首页> 外文会议>International Conference on Neural Information Processing;ICONIP 2007 >Enhancing Existing Stockmarket Trading Strategies Using Artificial Neural Networks: A Case Study
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Enhancing Existing Stockmarket Trading Strategies Using Artificial Neural Networks: A Case Study

机译:使用人工神经网络增强现有的股票交易策略:一个案例研究

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Developing financially viable stockmarket trading systems is a difficult, yet reasonably well understood process. Once an initial trading system has been built, the desire usually turns to finding ways to improve the system. Typically, this is done by adding and subtracting if-then style rules, which act as filters to the initial buy/sell signal. Each time a new set of rules are added, the system is retested, and, dependant on the effect of the added rules, they may be included into the system. Naturally, this style of data snooping leads to a curve-fitting approach, and the resultant system may not continue to perform well out-of-sample. The authors promote a different approach, using artificial neural networks, and following their previously published methodology, they demonstrate their approach using an existing medium-term trading strategy as an example.
机译:开发在财务上可行的股票交易系统是一个困难的过程,但却是一个相当容易理解的过程。一旦建立了最初的交易系统,通常的愿望就是转向寻找改进系统的方法。通常,这是通过添加和减去if-then样式规则来完成的,这些规则充当初始购买/出售信号的过滤器。每次添加新的规则集时,都会对系统进行重新测试,并且根据所添加规则的效果,可以将它们包含在系统中。自然地,这种类型的数据侦听会导致采用曲线拟合方法,并且最终的系统可能无法继续执行出色的样本外处理。作者使用人工神经网络推广了一种不同的方法,并遵循他们先前发布的方法,以一个现有的中期交易策略为例来演示他们的方法。

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