arrow_back Back to 2014 Projects
school CMDA III — 2014 Cohort (44 projects)
science Time Series

Computational Methods Applied In Prediction Of Demand And Booking In Hotels And Airlines

Completed calendar_month 2014 group 3 Students

descriptionProject Overview

A highly accurate demand forecast is fundamental to the success of every revenue management model. As often required in practice and theory, we aim to forecast the accumulated booking curve as well as the number of expected reservations for each day in the booking horizon. To reduce the high dimensionality of this problem, we apply singular value decomposition on the historical booking profiles. The forecast of the remaining part of the booking horizon is dynamically adjusted to the earlier observations using the penalized least squares and the historical proportion method. Our proposed updating procedure considers the correlation and dynamics of bookings within the booking horizon and between successive product instances.

groupProject Team

S
Shirley Juma
Student Researcher · 2014
M
Mikhail Ngasindala
Student Researcher · 2014
E
Erick Mwasheghwa
Student Researcher · 2014

articleRelated Publications

Journal

The Trends and Burden of Mental Disorders in South Sudan

Malang A.B., Kamanu T.K.K., Ndetei D.M., Luketero S.W. and Mohammed Z.M.S. · 2026

open_in_newView Paper
Journal

Leveraging on Hybrid Machine Learning Models for Early Breast Cancer Detection

Nyakundi G., Ndiritu J., Ivivi J.M. and Kamanu T.K.K. · 2026

open_in_newView Paper
Journal

Disaggregating Poverty Estimates to Sub-County Level using Small Area Model: Application of EBP

Onchomba D.O. and Kamanu T.K.K. · 2026

open_in_newView Paper
All Publications