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extrapolaci

Extrapolaci is a term used in statistics and data analysis to describe the estimation of values beyond the range of observed data by extending a model fitted to that data. In practice, it overlaps with extrapolation, a standard concept in English; extrapolaci may appear in some languages as a transliteration or misspelling of extrapolasi. Extrapolation aims to project trends or patterns into the future or into unobserved regions.

Common methods include linear extrapolation, polynomial extrapolation, exponential growth or decay, spline-based approaches, and time-series forecasting

Applications span economics, population studies, climate science, engineering planning, and any field seeking to anticipate future

Uncertainty and risk are central to extrapolaci. Predicted values should be reported with confidence intervals where

Best practices emphasize using domain knowledge, validating models with new data when available, performing sensitivity analyses,

Example: if y = 2x + 1 for x within a observed range, extrapolating to x = 12 yields

models
such
as
ARIMA.
These
methods
assume
that
the
underlying
relationship
observed
in
the
data
continues
beyond
the
available
observations,
often
requiring
additional
assumptions
about
stability,
continuity,
or
seasonality.
conditions
or
unseen
ranges
based
on
historical
data.
Extrapolaci
can
inform
policy,
budgeting,
or
resource
management,
but
it
also
carries
notable
uncertainty.
possible,
and
analyses
should
consider
multiple
models
or
scenarios.
Key
limitations
include
model
misspecification,
nonstationarity,
structural
breaks,
and
changes
in
underlying
processes
that
invalidate
assuming
past
patterns
will
persist.
and
avoiding
long-range
extrapolation
without
strong
justification.
See
also
interpolation,
forecasting,
regression
analysis,
and
extrapolation
methods.
y
=
25.