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Interval Forecasting of Financial Time Series by Accelerated Particle Swarm-Optimized Multi-Output Machine Learning System

机译:加速粒子群优化多输出机学习系统的金融时间序列的间隔预测

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摘要

By providing a range of values rather than a point estimate, accurate interval forecasting is critical to the success of investment decisions in exchange rate markets. This work proposes a sliding-window metaheuristic optimization for interval-valued time series forecasting using multi-output least squares support vector regression (MLSSVR). The hyperparameters in MLSSVR are finetuned using an accelerated particle swarm optimization algorithm to yield the best predictions and fastest convergence. The proposed system has a graphical user interface that is developed in a computing environment and functions as a stand-alone application. The system is validated using stock prices as well as exchange rates and outputs are compared with published results. Finally, the proposed interval time series prediction method is tested in two case studies; one involves the daily Australian dollar and Japanese yen rates (AUD/JPY) and the other involves US dollar and Canadian dollar rates (USD/CAD). The proposed model is promising for interval time series forecasting.
机译:通过提供一系列价值而不是点估计,准确的间隔预测对于汇率市场的投资决策成功至关重要。这项工作提出了一种使用多输出最小二乘支持向量回归(MLSSVR)的间隔值时间序列预测的滑动窗口成群质优化。使用加速粒子群优化算法MLSSVR中的封闭表来产生最佳预测和最快的收敛性。所提出的系统具有图形用户界面,该图形用户界面在计算环境中开发,并用作独立应用程序。系统使用股票价格验证,并将汇率和产出与已发表的结果进行比较。最后,在两个案例研究中测试了所提出的间隔时间序列预测方法;人们涉及日常澳大利亚元和日元率(澳元/日元),另一个涉及美元和加拿大元利率(USD / CAD)。该拟议的模型是对间隔时间序列预测的承诺。

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