains, the authors test the representations on several downstream tasks common in quantitative finance, including dimensionality reduction, portfolio optimization, and portfolio reconstruction. In particular, the article introduces neural hierarchical risk parity (HRP), an improvement on the HRP algorithm, the current state of the art for portfolio optimization, and shows promising results across a variety of assessment criteria, including a 6.0% relative improvement in annualized returns and a 5.6% relative improvement in the Sharpe ratio.
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相关金融时间序列的预训练与应用
本文介绍了一种新的金融时间序列表示模型——关联金融时间序列表示(RIFT)。RIFT结合了一种新颖的预训练任务和神经网络架构,以创建多个金融时间序列输入的广义表示。该网络使用Siamese架构来预测证券未来的两两相关性;然后,编码器可用于为下游任务创建单个证券的表示。与迁移学习在其他领域的成功应用类似,作者在量化金融中常见的几个下游任务上测试了迁移学习的表示,包括降维、投资组合优化和投资组合重建。特别是,本文介绍了神经分层风险等价(HRP),这是HRP算法的改进,是投资组合优化的最新技术,并在各种评估标准中显示出令人满意的结果,包括年化回报率相对提高6.0%,夏普比率相对提高5.6%。
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Managing Editor’s Letter Explainable Machine Learning Models of Consumer Credit Risk Predicting Returns with Machine Learning across Horizons, Firm Size, and Time Deep Calibration with Artificial Neural Network: A Performance Comparison on Option-Pricing Models RIFT: Pretraining and Applications for Representations of Interrelated Financial Time Series
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