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首页> 外文期刊>International journal of computers, communications and control >A Financial Embedded Vector Model and Its Applications to Time Series Forecasting
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A Financial Embedded Vector Model and Its Applications to Time Series Forecasting

机译:金融嵌入式矢量模型及其在时间序列预测中的应用

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Inspired by the embedding representation in Natural Language Processing (NLP), we develop a financial embedded vector representation model to abstract the temporal characteristics of financial time series. Original financial features are discretized firstly, and then each set of discretized features is considered as a “word” of NLP, while the whole financial time series corresponds to the “sentence” or “paragraph”. Therefore the embedded vector models in NLP could be applied to the financial time series. To test the proposed model, we use RBF neural networks as regression model to predict financial series by comparing the financial embedding vectors as input with the original features. Numerical results show that the prediction accuracy of the test data is improved for about 4-6 orders of magnitude, meaning that the financial embedded vector has a strong generalization ability.
机译:受自然语言处理(NLP)中的嵌入表示的启发,我们开发了一种金融嵌入式矢量表示模型,以抽象金融时间序列的时间特征。首先对原始财务特征进行离散化,然后将每个离散化特征集视为NLP的“词”,而整个财务时间序列则对应于“句子”或“段落”。因此,可以将NLP中的嵌入式矢量模型应用于财务时间序列。为了测试提出的模型,我们使用RBF神经网络作为回归模型,通过比较作为输入的金融嵌入向量与原始特征来预测金融系列。数值结果表明,测试数据的预测精度提高了约4-6个数量级,这意味着金融嵌入向量具有很强的泛化能力。

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