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Causal Feature Selection for Individual Characteristics Prediction

机译:个体特征预测的因果特征选择

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People can be characterized by their demographic information and personality traits. Characterizing people accurately can help predict their preferences, and aid recommendations and advertising. A growing number of studies infer peoples characteristics from behavioral data. However, context factors make behavioral data noisy, making these data harder to use for predictive analytics. In this paper, we demonstrate how to employ causal identification on feature selection and how to predict individuals' characteristics based on these selected features. We use visitors' choice data from a large theme park, combined with personality measurements, to investigate the causal relationship between visitors characteristics and their choices in the park. We demonstrate the benefit of feature selection based on causal identification in a supervised prediction task for individual characteristics. Based on our evaluation, our models that trained with features selected based on causal identification outperformed existing methods.
机译:人们可以以其人口统计信息和人格特征为特征。准确地表征人们可以帮助预测他们的偏好,并援助建议和广告。越来越多的研究从行为数据推断出人们特征。但是,上下文因素使行为数据嘈杂,使这些数据更难用于预测分析。在本文中,我们演示了如何在特征选择和如何基于这些所选功能的特征选择和如何预测个人特征。我们使用来自大型主题公园的访客选择数据,与人格测量相结合,调查游客特征与公园中的选择之间的因果关系。我们展示了基于各个特征的监督预测任务中的因果识别特征选择的益处。基于我们的评估,我们的模型通过根据因果识别选择的特征培训的培训优于现有方法。

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