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backtransformation

Backtransformation is the inverse process of applying a data transformation. It involves returning data, parameters, or model outputs that were transformed for analysis back to their original scale or coordinates. The feasibility and form of backtransformation depend on the transform being used; if the forward transform has a well-defined inverse, backtransformation is typically straightforward. Some transformations, however, may be non-injective or require special handling, which can complicate or limit back-transformation.

In statistics and data analysis, transformations such as logarithms, square roots, or Box-Cox are commonly used

In predictive modeling, models may be fit on transformed responses, and predictions are often reported on the

Overall, backtransformation is a fundamental concept across disciplines, enabling interpretation and practical use of results obtained

to
stabilize
variance,
normalize
distributions,
or
linearize
relationships.
Back-transformation
converts
results
on
the
transformed
scale
back
to
the
original
scale
for
interpretation.
A
notable
caution
is
that
the
expected
value
on
the
transformed
scale
does
not
generally
equal
the
back-transformed
expected
value
on
the
original
scale,
which
can
introduce
bias.
Techniques
like
the
smearing
estimator
(Duan’s
method)
are
sometimes
employed
to
adjust
back-transformed
predictions
to
reduce
bias.
original
scale
after
back-transformation.
In
signal
and
image
processing,
backtransformation
refers
to
the
inverse
of
forward
transforms,
such
as
the
inverse
Fourier
transform
or
inverse
discrete
cosine
transform,
used
to
reconstruct
the
original
signal
or
image
from
its
transformed
representation.
after
applying
transformations.