Estimating female labor force participation through statistical and machine learning methods: A comparison
Chapter
Publication Date:
2007
abstract:
Female Labor Force Participation (FLFP) is perhaps one of the most relevant theoretical
issues within the scope of studies of both labor and behavioral economics. Many statistical
models have been used for evaluating the relevance of explanatory variables. However, the
decision to participate in the labor market can be also modeled as a binary classification problem.
For this reason, in this paper, we compare four techniques to estimate the Female Labor
Force Participation. Two of them, Probit and Logit are from the statistical area, while Support
Vector Machines (SVM) and Hamming Clustering (HC) are from the machine learning
paradigm. The comparison, performed using data from the Venezuelan Household Survey for the
second semester 1999, shows the advantages and disadvantages of the two methodological
paradigms that could provide a basic motivation for combining the best of both approaches.
Iris type:
02.01 Contributo in volume (Capitolo o Saggio)
Keywords:
Female Labor Force Participation; Probit; Logit; Support Vector Machine; Hamming Clustering
List of contributors:
Muselli, Marco
Book title:
Computational Intelligence in Economics and Finance