Abstract

The cancelation of bookings puts a considerable strain on management decisions in the case of the hospitability industry. Booking cancelations restrict precise predictions and are thus a critical tool for revenue management performance. However, in recent times, thanks to the availability of considerable computing power through machine learning (ML) approaches, it has become possible to create more accurate models to predict the cancelation of bookings compared to more traditional methods. Previous studies have used several ML approaches, such as support vector machine (SVM), neural network (NN), and decision tree (DT) models for predicting hotel cancelations. However, they are yet to address the class imbalance problem that exists in the prediction of hotel cancelations. In this study, we have shortened this gap by introducing an oversampling technique to address class imbalance problems, in conjunction with machine learning algorithms to better predict hotel booking cancelations. A combination of the synthetic minority oversampling technique and the edited nearest neighbors (SMOTE-ENN) algorithm is proposed to address the problem of class imbalance. Class imbalance is a general problem that occurs when classifying which class has more examples compared to others. Our research has shown that, after addressing the class imbalance problem, the performance of a machine learning classifier improves significantly.

Highlights

  • Revenue administration is the application of data frameworks and estimating schemes, and it is employed to assign correct proportions to an appropriate client at a genuine price [1]

  • To overcome the abovementioned shortcomings, this study introduces a synthetic minority oversampling technique and an edited nearest neighbors (SMOTE-ENN) algorithm to address the issue of class imbalance in the case of hotel booking cancelations

  • This study addressed the issue of class imbalance in hotel cancelation predictions

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Summary

Introduction

Revenue administration is the application of data frameworks and estimating schemes, and it is employed to assign correct proportions to an appropriate client at a genuine price [1]. As a classifier trained on an imbalanced dataset can become a challenge for hotel administrators, and they are unable to properly track which booking might cancel; actions are required to generate revenue for the hotel and manage the image of said hotel in the eyes of their customers This imbalanced distribution of classes exists in hotel booking cancelation classifications. To overcome the abovementioned shortcomings, this study introduces a synthetic minority oversampling technique and an edited nearest neighbors (SMOTE-ENN) algorithm to address the issue of class imbalance in the case of hotel booking cancelations. Our approach first utilizes the SMOTE-ENN to adjust class distributions It uses machine learning algorithms for hotel cancelation predictions.

Related Works
Methods
SMOTE-ENN
Modelling and Performance Evaluation
Method LR
Conclusions
Implications
Findings
Limitations and Directions for Further Research

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