信息准则在神经网络结构选择中的适用性

C. Haefke, C. Helmenstein
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引用次数: 1

摘要

在大多数资本市场的实证研究中,股票市场指数被用作总体市场发展的代理指标。在以前的工作中,我们发现维也纳证券交易所的一个特定细分市场可能比整个市场效率低,因此更容易预测。扩展本文的研究重点,我们使用前馈网络和线性模型来预测所有股票指数WBI以及涵盖高流动性、半流动性和首次公开募股(IPO)细分市场的各种子指数。为了阐明网络构建原则,我们比较了由hold- cross-validation (HCV)、Akaike(1974)的信息标准(AIC)和Schwartz(1978)的信息标准(SIC)选择的不同模型。然后根据样本外期的假设交易对预测进行评估。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The applicability of information criteria for neural network architecture selection
In most of the empirical research on capital markets, stock market indexes are used as proxies for the aggregate market development. In previous work we found that a particular market segment of the Vienna stock exchange might be less efficient than the whole market and hence easier to forecast. Extending the focus of investigation in the paper, we use feedforward networks and linear models to predict the all share index WBI as well as various subindexes covering the highly liquid, semi-liquid, and initial public offering (IPO) market segment. In order to shed some light on network construction principles, we compare different models as selected by hold-out cross-validation (HCV), Akaike's (1974) information criterion (AIC), and Schwartz' (1978) information criterion (SIC). The forecasts are subsequently evaluated on the basis of hypothetical trading in the out-of-sample period.
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