The curse of dimensionality is commonly encountered in numerical partial
differential equations (PDE), especially when uncertainties have to be modeled
into the equations as random coefficients. However, very often the variability
of physical quantities derived from a PDE can be captured by a few features on
the space of the coefficient fields. Based on such an observation, we propose
using a neural-network (NN) based method to parameterize the physical quantity
of interest as a function of input coefficients. The representability of such
quantity using a neural-network can be justified by viewing the neural-network
as performing time evolution to find the solutions to the PDE. We further
demonstrate the simplicity and accuracy of the approach through notable
examples of PDEs in engineering and physics.Comment: 17 pages, 4 figures, 2 table