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signalrich

Signalrich is a theoretical metric used in signal processing and data analysis to quantify how richly a signal encodes information. It is not a standardized measure, and definitions vary among disciplines such as communications, neuroscience, and multimedia processing.

Signalrich aims to reflect how much of a signal's variation is informative rather than random or incidental.

Computation approaches vary. Some methods compare the informative energy to total energy, others incorporate entropy across

Applications of the concept include evaluating channel richness in communications, assessing neural or physiological signals in

See also: information content, signal-to-noise ratio, spectral entropy, sparsity, complexity measures.

In
practice,
it
is
defined
through
a
combination
of
features
that
may
include
energy,
spectral
entropy,
sparsity,
temporal
dynamics,
and
statistical
complexity.
The
exact
formulation
is
not
universal,
and
different
implementations
produce
values
on
a
common
scale,
often
from
0
to
1
or
0
to
100.
time
and
frequency
domains,
and
some
rely
on
data-driven
estimators
trained
to
predict
task
performance
as
a
proxy
for
information
content.
Preprocessing
choices
such
as
filtering,
detrending,
and
normalization
strongly
influence
the
resulting
score.
neuroscience,
judging
audio
or
video
content
richness,
and
guiding
data
compression
or
anomaly
detection
in
sensor
networks.
Because
of
the
lack
of
a
universal
standard,
signalrich
is
typically
used
as
a
relative
measure
within
a
study
rather
than
an
absolute
benchmark.