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faveunt

Faveunt is a term used in this article to denote a fictional metric for measuring user affinity with a digital item, such as a post, video, or product listing. It is designed as a concise, unitless score that aggregates a range of engagement signals.

A faveunt is a weighted composite score derived from explicit actions (likes, saves, comments, shares) and implicit

Applications of the concept include comparing items, illustrating ranking ideas in demonstrations, or exploring engagement trade-offs

Limitations include the lack of a standardized definition or baseline, platform variability in weighting, potential for

signals
(time
spent
on
the
item).
Weights
vary
by
platform,
but
a
representative
scheme
might
assign:
likes
1,
saves
2,
comments
2.5,
shares
3,
and
a
time-spent
component
scaled
from
0
to
2
depending
on
the
fraction
of
a
reference
viewing
period.
The
general
form
is
faveunt
=
w_like*likes
+
w_save*saves
+
w_comment*comments
+
w_share*shares
+
w_time*time_spent_ratio.
Example:
for
a
content
item
with
12
likes,
3
saves,
5
comments,
2
shares,
and
a
0.75
time_spent_ratio,
using
weights
1,
2,
2.5,
3,
and
2,
the
score
is
12
+
6
+
12.5
+
6
+
1.5
=
38.
in
academic
contexts.
Because
faveunt
combines
actions
of
varying
intensity,
it
can
help
discuss
how
quick
reactions
compare
with
deeper
interactions,
within
a
simplified
framework.
manipulation,
and
the
fact
that
time
spent
can
be
affected
by
autoplay
or
passive
viewing.
The
metric
remains
a
fictional
construct
intended
for
explanatory
use.