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CBr

Case-based reasoning (CBR) is a problem-solving paradigm within artificial intelligence and cognitive science. It solves new problems by adapting solutions that previously worked for similar cases, rather than deriving solutions from general rules or models.

The typical CBR cycle is described as the four Rs: retrieve, reuse, revise, and retain. A relevant

Case bases are stored collections of past situations, actions, and outcomes. Retrieval relies on similarity judgments,

CBR has roots in cognitive science and engineering research from the 1980s and 1990s, with notable work

Advantages of CBR include rapid problem solving when suitable cases are available, interpretability of the rationale

Related concepts include analogical reasoning and retrieval-based AI. CBR frameworks often integrate with other AI methods,

past
case
is
retrieved
from
a
case
base,
its
solution
is
reused
or
adapted
to
fit
the
current
problem,
the
outcome
is
revised
as
needed,
and
the
new
experience
is
retained
to
update
the
case
base.
indexing,
and
domain-specific
representations
to
locate
the
most
relevant
cases.
Adaptation
strategies
modify
the
retrieved
solution
to
account
for
differences
in
context,
constraints,
or
goals.
by
Janet
Kolodner
and
others.
It
has
been
applied
across
disciplines,
including
medicine,
legal
reasoning,
engineering,
and
customer
support.
by
showing
past
cases,
and
continual
improvement
as
the
case
base
grows.
Limitations
include
dependence
on
a
comprehensive
and
well-annotated
case
base,
the
challenge
of
designing
effective
adaptation
methods,
and
reduced
effectiveness
on
problems
with
little
prior
experience.
knowledge
management
systems,
and
decision-support
tools.