Optimization of k value and lag parameter of k-nearest neighbor algorithm on the prediction of hotel occupancy rates

Agus Subhan Akbar, R. H. Kusumodestoni
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引用次数: 2

Abstract

Hotel occupancy rates are the most important factor in hotel business management. Prediction of the rates for the next few months determines the manager's decision to arrange and provide all the needed facilities. This study performs the optimization of lag parameters and k values of the k-Nearest Neighbor algorithm on hotel occupancy history data. Historical data were arranged in the form of supervised training data, with the number of columns per row according to the lag parameter and the number of prediction targets. The kNN algorithm was applied using 10-fold cross-validation and k-value variations from 1-30. The optimal lag was obtained at intervals of 14-17 and the optimal k at intervals of 5-13 to predict occupancy rates of 1, 3, 6, 9, and 12 months later. The obtained k-value does not follow the rule at the square root of the number of sample data.
k-最近邻算法在酒店入住率预测中的k值和滞后参数优化
酒店入住率是酒店经营管理中最重要的因素。对未来几个月费率的预测决定了经理安排和提供所有所需设施的决定。本研究对酒店入住历史数据进行了k近邻算法的滞后参数和k值的优化。历史数据以监督训练数据的形式排列,每行的列数根据滞后参数和预测目标的数量而定。使用10倍交叉验证和1-30的k值变化来应用kNN算法。最佳滞后时间间隔为14-17,最佳k时间间隔为5-13,以预测1、3、6、9和12个月后的入住率。所获得的k值在样本数据的数量的平方根处不遵循规则。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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