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Airport Restroom Cleanliness Prediction Using Real Time User Feedback Data

机译:使用实时用户反馈数据的机场洗手间清洁度预测

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Large airports aim to offer a maximized experience to its passengers. A main contributor to customer experience is the cleanliness of restrooms, which is measured by feedback devices installed in restrooms at airports. This paper reviews to what extent real-time feedback data and classification techniques can be useful in practice to predict the cleanliness of restrooms. Within this topic, different class definitions of clean and unclean are introduced and a distinction is made between a combined prediction model that includes the entire environment and restroom specific prediction models that focus only on a single restroom. The dataset is imbalanced and visualizations show that there is class overlap. To overcame these limitations various sampling methods with two different encoding mechanisms are investigated. Sampling methods do not improve the performance of the combined prediction model but do improve the performance of some of the restroom-specific prediction models, especially those with a high class imbalance. The major cause of the unsatisfying performance is not class imbalance, but the data ambiguity that leads to class overlap. To obtain prediction models that are useful in practice, we provide recommendations regarding the dataset and how this should be enriched with features that are capable of distinguishing the two classes more clearly.
机译:大型机场旨在为旅客提供最大的体验。客户体验的主要贡献者是洗手间的清洁度,这是通过安装在机场洗手间中的反馈设备来衡量的。本文回顾了实时反馈数据和分类技术在实际中可用于预测洗手间清洁度的程度。在本主题内,介绍了干净和不干净的不同类定义,并且在包括整个环境的组合预测模型和仅针对单个洗手间的特定于洗手间的预测模型之间进行了区分。数据集不平衡,可视化显示存在类重叠。为了克服这些限制,研究了具有两种不同编码机制的各种采样方法。采样方法不会提高组合预测模型的性能,但会确实改善某些特定于洗手间的预测模型的性能,尤其是那些类别不均衡的模型。性能不令人满意的主要原因不是类不平衡,而是导致类重叠的数据歧义。为了获得在实践中有用的预测模型,我们提供了有关数据集的建议,以及应如何利用能够更清楚地区分这两个类别的功能来丰富这些建议。

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