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A novel dynamic asset allocation system using Feature Saliency Hidden Markov models for smart beta investing

机译:一种新的动态资产分配系统,使用特征固定马尔可夫模型进行智能测试版投资

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摘要

The financial crisis of 2008 generated interest in more transparent, rules-based strategies for portfolio construction, with smart beta strategies emerging as a trend among institutional investors. Whilst they perform well in the long run, these strategies often suffer from severe short-term drawdown (peak-to-trough decline) with fluctuating performance across cycles. To manage short term risk (cyclicality and underperformance), we build a dynamic asset allocation system using Hidden Markov Models (HMMs). We use a variety of portfolio construction techniques to test our smart beta strategies and the resulting portfolios show an improvement in risk-adjusted returns, especially on more return-oriented portfolios (up to 50% of return in excess of market adjusted by relative risk annually). In addition, we propose a novel smart beta allocation system based on the Feature Saliency HMM (FSHMM) algorithm that performs feature selection simultaneously with the training of the HMM, to improve regime identification. We evaluate our systematic trading system with real life assets using MSCI indices; further, the results (up to 60% of return in excess of market adjusted by relative risk annually) show model performance improvement with respect to portfolios built using full feature HMMs. (C) 2020 Elsevier Ltd. All rights reserved.
机译:2008年的金融危机产生了更加透明,基于规则的投资组合建设的策略,智能测试策略是制度投资者之间的趋势。虽然它们在长期执行良好的情况下,这些策略通常遭受严重的短期降低(峰谷下降),在周期上具有波动的性能。管理短期风险(周期性和不足),我们使用隐马尔可夫模型(HMMS)构建动态资产分配系统。我们使用各种组合施工技术来测试我们的智能测试策略,由此产生的投资组合显示风险调整的回报的改善,特别是在更多返回的投资组合上(每年通过相对风险调整的超过50%的返回率超过50%的回报)。此外,我们提出了一种基于特征显着性HMM(FSHMM)算法的新型智能β分配系统,该算法同时执行特征选择,以改善制度识别。我们使用MSCI指数评估了我们的系统交易系统,使用MSCI指标进行真实的资产;此外,结果(每年通过相对风险调整的超过60%的返回率超过60%)显示了使用完整功能HMMS构建的投资组合的模型性能改进。 (c)2020 elestvier有限公司保留所有权利。

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