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Designing, Implementing and Testing an Automated Trading Strategy Based on Dynamic Bayesian Networks, the Limit Order Book Information, and the Random Entry Protocol

机译:基于动态贝叶斯网络,限价单信息和随机输入协议的设计,实现和测试自动交易策略

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This paper evaluates, using the Random Entry Protocol technique, a high-frequency trading strategy based on a Dynamic Bayesian Network (DBN) that can identify predictive trend patterns in foreign exchange orden-driven markets. The proposed DNB allows simultaneously to represent expert knowledge of skilled traders in a model structure and to learn computationally from data information that reflects relevant market sentiment dynamics. The DBN is derived from a Hierarchical Hidden Markov Model (HHMM) that incorporates expert knowledge in its design and learns the trend patterns present in the market data. The wavelet representation is used to produce compact representations of the LOB liquidity dynamics that simultaneously reduces the time complexity of the computational learning and improves its precision. In previous works, this trading strategy has been shown to be competitive when compared with conventional techniques. However, these works failed to control for unwanted dependencies in the return series used for training and testing that may have skewed performance results to the positive side. This paper constructs key trading strategy estimators based on the Random Entry Protocol over the USD-COP data. This technique eliminates unwanted dependencies on returns and order flow while keeps the natural autocorrelation structure of the Limit Order Book (LOB). It is still concluded that the HHMM-based model results are competitive with a positive, statistically significant P/L and a well-understood risk profile. Buy-and-Hold results calculated over the testing period are provided for comparison reasons.
机译:本文使用随机进入协议技术评估基于动态贝叶斯网络(DBN)的高频交易策略,该策略可以识别由外汇交易驱动的市场中的预测趋势模式。提出的DNB可以在模型结构中同时表示熟练交易员的专业知识,并可以从反映相关市场情绪动态的数据信息中进行计算学习。 DBN从分层隐马尔可夫模型(HHMM)派生而来,该模型在其设计中结合了专家知识,并了解了市场数据中存在的趋势模式。小波表示法用于生成LOB流动性动态的紧凑表示法,同时降低了计算学习的时间复杂度并提高了其精度。在以前的工作中,与传统技术相比,该交易策略已显示出竞争优势。但是,这些工作无法控制用于培训和测试的收益系列中不必要的依赖关系,这些依赖关系可能会使绩效结果偏向积极方面。本文基于USD-COP数据上的随机进入协议构造了关键的交易策略估计量。此技术消除了对退货和订单流的不必要依赖,同时保留了限价订单(LOB)的自然自相关结构。仍然得出结论,基于HHMM的模型结果具有正的,统计学上显着的P / L和易于理解的风险特征,具有竞争力。由于比较原因,提供了在测试期间计算的买入和持有结果。

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