Fr. 54.50

Predicting Financial Distress in the All-Cargo Airline Industry

English, German · Paperback / Softback

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Description

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All-cargo airlines carry over 50% of global airfreight, yet they are prone to bankruptcy. Many financial models are designed to predict a firms' financial health, but they do not assess many nonstatistical factors that influence the prediction capability of these models. In this study, qualitative grounded theory design was used to identify nonstatistical factors and explore how they influence bankruptcy prediction models in the all-cargo airline industry. Three themes emerged that may improve current quantitative bankruptcy prediction models. The three themes are airline fleet type, type of aircraft flown, and aircraft utilization. The three themes relate to the type, use, and make up of an airline's fleet. These themes influence bankruptcy prediction model and should be incorporated into failure prediction models to improve their overall accuracy. This analysis should be useful to professionals in the aviation and air-cargo industry.

About the author










Dr. Walton received his undergraduate degree from the University of North Carolina at Wilmington, holds a Ph.D. in Business Administration, a Master of Aeronautical Sciences, and a Master of Business Administration.

Product details

Authors Robert Walton
Publisher LAP Lambert Academic Publishing
 
Languages English, German
Product format Paperback / Softback
Released 31.07.2015
 
EAN 9783659760143
ISBN 978-3-659-76014-3
No. of pages 184
Dimensions 150 mm x 220 mm x 11 mm
Weight 262 g
Subject Guides > Motor vehicles, aircraft, ships, space travel

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