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generaliserbara

Generaliserbara is a Swedish adjective meaning capable of being generalized beyond the original data, sample, or context. In English, it is commonly translated as generalizable. The term is used to describe findings, conclusions, or models that can reasonably apply to populations, settings, or times beyond those directly studied. It is a central concept in discussions of external validity and transferability.

Key considerations for generaliserbarhet include how representative the sample is of the target population, the variability

The concept is closely related to external validity in quantitative research and to transferability in qualitative

Limitations are often acknowledged: findings may be generaliserbara only within specified contexts or under certain assumptions.

See also: external validity, transferability, generalization, overfitting, cross-validation, sampling bias.

of
the
studied
conditions,
and
the
extent
to
which
the
measurement
tools
accurately
capture
the
intended
constructs.
Studies
aiming
for
generaliserbara
results
typically
address
issues
such
as
sampling
bias,
measurement
reliability,
and
the
explicit
documentation
of
context.
Researchers
may
test
generalisability
by
replication
across
different
populations,
settings,
or
time
periods,
or
by
conducting
cross-context
analyses.
work.
In
machine
learning,
an
analogous
idea
is
generalization:
a
model
should
perform
well
on
unseen
data
rather
than
only
on
the
training
set,
with
overfitting
reducing
generaliserbarhet.
Clear
reporting
of
the
study
scope,
context,
and
any
restrictions
on
applicability
enhances
the
usefulness
of
generaliserbara
conclusions.