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首页> 外文期刊>International journal of grid and high performance computing >Performance Analysis of Sequential and Parallel Neural Network Algorithm for Stock Price Forecasting
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Performance Analysis of Sequential and Parallel Neural Network Algorithm for Stock Price Forecasting

机译:序贯神经网络算法在股票价格预测中的性能分析

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摘要

The neural network is popular and used in many areas within the financial field, such as credit authorization screenings, regularities in security price movements, simulations of market behaviour, and so forth. In this research, the authors use a neural network technique for stock price forecasting of Great West Life, an insurance company based in Winnipeg, Canada. The Backpropagation algorithm is a popular algorithm to train a neural network. However, one drawback of traditional Backpropagation algorithm is that it takes a substantial amount of training time. To expedite the training process, the authors design and develop different parallel and multithreaded neural network algorithms. The authors implement parallel neural network algorithms on both shared memory architecture using OpenMP and distributed memory architecture using MPl and analyze the performance of those algorithms. They also compare the results with traditional auto-regression model to establish accuracy.
机译:神经网络在金融领域的许多领域中都很流行,并且使用广泛,例如信用授权筛选,证券价格变动的规律性,市场行为的模拟等等。在这项研究中,作者使用神经网络技术预测了位于加拿大温尼伯的保险公司Great West Life的股价。反向传播算法是一种训练神经网络的流行算法。然而,传统的反向传播算法的一个缺点是,它需要大量的训练时间。为了加快训练过程,作者设计和开发了不同的并行和多线程神经网络算法。作者在使用OpenMP的共享内存架构和使用MP1的分布式内存架构上实现并行神经网络算法,并分析了这些算法的性能。他们还将结果与传统的自回归模型进行比较以建立准确性。

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