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Towards an improved Adaboost algorithmic method for computational financial analysis

机译:迈向用于计算财务分析的改进的Adaboost算法

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Machine learning can process data intelligently, perform learning tasks and predict possible outputs in time series. This paper presents the use of our proposed machine learning algorithm; an Adaptive Boosting (Adaboost) algorithm, in analyzing and forecasting financial nonstationary data, and demonstrating its feasibility in financial trading. The data of future contracts are used in our analysis. The future used to test the Adaboost algorithm is a contract chosen to study future IF1711, which is combined by "HS300 index and Rb", the deformed steel bar future in Chinese stock market. The predicted data is compared with real world data to calculate accuracy and efficiency. The Adaboost algorithm is combined with an Average True Range-Relative Strength Index (ATR-RSI) strategy, so that it can be applied in automatic trading and therefore demonstrate its practical application We develop three additional algorithms to enable optimization, large sale simulations and comparing both the predicted and actual pricing values. We performed experiments and large scale simulations to justify our work. We have tested the accuracy and validity of our approach to improve its quality. In summary, our analysis and results show that our improved Adaboost algorithms may have useful and practical implications in nonstationary data analysis. (C) 2019 Elsevier Inc. All rights reserved.
机译:机器学习可以智能地处理数据,执行学习任务并预测时间序列中可能的输出。本文介绍了我们提出的机器学习算法的使用;一种自适应提升(Adaboost)算法,用于分析和预测金融非平稳数据,并证明其在金融交易中的可行性。未来合同的数据用于我们的分析。用于测试Adaboost算法的期货是选择用来研究期货IF1711的合约,该合约是与“ HS300指数和Rb”(中国股市中的变形钢筋期货)结合在一起的。将预测数据与实际数据进行比较,以计算准确性和效率。 Adaboost算法与平均真实范围相对强弱指数(ATR-RSI)策略相结合,因此可以应用于自动交易,因此证明了其实际应用。我们开发了三种其他算法,以实现优化,大型销售模拟和比较预测价格和实际价格。我们进行了实验和大规模模拟以证明我们的工作合理。我们已经测试了改进方法质量的准确性和有效性。总而言之,我们的分析和结果表明,改进的Adaboost算法在非平稳数据分析中可能具有有用和实际的意义。 (C)2019 Elsevier Inc.保留所有权利。

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