Paving the way for a new composite indicator on business model innovations

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Authors
Bill, Marc
Author (Corporation)
Publication date
2014
Typ of student thesis
Course of study
Type
04B - Conference paper
Editors
Noyons, Ed
Editor (Corporation)
Supervisor
Parent work
Proceedings of the Science and Technology Indicators Conference 2014 Leiden “Context Counts: Pathways to Master Big and Little Data”
Special issue
DOI of the original publication
Series
Series number
Volume
Issue / Number
Pages / Duration
30-39
Patent number
Publisher / Publishing institution
Universiteit Leiden - CWTS
Place of publication / Event location
Leiden
Edition
Version
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Abstract
The paper conceptualises business model innovations (BMI) as a fundamental change of the mechanisms and arrangements of how a company creates, delivers and captures value. It translates this definition into a composite innovation indicator that consists of a combination of radical product and radical process innovations, or radical product innovations combined with marketing and organisational innovations. Implementing this definition with empirical data from the Community Innovation Surveys (CIS) in Europe, we find that roughly one out of 20 SMEs has introduced a BMI in the three-year period preceding the surveys.
Keywords
Geschäftsmodell, Geschäftsmodellinnovation, Europa, Community Innovation Survey (CIS)
Subject (DDC)
Project
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ISBN
978-90-817527-1-8
ISSN
Language
English
Created during FHNW affiliation
Yes
Strategic action fields FHNW
Publication status
Published
Review
Peer review of the complete publication
Open access category
License
Citation
BARJAK, Franz und Marc BILL, 2014. Paving the way for a new composite indicator on business model innovations. In: Ed NOYONS (Hrsg.), Proceedings of the Science and Technology Indicators Conference 2014 Leiden “Context Counts: Pathways to Master Big and Little Data”. Leiden: Universiteit Leiden - CWTS. 2014. S. 30–39. ISBN 978-90-817527-1-8. Verfügbar unter: http://hdl.handle.net/11654/10086