Statistics and Biostatistics Seminar Series
Yehua
Li Link to join seminar: Hosted on Zoom. Meeting ID: 844 283 6948 Passcode: 318995 |
Unified Principal Component Analysis for Sparse and Dense Functional Data under Spatial Dependency
We
consider
spatially
dependent
functional
data
collected
under
a
geostatistics
setting,
where
spatial
locations
are
irregular
and
random.
The
functional
response
is
the
sum
of
a
spatially
dependent
functional
effect
and
a
spatially
independent
functional
nugget
effect.
Observations
on
each
function
are
made
on
discrete
time
points
and
contaminated
with
measurement
errors.
Under
the
assumption
of
spatial
stationarity
and
isotropy,
we
propose
a
tensor
product
spline
estimator
for
the
spatio-temporal
covariance
function.
When
a
coregionalization
covariance
structure
is
further
assumed,
we
propose
a
new
functional
principal
component
analysis
method
that
borrows
information
from
neighboring
functions.
The
proposed
method
also
generates
nonparametric
estimators
for
the
spatial
covariance
functions,
which
can
be
used
for
functional
kriging.
Under
a
unified
framework
for
sparse
and
dense
functional
data,
infill
and
increasing
domain
asymptotic
paradigms,
we
develop
the
asymptotic
convergence
rates
for
the
proposed
estimators.
Advantages
of
the
proposed
approach
are
demonstrated
through
simulation
studies
and
two
real
data
applications
representing
sparse
and
dense
functional
data,
respectively.