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Ensembles of Decision Trees for Recommending Touristic Items

机译:推荐旅游项目的决策树组合

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This article analyzes the performance of ensembles of decision trees when applied to the task of recommending tourist items. The motivation comes from the fact that there is an increasing need to explain why a website is recommending some items and not others. The combination of decision trees and ensemble learning is therefore a good way to provide both interpretability and accuracy performance. The results demonstrate the superior performance of ensembles when compared to single decision tree approaches. However, basic colaborative filtering methods seem to perform better than ensembles in our dataset. The study suggests that the number of available features is a key aspect in order to get the true potential of this type of ensembles.
机译:本文在应用于推荐旅游项目的任务时,分析了决策树的序列的表现。动机来自这一事实,即越来越需要解释为什么一个网站推荐一些物品而不是其他物品。决策树和集合学习的结合因此是提供可解释性和准确性性能的好方法。结果表明,与单一决策树方法相比,乐合员的卓越性能。但是,基本的叠层过滤方法似乎比我们数据集中的集合更好。该研究表明,可用功能的数量是一个关键方面,以便获得这种类型的真实潜力。

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