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Does machine learning offer added value vis-à-vis traditional statistics? : an exploratory study on retirement decisions using data from the Survey of Health, Ageing, and Retirement in Europe (SHARE)
ID
González Garibay, Montserrat
(
Author
),
ID
Srakar, Andrej
(
Author
),
ID
Bartolj, Tjaša
(
Author
),
ID
Sambt, Jože
(
Author
)
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https://www.mdpi.com/2227-7390/10/1/152
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Abstract
Do machine learning algorithms perform better than statistical survival analysis when predicting retirement decisions? This exploratory article addresses the question by constructing a pseudo-panel with retirement data from the Survey of Health, Ageing, and Retirement in Europe (SHARE). The analysis consists of two methodological steps prompted by the nature of the data. First, a discrete Cox survival model of transitions to retirement with time-dependent covariates is compared to a Cox model without time-dependent covariates and a survival random forest. Second, the best performing model (Cox with time-dependent covariates) is compared to random forests adapted to time-dependent covariates by means of simulations. The results from the analysis do not clearly favor a single method; whereas machine learning algorithms have a stronger predictive power, the variables they use in their predictions do not necessarily display causal relationships with the outcome variable. Therefore, the two methods should be seen as complements rather than substitutes. In addition, simulations shed a new light on the role of some variables—such as education and health—in retirement decisions. This amounts to both substantive and methodological contributions to the literature on the modeling of retirement.
Language:
English
Keywords:
statistics
,
machine learning
,
random forests
,
survival analysis
,
retirement
,
time-dependent covariates
Work type:
Article
Typology:
1.01 - Original Scientific Article
Organization:
EF - School of Economics and Business
Publication status:
Published
Publication version:
Version of Record
Year:
2022
Number of pages:
25 str.
Numbering:
Vol. 10, iss. 1, art. 152
PID:
20.500.12556/RUL-134971
UDC:
004.8:311
ISSN on article:
2227-7390
DOI:
10.3390/math10010152
COBISS.SI-ID:
92089347
Publication date in RUL:
15.02.2022
Views:
996
Downloads:
191
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Record is a part of a journal
Title:
Mathematics
Shortened title:
Mathematics
Publisher:
MDPI AG
ISSN:
2227-7390
COBISS.SI-ID:
523267865
Licences
License:
CC BY 4.0, Creative Commons Attribution 4.0 International
Link:
http://creativecommons.org/licenses/by/4.0/
Description:
This is the standard Creative Commons license that gives others maximum freedom to do what they want with the work as long as they credit the author.
Licensing start date:
04.01.2022
Secondary language
Language:
Slovenian
Keywords:
statistika
,
strojno učenje
,
naključni gozdovi
,
analiza preživetja
,
upokojitev
Projects
Funder:
EC - European Commission
Funding programme:
European Social Fund
Name:
Upgrade of Analytical Models Concerning the Pension Scheme
Funder:
Other - Other funder or multiple funders
Funding programme:
Slovenia, Ministry of Labour, Family, Social Affairs, and Equal Opportunities
Name:
Upgrade of Analytical Models Concerning the Pension Scheme
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