dc.description.abstract | Understanding fertility intentions—the expressed
likelihood of having a (further) child—is essential for addressing
demographic challenges linked to low birth rates. While
prior research has emphasized individual-level predictors,
social networks play a critical but often overlooked role in
shaping reproductive decisions. Due to nuanced nature of
social interactions, training AI models for tasks like fertility intention
prediction typically requires large amounts of labeled
data. However, gathering sufficient manually labeled data
can be time-consuming and costly, especially when dealing
with smaller datasets, such as the personal network data
available for this study. This research addresses this challenge
by investigating whether Graph Neural Networks (GNNs),
enhanced via self-supervised pre-training tasks like masked
attribute reconstruction, can capture network dynamics to
improve predictions of women’s fertility intentions, particularly
given the constraints of smaller graph datasets. Using
personal network data from the Dutch LISS panel, we construct
ego-alter graphs and evaluate the effects of pre-training
strategies on downstream regression performance. While the
reconstruction task effectively reduces pre-training loss, it
offers no consistent benefit for fertility intention prediction
compared to models without pre-training. Ablation studies
further reveal that masking ratios strongly influence training
dynamics but do not substantially affect final accuracy. These
findings suggest that while GNNs offer a promising approach
for representing social context, careful alignment between
model objectives, graph structure, and target behavior remains
essential, especially when using self-supervised techniques to
overcome data limitations. | |