用于金融时间序列预测的有监督自动编码器 MLP

Bartosz Bieganowski, Robert Slepaczuk
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引用次数: 0

摘要

本文研究了通过有监督自动编码器使用神经网络增强金融时间序列预测的问题,旨在提高投资策略的性能。它使用夏普比率和信息比率,具体研究了噪声增强和三重屏障标签对风险调整收益的影响。研究以标准普尔 500 指数、欧元/美元和 BTC/USD 作为交易资产,时间跨度为 2010 年 1 月 1 日至 2022 年 4 月 30 日。研究结果表明,有监督的自动编码器在均衡噪声增强和瓶颈大小的情况下,能显著提高策略的有效性。然而,过多的噪声和过大的瓶颈大小会影响性能,这就凸显了精确调整参数的重要性。本文还推导了一种可用于三重障碍标记的新型优化指标。本研究的结果具有重要的政策意义,表明金融机构和监管机构可以利用本文提出的技术来增强市场稳定性和投资者保护,同时也鼓励各金融行业采取更明智的战略性投资方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Supervised Autoencoder MLP for Financial Time Series Forecasting
This paper investigates the enhancement of financial time series forecasting with the use of neural networks through supervised autoencoders, aiming to improve investment strategy performance. It specifically examines the impact of noise augmentation and triple barrier labeling on risk-adjusted returns, using the Sharpe and Information Ratios. The study focuses on the S&P 500 index, EUR/USD, and BTC/USD as the traded assets from January 1, 2010, to April 30, 2022. Findings indicate that supervised autoencoders, with balanced noise augmentation and bottleneck size, significantly boost strategy effectiveness. However, excessive noise and large bottleneck sizes can impair performance, highlighting the importance of precise parameter tuning. This paper also presents a derivation of a novel optimization metric that can be used with triple barrier labeling. The results of this study have substantial policy implications, suggesting that financial institutions and regulators could leverage techniques presented to enhance market stability and investor protection, while also encouraging more informed and strategic investment approaches in various financial sectors.
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