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Adequacy of training data for evolutionary mining of trading rules

机译:训练数据的进化挖掘训练数据的充足性

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A crucial issue related to data mining on time-series is that of training period duration. The training horizon used impacts the nature of rules obtained and their predictability over time. Longer training horizons are generally sought, in order to discern sustained patterns with robust training data performance that extends well into the predictive period. However, in dynamic environments patterns that persist over time may be unavailable, and shorter-term patterns may hold higher predictive ability, albeit with shorter predictive periods. Such potentially useful shorter-term patterns may be lost when the training duration covers much longer periods. Too short a training duration can, of course, be susceptible to over-fitting to noise. We conduct experiments using different training horizons with daily-data for the S&P500 index and report the sensitivity of the performance of the obtained rales with respect to the training durations. We show that while the performance of the rules in the training period is important for inducing the "best" rules, it is not indicative of their performance in the test-period and propose alternative measures that can be used to help identify the appropriate training durations.
机译:与时间序列数据挖掘有关的一个关键问题是训练时间的持续时间。使用的培训范围会影响所获得规则的性质及其随时间推移的可预测性。通常寻求更长的训练范围,以便通过良好的训练数据性能(可很好地延伸到预测期)来识别持续的模式。但是,在动态环境中,随时间推移而持续存在的模式可能不可用,而短期模式可能具有较高的预测能力,尽管预测周期较短。当训练持续时间长得多时,这种可能有用的短期模式可能会丢失。当然,训练时间过短可能会使噪声过度拟合。我们使用不同的训练视野和S&P500指数的每日数据进行实验,并报告获得的规则对训练持续时间的敏感性。我们表明,虽然规则在培训期间的表现对于诱导“最佳”规则很重要,但它并不表示它们在测试期间的表现,并提出了可用于帮助确定合适的训练持续时间的替代措施。

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