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首页> 外文期刊>ACM transactions on knowledge discovery from data >Confidence Weighted Mean Reversion Strategy for Online Portfolio Selection
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Confidence Weighted Mean Reversion Strategy for Online Portfolio Selection

机译:在线投资组合选择的置信加权均值回归策略

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摘要

Online portfolio selection has been attracting increasing attention from the data mining and machine learning communities. All existing online portfolio selection strategies focus on the first order information of a portfolio vector, though the second order information may also be beneficial to a strategy. Moreover, empirical evidence shows that relative stock prices may follow the mean reversion property, which has not been fully exploited by existing strategies. This article proposes a novel online portfolio selection strategy named Confidence Weighted Mean Reversion (CWMR). Inspired by the mean reversion principle in finance and confidence weighted online learning technique in machine learning, CWMR models the portfolio vector as a Gaussian distribution, and sequentially updates the distribution by following the mean reversion trading principle. CWMR's closed-form updates clearly reflect the mean reversion trading idea. We also present several variants of CWMR algorithms, including a CWMR mixture algorithm that is theoretical universal. Empirically, CWMR strategy is able to effectively exploit the power of mean reversion for online portfolio selection. Extensive experiments on various real markets show that the proposed strategy is superior to the state-of-the-art techniques. The experimental testbed including source codes and data sets is available online.
机译:在线投资组合选择已引起数据挖掘和机器学习社区的越来越多的关注。所有现有的在线投资组合选择策略都将重点放在投资组合向量的第一顺序信息上,尽管第二顺序信息也可能有益于该策略。此外,经验证据表明,相对股票价格可能遵循均值回归属性,而现有策略尚未充分利用该均值回归属性。本文提出了一种新颖的在线投资组合选择策略,称为置信加权均值回归(CWMR)。受到金融领域的均值回归原理和机器学习中的置信度加权在线学习技术的启发,CWMR将投资组合矢量建模为高斯分布,并按照均值回归交易原理顺序更新分布。 CWMR的封闭式更新清楚地反映了均值回归交易的想法。我们还介绍了CWMR算法的几种变体,包括理论上通用的CWMR混合算法。根据经验,CWMR策略能够有效地利用均值回归功能进行在线投资组合选择。在各种实际市场上进行的大量实验表明,提出的策略优于最新技术。在线提供包括源代码和数据集的实验性测试平台。

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