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Winning the Kaggle Algorithmic Trading Challenge with the Composition of Many Models and Feature Engineering

机译:通过多种模型和特征工程的组合赢得Kaggle算法交易挑战

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This letter presents the ideas and methods of the winning solution* for the Kaggle Algorithmic Trading Challenge. This analysis challenge took place between 11th November 2011 and 8th January 2012, and 264 competitors submitted solutions. The objective of this competition was to develop empirical predictive models to explain stock market prices following a liquidity shock. The winning system builds upon the optimal composition of several models and a feature extraction and selection strategy. We used Random Forest as a modeling technique to train all sub-models as a function of an optimal feature set. The modeling approach can cope with highly complex data having low Maximal Information Coefficients between the dependent variable and the feature set and provides a feature ranking metric which we used in our feature selection algorithm.
机译:这封信介绍了Kaggle算法交易挑战赛获奖解决方案*的想法和方法。这项分析挑战发生在2011年11月11日至2012年1月8日之间,共有264个竞争对手提交了解决方案。竞争的目的是建立经验预测模型,以解释流动性冲击后的股票市场价格。获奖系统建立在几个模型的最佳组合以及特征提取和选择策略的基础之上。我们使用随机森林作为建模技术,根据最佳功能集训练所有子模型。建模方法可以处理因变量和特征集之间具有较低的最大信息系数的高度复杂的数据,并提供一种在我们的特征选择算法中使用的特征等级度量。

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