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Designing an efficient predictor model using PSNN and crow search based optimization technique for gold price prediction

机译:基于PSNN和乌鸦搜索的黄金价格预测优化技术设计高效预测仪模型

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摘要

Predicting future price of gold has always been an intriguing field of investigation for researchers as well as investors who desire to invest in present and gain profit in the future. Since ancient time, ibidem is being arbitrated as a leading asset in monetary business. As the worth of gold changes within confined boundaries, reducing the effect of inflation, so it is a beneficial property favoured by many stakeholders. Hence, there is always an urge of a more authenticate model for forecasting the gold price based upon the changes in it in a previous time frame. This study focuses on designing an efficient predictor model using a Pi-Sigma Neural Network (PSNN) for forecasting future gold. The underlying motivation of using PSNN is its quick learning and easy implementation compared to other neural networks. The fixed unit weights used in between hidden and output layer of PSNN helps it in achieving faster learning speed compared to other similar types of networks. But estimating the unknown weights used in between the input and hidden layer is still a major challenge in its design phase. As final outcome of the network is highly influenced by its weight, so a novel Crow Search based nature inspired optimization algorithm (CSA) is proposed to estimate these adjustable weights of the network. The proposed model is also compared with Particle Swarm Optimization (PSO) and Differential Evolution (DE) based learning of PSNN. The model is validated over two historical datasets such as Gold/INR and Gold/AED by considering three statistical errors such as Mean Square Error (MSE), Root Mean Square Error (RMSE) and Mean Absolute Error (MAE). Empirical observations clearly show that, the developed CSA-PSNN predictor model is providing better prediction results compared to PSO-PSNN and DE-PSNN model.
机译:预测黄金的未来价格始终是研究人员的有趣调查领域以及渴望在未来投资目前的投资者和投资者。自古以来,Ibidem正在被仲裁作为货币业务的领先资产。由于狭窄的边界内的金变化变化,降低了通货膨胀的影响,因此它是许多利益相关者青睐的有益财产。因此,始终存在更验证的模型,用于根据先前的时间帧中的变化来预测黄金价格。本研究侧重于使用PI-Sigma神经网络(PSNN)设计有效的预测仪模型,用于预测未来金。与其他神经网络相比,使用PSNN的潜在动机是其快速学习和简单的实现。与其他类似类型的网络相比,隐藏和输出层之间使用的固定单位权重有助于实现更快的学习速度。但估计输入和隐藏层之间使用的未知权重仍然是其设计阶段的主要挑战。随着网络的最终结果受其重量的高度影响,因此提出了一种新颖的基于乌鸦搜索的自然灵感优化算法(CSA)来估计网络的这些可调权重。该拟议模型也与基于PSNN的粒子群优化(PSO)和差分演进(DE)进行了比较。通过考虑三个统计误差,如均线误差(MSE),根均线误差(RMSE)和平均误差(MAE),通过考虑三个统计误差(如Then Gold / InR和Gold / AED)验证了这两个历史数据集。经验观察清楚地表明,与PSO-PSNN和DE-PSNN模型相比,开发的CSA-PSNN预测器模型提供了更好的预测结果。

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