Found 208 repositories(showing 30)
This repository contains a data science project focused on predicting hotel booking cancellations. Additionally, it includes a web application built with Streamlit for user interaction and visualization of the prediction results.
Predict hotel booking cancellations using ML techniques. By analyzing historical booking data, the model helps hotels proactively manage cancellations, optimize revenue strategies, and improve operational efficiencies.
mustozsarac
Booking cancellation prediction using hotel bookings data. Coded with Python on Jupyter Notebook.
kristinepetrosyan
Hotel Booking cancellations prediction
Malithi02
The "Ride Cancellation Prediction Model" project uses Python and machine learning to predict ride cancellations from the NCR Ride Bookings dataset. It involves data cleaning, feature engineering, model training with Logistic Regression and Random Forest, and real-time prediction with an interactive interface.
Hotel Booking Cancellation Prediction: A machine learning model that predicts the likelihood of hotel booking cancellations, deployed as a real-time web service using FastAPI and Docker. Enhance your hotel's operational efficiency, revenue optimization, and customer experience with data-driven decisions.
joshy-joy
Hotel cancellations can cause issues for many businesses in the industry. Not only is there the lost revenue as a result of the customer cancelling, but this can also cause difficulty in coordinating bookings and adjusting revenue management practices. Data analytics can help to overcome this issue, in terms of identifying the customers who are most likely to cancel — allowing a hotel chain to adjust its marketing strategy accordingly. To investigate how machine learning can aid in this task, the ExtraTreesClassifer, logistic regression, and support vector machine models were employed in Python to determine whether cancellations can be accurately predicted with this model. For this example, both hotels are based in Portugal. The Algarve Hotel dataset available from Science Direct was used to train and validate the model, and then the logistic regression was used to generate predictions on a second dataset for a hotel in Lisbon.
Binary prediction for hotel booking cancellation.
ijezykowa
Prediction of bookings cancellation in hotels
Jetfire-dev
Hotel Booking cancellation Prediction Project
ikashyaprahul
Prediction of hotel booking cancellations (IITM MLP KA2)
In-depth data analytics on Hotel booking demand dataset | Booking cancellation prediction | Time series analysis for forecasting
chloeling3
Revenue Management with Hotel Booking Cancellation Predictions using a Machine Learning Classification Model; written in Python.
This project explores ML techniques across classification and regression. It includes penguin species classification, breast cancer prediction, and baseball performance prediction using regularization. After, I will develop an XGBoost model for hotel cancellation prediction, analyzing key booking factors and optimizing performance. (In Progress)
rikasah
The Hotel Booking Prediction project will explain the workflow for assessing someone, whether to cancel the booking or not. This assessment is based on a machine learning algorithm, which will provide predictions to the customer who makes a booking, then from the data provided it will be predicted about the cancellation. This project also contains various analyzes obtained through EDA and provides various insights on hotels to develop their business more effectively.
HOTEL PREDICTION PROJECT DESCRIPTION ## Problem Statement This model predicts the probability of a customer will cancel a booking before checking in the hotel. It would be nice for the hotels to have a model to predict if a guest will actually come. This can help a hotel to plan things like personnel and food requirements. Maybe some hotels also use such a model to offer more rooms than they have to make more money. ## Dataset Information: This data set contains booking information for a city hotel and a resort hotel, and includes information such as when the booking was made, length of stay, the number of adults, children, and/or babies, and the number of available parking spaces, among other things. ## Attribute Information: * Hotel: Hotel (H1 = Resort Hotel or H2 = City Hotel) * is_canceled: Value indicating if the booking was cancelled (1) or not (0) * lead_time: Number of days that elapsed between the entering date of the booking into the PMS and the arrival date * arrival_date_year: Year of arrival date * arrival_date_month: Month of arrival date * arrival_date_week_number: Week number of year for arrival date * arrival_date_day_of_month: Day of arrival date * stays_in_weekend_nights: Number of weekend nights (Saturday or Sunday) the guest stayed or booked to stay at the hotel * stays_in_week_nights: Number of week nights (Monday to Friday) the guest stayed or booked to stay at the hotel * adults: Number of adults * children: Number of children * babies: Number of babies * meal: Type of meal booked. Categories are presented in standard hospitality meal packages: Undefined/SC – no meal package; BB – Bed & Breakfast; HB – Half board (breakfast and one other meal – usually dinner); FB – Full board (breakfast, lunch and dinner) * country: Country of origin. Categories are represented in the ISO 3155–3:2013 format * market_segment: Market segment designation. In categories, the term “TA” means “Travel Agents” and “TO” means “Tour Operators” * distribution_channel: Booking distribution channel. The term “TA” means “Travel Agents” and “TO” means “Tour Operators” * is_repeated_guest: Value indicating if the booking name was from a repeated guest (1) or not (0) * previous_cancellations: Number of previous bookings that were cancelled by the customer prior to the current booking * previous_bookings_not_canceled: Number of previous bookings not cancelled by the customer prior to the current booking * reserved_room_type: Code of room type reserved. Code is presented instead of designation for anonymity reasons * assigned_room_type: Code for the type of room assigned to the booking. Sometimes the assigned room type differs from the reserved room type due to hotel operation reasons (e.g. overbooking) or by customer request. Code is presented instead of designation for anonymity reasons * booking_changes: Number of changes/amendments made to the booking from the moment the booking was entered on the PMS until the moment of check-in or cancellation * deposit_type: Indication on if the customer made a deposit to guarantee the booking. This variable can assume three categories: No Deposit – no deposit was made; Non Refund – a deposit was made in the value of the total stay cost; Refundable – a deposit was made with a value under the total cost of stay * agent: ID of the travel agency that made the booking * company: ID of the company/entity that made the booking or responsible for paying the booking. ID is presented instead of designation for anonymity reasons * days_in_waiting_list: Number of days the booking was in the waiting list before it was confirmed to the customer * customer_type: Type of booking, assuming one of four categories: Contract - when the booking has an allotment or other type of contract associated to it; Group – when the booking is associated to a group; Transient – when the booking is not part of a group or contract, and is not associated to other transient booking; Transient-party – when the booking is transient, but is associated to at least other transient booking * adr: Average Daily Rate as defined by dividing the sum of all lodging transactions by the total number of staying nights * required_car_parking_spaces: Number of car parking spaces required by the customer * total_of_special_requests: Number of special requests made by the customer (e.g. twin bed or high floor) * reservation_status: Reservation last status, assuming one of three categories: Canceled – booking was cancelled by the customer; Check-Out – customer has checked in but already departed; No-Show – customer did not check-in and did inform the hotel of the reason why * reservation_status_date: Date at which the last status was set. This variable can be used in conjunction with the Reservation Status to understand when was the booking cancelled or when did the customer checked-out of the hotel ## Libraries Used: * pandas * numpy * matplotlib * plotpy * folium * sklearn * eli5 ## Machine Learning Models Used: (1) Random Forest Classifier (2)Logistic Regression ## Steps Involved: (1).Data Import (2). Exploratory Data Analysis (EDA) (3). Model Building (4).Prediction part
EkeminiImeOtu
No description available
kilee722
Hotel booking cancellation prediction
Hotel booking cancellation prediction model
Preetnagda
Hotel Booking Cancellation Prediction using KNIME software
Nikcool2500
hse psb hackathon - prediction of booking cancellation
swainshashwat
Exploring hotel booking dataset and prediction cancellation rates
Adetayo047
Using R shiny for hotel booking cancellation prediction
JanudiDisara
FDM Mini Project - Hotel Booking Cancellation Prediction System
Prediction if a person is going to cancel the hotel reservation he/she made. Dataset of hotel reservations with 1,19,390 records of customers with information such as reservation date, deposit type, number of adults, number of children, meal types, room type (in class) etc. Data cleaning and transformation was performed to remove the missing and null values and also to remove an unwanted column from the dataset. EDA was also performed to gain the maximum knowledge from the dataset. Used a tool, KNIME which is helpful for using algorithms, creating models and deploying the model to work for predicting cancellation of new reservations. We use two different algorithms being Decision Tree Algorithm and Naive Bayes Algorithm. Comparing both of the algorithms we experienced better accuracy in the Decision Tree Algorithm. We received an accuracy of 83%.
AlirezaRohany
Machine Learning (Classification) and Data Analysis Problem. Hotel booking cancellation prediction
AnhHoang0529
Hotel booking cancellation prediction using Hotel Booking Demand Dataset with Logistic Regression, kNNs, Decision Tree, SVM and NN
Ijeomaejem
Analyzed INN Hotels data to identify influential factors driving booking cancellations, developed predictive model for advanced cancellation prediction, enabling formulation of profitable policies for cancellations and refunds.
koladiyaharsh
I have build machine learning model of "Hotel Booking Cancellation Prediction using different ML algorithms"
Prediction of cancellations of hotel bookings by using 7 different machine learning algorithms with Python. EDA and explanations are included.