This
article
focuses
on
artificial
intelligence
in
educational
technology,
starting
with
an
introduction
to
interdisciplinary
field
of
study
that
covers
the
design,
development,
utilization,
and
evaluation
technology
digital
tools
Settings.
A
detailed
description
its
definition
academic
context
-
a
multidisciplinary
computer
science
cognitive
deals
development
computational
systems
exhibit
intelligent
behaviour,
describing
areas
coverage
scope
application.
It
then
introduces
benefits
AI
education
specifically
addressing
personalized
learning,
adaptive
learning
systems,
automated
scoring
feedback,
virtual
tutors
chatbots,
data
analytics,
as
well
content
recommendations
natural
language
processing,
accessibility
inclusion.
Then
it
main
concepts
learning:
uses
power
meet
unique
needs
preferences
individual
learners,
key
principles
characteristics.
Adaptive
harness
analytics
tailor
experience
each
student's
abilities,
core
strengths.
also
operating
grading
feedback:
algorithms
evaluate
student
assignments,
tests
exams
without
direct
involvement
human
graders,
associated
benefits.
Secondly,
tutor
are
introduced:
Virtual
is
computer-based
system
machine
provide
students
interactive
support
characteristics
advantages,
nature
chatbots
help
education.
The
final
conclusion
summarizes
future
challenges
integrating
into
technology.
IEEE Transactions on Learning Technologies,
Journal Year:
2023,
Volume and Issue:
17, P. 12 - 31
Published: Sept. 12, 2023
As
Education
constitutes
an
essential
development
standard
for
individuals
and
societies,
researchers
have
been
exploring
the
use
of
Artificial
Intelligence
(AI)
in
this
domain
embedded
technology
within
it
through
a
myriad
applications.
In
order
to
provide
detailed
overview
efforts,
article
pays
particular
attention
these
developments
by
highlighting
key
application
areas
data-driven
AI
Education;
also
analyzes
existing
tools,
research
trends,
as
well
limitations
role
can
play
Education.
particular,
reviews
various
applications
including
student
grading
assessments,
retention
drop-out
predictions,
sentiment
analysis,
intelligent
tutoring,
classroom
monitoring,
recommender
systems.
The
provides
bibliometric
analysis
highlight
salient
trends
over
nine
years
(2014–2022)
further
description
tools
platforms
developed
outcome
efforts
For
articles
from
several
top
venues
are
analyzed
explore
domain.
shows
sufficient
contribution
different
parts
world
with
clear
lead
United
States.
Moreover,
students'
evaluation
observed
most
widely
explored
application.
Despite
significant
success,
we
aspects
education
where
alone
has
not
contributed
much.
We
believe
such
is
expected
baseline
future
Scientific Reports,
Journal Year:
2024,
Volume and Issue:
14(1)
Published: Feb. 2, 2024
Abstract
The
advent
of
ChatGPT
has
sparked
a
heated
debate
surrounding
natural
language
processing
technology
and
AI-powered
chatbots,
leading
to
extensive
research
applications
across
various
disciplines.
This
pilot
study
aims
investigate
the
impact
on
users'
experiences
by
administering
two
distinct
questionnaires,
one
generated
humans
other
ChatGPT,
along
with
an
Emotion
Detecting
Model.
A
total
14
participants
(7
female
7
male)
aged
between
18
35
years
were
recruited,
resulting
in
collection
8672
ChatGPT-associated
data
points
8797
human-associated
points.
Data
analysis
was
conducted
using
Analysis
Variance
(ANOVA).
results
indicate
that
utilization
enhances
participants'
happiness
levels
reduces
their
sadness
levels.
While
no
significant
gender
influences
observed,
variations
found
about
specific
emotions.
It
is
important
note
limited
sample
size,
narrow
age
range,
potential
cultural
impacts
restrict
generalizability
findings
broader
population.
Future
directions
should
explore
incorporating
additional
models
or
chatbots
user
emotions,
particularly
among
groups
such
as
older
individuals
teenagers.
As
pioneering
works
evaluating
human
perception
text
communication,
it
noteworthy
received
positive
evaluations
demonstrated
effectiveness
generating
questionnaires.
IEEE Access,
Journal Year:
2024,
Volume and Issue:
12, P. 66110 - 66128
Published: Jan. 1, 2024
Monitoring
student
activity
manually
constantly
is
a
laborious
endeavor.
Over
the
past
few
years,
there
has
been
rapid
expansion
in
usage
of
cameras
and
automatic
identification
odd
surveillance
behavior.
Different
computer
vision
algorithms
have
used
to
observe
monitor
real-world
activities.
Most
educational
institutions
are
already
offering
online
programs
lessen
impact
this
epidemic
on
education
industry.
However,
ensuring
that
students
correctly
identified,
their
behaviors
monitored
crucial
make
these
learning
sessions
dynamic
equivalent
conventional
offline
classroom.
In
study,
we
introduced
brand-new
deep
learning-based
continuously
track
student's
mood,
including
rage,
contempt,
happiness,
sorrow,
fear,
surprise.
The
effectiveness
monitoring
classrooms
was
also
studied
using
CNN
model
reaches
99%
accuracy.
Our
approach
superior
because
its
many
convolutional
layers,
dropout
regularization,
batch
normalization.
It
caught
properties
decreased
overfitting.
By
identifying
them
more
frequently,
techniques
can
enhance
engagement
outcomes
e-learning
situations,
according
research.
With
techniques,
educators
instructors
may
support
effectively
by
better
comprehending
behavior
specialized
individualized
support,
improving
academic
performance
evaluation.
Estudios y Perspectivas Revista Científica y Académica,
Journal Year:
2024,
Volume and Issue:
4(2), P. 16 - 30
Published: May 16, 2024
Este
artículo
aborda
la
profundización
de
Inteligencia
Emocional
en
Era
los
avances
tecnológicos
relación
con
promoción
Educación
Centrada
el
Ser
Humano
Colombia
IA.
El
objetivo
este
se
centra
ahora
comprensión
floración
dominio
las
TIC
relacionadas
emociones
y
uso
posterior
investigación.
La
recolección
datos
llevó
a
cabo
través
del
análisis
documental
mapeo
IA
implicaciones
desarrollo
modelos
pensamiento
complejo
dentro
ajustes
significativos
campo
educación.
estudio
engloba
una
investigación
dirigida
esclarecer
estrechas
relaciones
entre
conexiones
emocionales
preocupaciones
inteligencia
artificial.
Los
resultados
iniciales
revelaron
que
aprendizaje
emocional
podría
abordarse
mediante
inclusión
pedagógica
tecnología.
En
conclusión,
aumento
tecnológico
emergente
fomenta
reconocimiento
seres
humanos
partir
interacciones
asertivas.
Scientific Reports,
Journal Year:
2024,
Volume and Issue:
14(1)
Published: Aug. 1, 2024
This
study
explores
the
influence
of
Internet
Things
(IoT)
and
Artificial
Intelligence
(AI)-enhanced
learning
models
on
student
management
in
educational
informatization
management.
A
game-theoretic
enhanced
model
is
proposed
to
achieve
this
objective,
incorporating
resource
scheduling
strategies
under
fog
computing
a
system
that
integrates
IoT
AI
technologies.
model's
performance
are
then
tested.
The
results
indicate
computing-based
hierarchical
Q-learning
(Q)
achieves
faster
convergence
than
single
Q
model,
reaching
after
80
training
rounds,
ten
rounds
earlier
comparative
algorithm.
exhibits
lower
average
workload
delay
0.5
ms
node
below
1
ms,
showcasing
significant
advantages
terms
overall
cost-effectiveness,
thus
minimizing
service
costs.
has
3000
concurrent
user
connections,
static
page
request
times
ranging
from
0
25
s,
login
response
time
predominantly
at
60
capacity
process
up
20
parallel
tasks
per
second
with
zero
errors.
functionalities
fully
realized,
meeting
usage
demands
effectively
achieving
highest
functional
score
9.03
for
online
interaction
functionality.
demonstrates
efficacy
environment
positive
impact
technologies
better
caters
individual
needs,
enhancing
outcomes
experiences.
study's
innovation
lies
integration
technology
AI-enhanced
models,
coupled
introduction
strategies,
enabling
intelligently
identify
requirements,
allocate
resources,
dynamically
optimize
process,
ultimately
improving
outcomes.
holds
implications
education
quality
promoting
personalized
development.
Journal of Educational Computing Research,
Journal Year:
2024,
Volume and Issue:
unknown
Published: Nov. 7, 2024
This
study
explores
the
integration
of
advanced
AI
technologies,
including
emotion
detection
and
adaptive
learning
systems,
to
enhance
second
language
acquisition
among
274
English
as
a
Foreign
Language
(EFL)
learners.
Utilizing
pretest-posttest
randomized
control
trial,
research
evaluates
effects
AI-enhanced
interventions
on
emotional
self-regulation
linguistic
proficiency
compared
traditional
teaching
methods.
The
results
indicate
significant
improvements
in
retention
regulation
for
learners
using
tools.
Qualitative
feedback
from
interviews
surveys
corroborates
these
findings,
underscoring
positive
impact
educational
experiences.
highlights
potential
deepen
engagement
tailor
experiences,
recommending
incorporation
technologies
into
programs
boost
competencies
enrich
outcomes.
IEEE Access,
Journal Year:
2024,
Volume and Issue:
12, P. 109427 - 109442
Published: Jan. 1, 2024
The
You
Only
Look
Once
(YOLO)
series,
renowned
for
its
efficiency
and
versatility
in
object
detection,
has
become
a
fundamental
component
diverse
fields
ranging
from
autonomous
vehicles
to
robotics
video
surveillance.
Despite
widespread
application,
notable
gap
exists
the
literature
concerning
selecting
YOLO
models
specific
tasks.
Current
trends
often
lean
towards
latest
models,
potentially
overlooking
crucial
factors
such
as
computational
complexity,
speed,
accuracy,
model
size,
adaptability,
generalization.
This
approach
may
not
always
yield
optimal
choice
given
application.
Therefore,
this
paper
aims
provide
an
exhaustive
comparative
analysis
of
various
focusing
on
emotion
recognition.
We
trained
tested
YOLOv5,
YOLOv7,
YOLOv8,
YOLOv9
along
with
their
respective
variants,
using
subset
AffectNet
dataset,
which
consists
facial
images
annotated
one
five
emotions,
namely
angry,
happy,
sad,
neutral,
surprise.
study
evaluates
based
several
key
parameters:
accuracy
metrics
like
mean
Average
Precision
(mAP),
inference
time,
FPS,
adaptability
altered
datasets,
generalization
capability.
Comprehensive
results
are
presented,
highlighting
strengths
limitations
each
variant
across
these
parameters.
Insights
provided
guide
researchers
most
suitable
architecture
recognition
requirements,
considering
constraints,
real-time
performance
needs,
importance
vs
tradeoffs.
reveals
exceptional
performances
certain
YOLOv9e
high
YOLOv8n
balancing
speed
accuracy.
Overall,
work
fills
by
offering
detailed
facilitate
informed
decision-making
when
deploying
Sensors,
Journal Year:
2025,
Volume and Issue:
25(2), P. 373 - 373
Published: Jan. 10, 2025
Behavioral
computing
based
on
visual
cues
has
become
increasingly
important,
as
it
can
capture
and
annotate
teachers'
students'
classroom
states
a
large
scale
in
real
time.
However,
there
is
lack
of
consensus
the
research
status
future
trends
computer
vision-based
behavior
recognition.
The
present
study
conducted
systematic
literature
review
80
peer-reviewed
journal
articles
following
Preferred
Reporting
Items
for
Systematic
Assessment
Meta-Analysis
(PRISMA)
guidelines.
Three
questions
were
addressed
concerning
goal
orientation,
recognition
techniques,
challenges.
Results
showed
that:
(1)
vision-supported
focused
four
categories:
physical
action,
learning
engagement,
attention,
emotion.
Physical
actions
engagement
have
been
primary
targets;
(2)
behavioral
categorizations
defined
various
ways
connections
to
instructional
content
events;
(3)
existing
studies
college
students,
especially
natural
classical
classroom;
(4)
deep
was
main
method,
YOLO
series
applicable
multiple
purposes;
(5)
moreover,
we
identified
challenges
experimental
design,
methods,
practical
applications,
pedagogical
vision.
This
will
not
only
inform
application
vision
but
also
provide
insights
research.