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Realised volatility forecasting: A genetic programming approach

机译:已实现的波动率预测:一种遗传规划方法

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Forecasting daily returns volatility is crucial in finance. Traditionally, volatility is modelled using a time-series of lagged information only, an approach which is in essence a theoretical. Although the relationship of market conditions and volatility has been studied for decades, we still lack a clear theoretical framework to allow us to forecast volatility, despite having many plausible explanatory variables. This setting of a data-rich but theory-poor environment suggests a useful role for powerful model induction methodologies such as Genetic Programming. This study forecasts one-day ahead realised volatility (RV) using a GP methodology that incorporates information on market conditions including trading volume, number of transactions, bid-ask spread, average trading duration and implied volatility. The forecasting result from GP is found to be significantly better than that of the benchmark model from the traditional finance literature, the heterogeneous autoregressive model (HAR).
机译:预测每日收益率波动对金融至关重要。传统上,仅使用滞后信息的时间序列对波动率进行建模,这实际上是一种理论方法。尽管已经研究了市场条件和波动率的关系数十年,但尽管有许多合理的解释变量,我们仍缺乏清晰的理论框架来预测波动率。数据丰富但理论贫乏的环境的这种设置表明,对于强大的模型归纳方法(如遗传编程)而言,它发挥了重要作用。这项研究使用GP方法预测了未来一天的提前实现波动率(RV),该方法结合了有关市场情况的信息,包括交易量,交易数量,买卖价差,平均交易持续时间和隐含波动率。 GP的预测结果明显优于传统金融文献中的基准模型异质自回归模型(HAR)。

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