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abductives

Abductives, in the plural, commonly refer to abductive explanations or the arguments produced by abductive reasoning. Abductive reasoning is a form of logical inference that aims to identify the best explanation for a set of observations. It differs from deduction and induction: deduction seeks certainty, induction generalizes from cases, while abduction proposes plausible hypotheses that would explain the data.

Originating with Charles Sanders Peirce in the late 19th century, abduction is described as the inference to

Process and example: given observations, choose a hypothesis that would, if true, make the observations highly

Applications: hypothesis generation in science, diagnostic reasoning in medicine, forensic inference, and knowledge-based AI systems that

Limitations: abduction does not guarantee truth; multiple explanations may fit the data; it is sensitive to

Variants and related ideas: probabilistic abductive reasoning, Bayesian abductive approaches, and nonmonotonic reasoning that allow new

the
best
explanation.
In
philosophy,
cognitive
science,
and
artificial
intelligence,
it
is
understood
as
generating
conjectures
that
remain
to
be
tested.
likely.
Example:
seeing
smoke
and
suspecting
fire;
an
abductive
hypothesis
may
be
"there
is
a
fire"
though
alternative
explanations
exist.
The
strength
of
an
abductive
hypothesis
depends
on
explanatory
power,
coherence
with
existing
knowledge,
and
plausibility.
perform
abductive
reasoning.
In
AI,
abductive
logic
programming
and
other
frameworks
formalize
abduction
as
inference
to
the
best
explanation
under
constraints.
prior
information
and
biases;
thus
abductive
conclusions
require
empirical
testing
and
additional
evidence.
information
to
revise
abductive
hypotheses.