Neural network models have shown outstanding performance and successful
resolutions to complex problems in various fields. However, the majority of
these models are viewed as black-box, requiring a significant amount of data
for development. Consequently, in situations with limited data, constructing
appropriate models becomes challenging due to the lack of transparency and
scarcity of data. To tackle these challenges, this study suggests the
implementation of a grey-informed neural network (GINN). The GINN ensures that
the output of the neural network follows the differential equation model of the
grey system, improving interpretability. Moreover, incorporating prior
knowledge from grey system theory enables traditional neural networks to
effectively handle small data samples. Our proposed model has been observed to
uncover underlying patterns in the real world and produce reliable forecasts
based on empirical data