Complex network approach to career planning

The labor market is a complex system. Beyond matching the demands for various expertise with individuals who are competent, there is also the need of individual to increase their skill correspondingly. In this thesis, we seek to discover the underlying structure of the real world job transition phen...

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Bibliographic Details
Main Author: Jason
Other Authors: Cheong Siew Ann
Format: Final Year Project (FYP)
Language:English
Published: 2018
Subjects:
Online Access:http://hdl.handle.net/10356/75320
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author Jason
author2 Cheong Siew Ann
author_facet Cheong Siew Ann
Jason
author_sort Jason
collection NTU
description The labor market is a complex system. Beyond matching the demands for various expertise with individuals who are competent, there is also the need of individual to increase their skill correspondingly. In this thesis, we seek to discover the underlying structure of the real world job transition phenomena where people from move one job to another job in the context of complex network. It was found that the degree distribution of the phenomena had a fat-tail (weighted) degree distribution which characterizes a scale-free network with scaling exponent ~ 1.2 - 1.4. Nevertheless, the configuration model of a scale-free network is not a total fit with the data as there's some behavioral deviation. In addition, we also wanted to discover the assortativity mixing of job transition approaching from the skills perspective. Binomial/proportion hypothesis testing was employed to determine whether it was crucial for individual to gain certain expertise on the skill (which overlap between original and target job) for higher chances of advancing in their career. It was found that by examining certain example of job transition; there is clear evidence that by posing the skills required relative to other factors such as the previous job and the significance of the skill in the target job increase the probability of advancing more than 50% compared to their counterparts who do not possess the skills
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spelling ntu-10356/753202023-02-28T23:15:47Z Complex network approach to career planning Jason Cheong Siew Ann School of Physical and Mathematical Sciences DRNTU::Science::Physics The labor market is a complex system. Beyond matching the demands for various expertise with individuals who are competent, there is also the need of individual to increase their skill correspondingly. In this thesis, we seek to discover the underlying structure of the real world job transition phenomena where people from move one job to another job in the context of complex network. It was found that the degree distribution of the phenomena had a fat-tail (weighted) degree distribution which characterizes a scale-free network with scaling exponent ~ 1.2 - 1.4. Nevertheless, the configuration model of a scale-free network is not a total fit with the data as there's some behavioral deviation. In addition, we also wanted to discover the assortativity mixing of job transition approaching from the skills perspective. Binomial/proportion hypothesis testing was employed to determine whether it was crucial for individual to gain certain expertise on the skill (which overlap between original and target job) for higher chances of advancing in their career. It was found that by examining certain example of job transition; there is clear evidence that by posing the skills required relative to other factors such as the previous job and the significance of the skill in the target job increase the probability of advancing more than 50% compared to their counterparts who do not possess the skills Bachelor of Science in Physics 2018-05-30T09:02:43Z 2018-05-30T09:02:43Z 2018 Final Year Project (FYP) http://hdl.handle.net/10356/75320 en 78 p. application/pdf
spellingShingle DRNTU::Science::Physics
Jason
Complex network approach to career planning
title Complex network approach to career planning
title_full Complex network approach to career planning
title_fullStr Complex network approach to career planning
title_full_unstemmed Complex network approach to career planning
title_short Complex network approach to career planning
title_sort complex network approach to career planning
topic DRNTU::Science::Physics
url http://hdl.handle.net/10356/75320
work_keys_str_mv AT jason complexnetworkapproachtocareerplanning