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Evolutionary rule-based system for IPO underpricing prediction

机译:基于进化规则的IPO估计预测系统

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Academic literature has documented for a long time the existence of important price gains in the first trading day of initial public offerings (IPOs).Most of the empirical analysis that has been carried out to date to explain underpricing through the offering structure is based on multiple linear regression. The alternative that we suggest is a rule-based system defined by a genetic algorithm using a Michigan approach. The system offers significant advantages in two areas, 1) a higher predictive performance, and 2) robustness to outlier patterns. The importance of the latter should be emphasized since the non-trivial task of selecting the patterns to be excluded from the training sample severely affects the results.We compare the predictions provided by the algorithm to those obtained from linear models frequently used in the IPO literature. The predictions are based on seven classic variables. The results suggest that there is a clear correlation between the selected variables and the initial return, therefore making possible to predict, to a certain extent, the closing price.
机译:学术文献已经凭借很长一段时间的初始公开发行(IPO)的第一届交易日的重要价格收益的存在。尽今已经进行了迄今为止通过提供结构解释估值的实证分析基于多个线性回归。我们建议的替代方案是由使用密歇根方法的遗传算法定义的基于规则的系统。该系统在两个方面提供了显着的优势,1)预测性能更高,2)对异常模式的鲁棒性。由于选择要从培训样本中排除的模式的非琐碎任务严重影响结果,因此应该强调后者的重要性。我们将算法提供的预测与IPO文献经常使用的线性模型进行比较。 。预测基于七个经典变量。结果表明,所选变量与初始返回之间存在明显的相关性,因此可以在一定程度上预测关闭价格。

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