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Using Markov-switching models with Markov chain Monte Carlo inference methods in agricultural commodities trading

机译:采用Markov-Switching Models Markov Chain Monte Carlo推理方法在农产品交易

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In this work, the use of Markov-switching GARCH (MS-GARCH) models is tested in an active trading algorithm for corn and soybean future markets. By assuming that a given investor lives in a two-regime world (with low- and high-volatility time periods), a trading algorithm was simulated (from January 2000 to March 2019), which helped the investor to forecast the probability of being in the high-volatility regime att + 1. Once this probability was known, the investor could decide to invest either in commodities, during low-volatility periods or in the 3-month US Treasury bills, during high-volatility periods. Our results suggest that the Gaussian MS-GARCH model is the most appropriate to generate alpha or extra returns (from a passive investment strategy) in the corn market and thet-Student MS-GARCH is the best one for soybean trading.
机译:在这项工作中,在玉米和大豆未来市场的有源交易算法中测试了Markov-Switching GARCH(MS-GARCH)模型的使用。 假设给定的投资者生活在一个两个政权世界中(具有低波动时间段),模拟了一个交易算法(从2000年1月到2019年3月),这有助于投资者预测进入的可能性 高挥发性制度att + 1。一旦知道这种概率,投资者可以决定在低波动期间或在3个月的美国国债期间在高波动期内投资商品。 我们的研究结果表明,高斯MS-GARCH模型是最合适的玉米市场生成alpha或额外的回报(从被动投资策略),学生女士MS-Garch是最好的大豆交易。

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