Predicting multivariate financial time series using neural networks: the Swiss bond case

Thomas Ankenbrand, M. Tomassini
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引用次数: 7

Abstract

Presents an integrated approach for modelling the behaviour of financial markets with artificial neural networks (ANNs). The method allows the forecasting of financial time series. Its originality lies in the fact that it is based on statistics and macroeconomics principles, integrating fundamental economic knowledge in a multivariate, nonlinear time-series ANN model. The core of the work is a feasibility analysis, which is seldom attempted in ANN work, consisting of a series of different univariate and multivariate, linear and nonlinear statistical tests. The enhancement of prior work is a sensitivity analysis with bootstrap as part of the feasibility analysis. The feasibility analysis evaluates the "a priori" chance of forecasting the defined system and helps in defining the topology of the ANN. The method is applied to a real-life case study with a few data samples.
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用神经网络预测多变量金融时间序列:瑞士债券案例
提出了一种用人工神经网络(ann)建模金融市场行为的综合方法。该方法可以对金融时间序列进行预测。它的独创性在于它基于统计学和宏观经济学原理,将基本经济学知识整合到多元非线性时间序列人工神经网络模型中。工作的核心是可行性分析,这是在人工神经网络工作中很少尝试的,它由一系列不同的单变量和多变量,线性和非线性统计检验组成。对先前工作的改进是将自举法作为可行性分析的一部分进行敏感性分析。可行性分析评估了预测已定义系统的“先验”机会,并有助于确定人工神经网络的拓扑结构。将该方法应用于具有少量数据样本的实际案例研究。
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