Affiliation:
1. Department of Engineering
Management, Engineering and Natural Sciences Faculty, Bahcesehir University, İstanbul, Turkey
2. Transportation Vocational School, Eskisehir Technical University, Eskişehir, Turkey
3. Department of
Management Engineering Department, Management Faculty, İstanbul Technical University, İstanbul, Turkey
Abstract
Introduction:
Tech startups are fast-growing businesses that target the demands of the
marketplace by developing innovative products, services, or platforms. Startups ensure socially,
economically, or environmentally more effective alternatives by using or by creating appropriate
technologies. Many factors have become prominent regarding the success and sustainability of the
product or service offered by the startup: investment, experience, and education of the team, the
leadership of the management, creativity, innovation, technological breakthroughs, surrounding
community, future perspective, target marketing strategy, location and the analysis of the market,
etc. But since 80% of startups do not survive after five years, defining the important risk factors is
crucial to develop the right strategies for successful startups. In this study, the risk factors have
been defined based on the business model, which has an important place in the success of the technology
startups, which use technology intensively. Comprehensive risk analysis on identified factors
is presented to identify effective managerial strategies for technology startups to not fail.
Methods:
Spherical Fuzzy Failure Mode and Impact Analysis (SFFMEA) was used within the
framework of a business model canvas for risk analysis for the failure of technology startup projects.
Due to the lack of recorded data for analysis, the opinions of field experts were used. While
the business model canvas guided the identification of detailed risk factors, FMEA enabled the risk
analysis of factors that cause startup projects to fail, and considering parameters related to the
probability of the relevant risk factors, their impact on the failure of the project, and the detection
level of the risk factor. Spherical Fuzzy, on the other hand, allowed the quantitative inference of
FMEA's comprehensive parameter definitions associated with the risk factors through experts.
Thus, all risk factors that may cause the failure of tech startups were ranked according to their risk
priority numbers (RPNs), with the SFFMEA analysis, which offers a comprehensive risk analysis.
Results:
The findings show that the most important causes of the tech startup’s failure are “noncompliance
with existing restrictions”, “inappropriate venture capital strategy”, and “lack of clustering
support”.
Conclusion:
These failure modes can be interpreted according to their frequency of encounter, potential
effects, and detectability, and can be considered an important finding in the development of
appropriate managerial strategies for the mitigation of the risk factors so the startups can survive in
their first five years. Also, with the proposed risk analysis methodology, a comprehensive analysis
of any startup project can be performed according to its conditions and characteristics.
Publisher
Bentham Science Publishers Ltd.