Home

labels

A label is a descriptive identifier attached to an object to convey information, categorize it, or aid discovery. Labels can be nouns or short phrases and may appear as text, symbols, or codes. They are used across domains to organize data, items, and concepts.

In data science and machine learning, a label refers to the target value that a model learns

In information organization, labels function as tags or metadata that describe content. They support search, filtering,

In everyday life and commerce, labels appear on products and documents to convey information such as name,

In computing and software, labels appear in user interfaces to describe controls, and in data systems to

Quality and ethics matter in labeling. Inaccurate labels cause harm, misclassification, or bias. Label accuracy, consistency,

to
predict.
Labeled
data
pairs
inputs
with
corresponding
outputs.
Labels
can
be
assigned
by
domain
experts
or
via
crowdsourcing,
and
label
quality
directly
affects
model
performance.
Common
encoding
methods
include
one-hot
encoding
for
classification
and
numeric
labeling
for
ordinal
tasks.
and
navigation.
Labels
may
be
flat
or
hierarchical,
forming
taxonomies
or
ontologies.
Examples
include
file
tags,
blog
tags,
and
subject
headings
in
libraries.
price,
origin,
ingredients,
and
care
instructions.
Regulatory
and
standard
labels
may
indicate
compliance,
safety,
or
energy
efficiency.
Barcodes
and
QR
codes
link
the
label
to
structured
data.
annotate
records.
In
NLP
and
graph
analytics,
labels
classify
items
or
guide
learning,
such
as
sentiment
labels
for
text
or
community
labels
in
networks.
and
privacy
considerations
are
important
across
applications,
from
data
labeling
to
product
labeling
and
accessibility.