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Robust Median Reversion Strategy for On-Line Portfolio Selection

机译:在线投资组合选择的鲁棒中值回归策略

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On-line portfolio selection has been attracting increasing interests from artificial intelligence community in recent decades.Mean reversion,as one most frequent pattern in financial markets,plays an important role in some state-of-the-art strategies.Though successful in certain datasets,existing mean reversion strategies do not fully consider noises and outliers in the data,leading to estimation error and thus non-optimal portfolios,which results in poor performance in practice.To overcome the limitation,we propose to exploit the reversion phenomenon by robust L1-median estimator,and design a novel on-line portfolio selection strategy named “Robust Median Reversion” (RMR),which makes optimal portfolios based on the improved reversion estimation.Empirical results on various real markets show that RMR can overcome the drawbacks of existing mean reversion algorithms and achieve significantly better results.Finally,RMR runs in linear time,and thus is suitable for large-scale trading applications.
机译:在最近几十年中,在线投资组合选择已引起人工智能界的越来越多的兴趣。作为金融市场上最常见的一种模式,均值回归在某些最新策略中起着重要作用。尽管在某些数据集中很成功,现有的均值回归策略没有充分考虑数据中的噪声和离群值,导致估计误差,从而导致投资组合不理想,从而导致在实践中表现不佳。为克服这种局限性,我们建议通过鲁棒的L1开发回归现象中值估计器,并设计了一种新颖的在线投资组合选择策略,称为“稳健中值回归”(RMR),该策略基于改进的回归估计来确定最佳投资组合。各种实际市场上的经验结果表明,RMR可以克服现有的弊端最后,RMR是线性运行的,因此适合大规模交易应用阳离子。

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