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A Dynamic Pattern Recognition Approach Based on Neural Network for Stock Time-Series

机译:基于神经网络的库存时间系列动态模式识别方法

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摘要

Pattern theorem in financial time-series is one of the most important technical analysis methods in financial prediction. Recent researches have achieved big progresses in identifying and recognizing time-series patterns. And most of the recent works on time-series deal with this task by using static approaches and mainly focus on the recognition accuracy, but considering that recognition of patterns in financial time-series, especially for stock time-series, are always time-consuming rather than pattern recognition in other fields, a dynamic recognition approach is more preferable so that investment on stock pattern become executable. In this paper we propose a dynamic approach for extracting and recognizing the patterns in stock-series. In our approach a slide window with flexible length is defined for extracting feature vertexes in stock-series, and in addition, a dynamic perceptual important point (PIP) locating method is proposed based on the PIP locating method for avoiding the computation expense problem and an artificial neural network (ANN) approach is involved for pattern recognition and window length identification.
机译:金融时序中的模式定理是金融预测中最重要的技术分析方法之一。最近的研究取得了识别和识别时间序列模式的大进展。最近的大多数是如何通过使用静态方法和主要关注识别准确性的时间系列的工作,但考虑到识别金融时序中的模式,特别是对于库存时间系列,总是耗时除了在其他领域中的模式识别而不是模式识别,更优选一种动态识别方法,因此对库存模式的投资变得可执行。在本文中,我们提出了一种动态方法,用于提取和识别库存系列的模式。在我们的方法中,限定了具有灵活长度的滑动窗口,用于在库存系列中提取特征顶点,另外,基于PIP定位方法提出动态感知重要点(PIP)定位方法,以避免计算费用问题和一个人工神经网络(ANN)方法参与了模式识别和窗口长度识别。

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