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Hotel Reservations Analysis 🏨📊

This repository contains an exploration of hotel reservation data, including Exploratory Data Analysis (EDA), clustering using KMeans, and predictive analysis utilizing various machine learning models.

Overview 📝

This project explores hotel reservations data to extract insights and predict booking cancellations. The analysis includes data preprocessing, visualization, clustering, and predictive modeling techniques to enhance understanding and decision - making in the hospitality industry.

Contents 📂

  • EDA: Exploratory Data Analysis offers insights into the dataset, identifying trends, patterns, and relationships.
  • Clustering Analysis: Implementation of KMeans clustering for segmentation and customer profiling.
  • Predictive Analysis: Utilization of machine learning models (Logistic Regression, Naive Bayes, SVM, KNN, Decision Tree, Random Forest, XGBoost) to predict booking cancellations.

Summary of Results 📊📈

Prediction Model Accuracy Score
Logistic Regression 80.74%
Naive Bayes 44.27%
SVM Linear Kernel 80.29%
SVM Polynomial Kernel 82.66%
SVM RBF Kernel 83.85%
KNN 83.61%
Decision Tree 85.11%
Random Forest 90.07%
XGBoost 88.83%

Repository Structure 📁

  • /data: Contains the dataset used for analysis.
  • /notebooks: Jupyter notebooks for EDA, clustering, and predictive modeling.
  • /visualizations: Visual outputs generated from analysis.
  • /scripts: Useful scripts for data preprocessing and model training.