The
work
of
this
paper
presents
multiple
novel
findings
from
a
comprehensive
analysis
about
150,000
tweets
exoskeletons
posted
between
May
2017
and
2023.
First,
content
temporal
these
reveal
the
specific
months
per
year
when
significantly
higher
volume
Tweets
was
time
windows
highest
number
tweets,
lowest
with
hashtags,
user
mentions
were
posted.
Second,
shows
that
there
are
statistically
significant
correlations
hour
different
characteristics
tweets.
Third,
linear
regression
model
to
predict
in
terms
R2
score
observed
be
0.9540.
Fourth,
reports
10
most
popular
hashtags
#exoskeleton,
#robotics,
#iot,
#technology,
#tech
#innovation,
#ai,
#sci,
#construction
#news.
Fifth,
sentiment
performed
using
VADER
DistilRoBERTa-base
library.
results
show
percentage
positive,
neutral,
negative
46.8%,
33.1%,
20.1%,
respectively.
also
did
not
express
neutral
sentiment,
surprise
common
sentiment.
It
followed
by
sentiments
joy,
disgust,
sadness,
fear,
anger.
Furthermore,
hashtag-specific
revealed
several
insights,
for
instance,
almost
all
2022,
usage
#ai
mainly
associated
positive
Sixth,
text
processing-based
approaches
used
detect
possibly
sarcastic
contained
news.
Finally,
comparison
news,
characteristic
properties
presented.
average
news
has
considerably
increased
since
January
2022.
Discover Sustainability,
Год журнала:
2025,
Номер
6(1)
Опубликована: Янв. 14, 2025
A
significant
advancement
in
artificial
intelligence
is
the
development
of
large
language
models
(LLMs).
Despite
opposition
and
explicit
bans
by
some
authorities,
LLMs
continue
to
play
a
transformative
role,
particularly
education,
improving
understanding
generation
capabilities.
This
study
explores
LLMs'
types,
history,
training
processes,
alongside
their
application
including
digital
higher
education
settings.
novel
theoretical
framework
proposed
guide
integration
into
addressing
key
challenges
such
as
personalization,
ethical
concerns,
adaptability.
Furthermore,
presents
practical
case
studies
solutions
barriers,
data
privacy
bias,
offering
insights
role
enhancing
teaching–learning
process.
By
providing
systematic
analysis
proposing
structured
framework,
this
advances
current
knowledge
highlights
potential
revolutionizing
education.
Information,
Год журнала:
2023,
Номер
14(9), С. 474 - 474
Опубликована: Авг. 25, 2023
Chatbots
are
AI-powered
programs
designed
to
replicate
human
conversation.
They
capable
of
performing
a
wide
range
tasks,
including
answering
questions,
offering
directions,
controlling
smart
home
thermostats,
and
playing
music,
among
other
functions.
ChatGPT
is
popular
AI-based
chatbot
that
generates
meaningful
responses
queries,
aiding
people
in
learning.
While
some
individuals
support
ChatGPT,
others
view
it
as
disruptive
tool
the
field
education.
Discussions
about
this
can
be
found
across
different
social
media
platforms.
Analyzing
sentiment
such
data,
which
comprises
people’s
opinions,
crucial
for
assessing
public
regarding
success
shortcomings
tools.
This
study
performs
analysis
topic
modeling
on
ChatGPT-based
tweets.
tweets
author’s
extracted
from
Twitter
using
hashtags,
where
users
share
their
reviews
opinions
providing
reference
thoughts
expressed
by
The
Latent
Dirichlet
Allocation
(LDA)
approach
employed
identify
most
frequently
discussed
topics
relation
For
analysis,
deep
transformer-based
Bidirectional
Encoder
Representations
Transformers
(BERT)
model
with
three
dense
layers
neural
networks
proposed.
Additionally,
machine
learning
models
fine-tuned
parameters
utilized
comparative
analysis.
Experimental
results
demonstrate
superior
performance
proposed
BERT
model,
achieving
an
accuracy
96.49%.
Connection Science,
Год журнала:
2024,
Номер
36(1)
Опубликована: Май 16, 2024
In
2022,
OpenAI's
unveiling
of
generative
AI
Large
Language
Models
(LLMs)-
ChatGPT,
heralded
a
significant
leap
forward
in
human-machine
interaction
through
cutting-edge
technologies.
With
its
surging
popularity,
scholars
across
various
fields
have
begun
to
delve
into
the
myriad
applications
ChatGPT.
While
existing
literature
reviews
on
LLMs
like
ChatGPT
are
available,
there
is
notable
absence
systematic
(SLRs)
and
bibliometric
analyses
assessing
research's
multidisciplinary
geographical
breadth.
This
study
aims
bridge
this
gap
by
synthesising
evaluating
how
has
been
integrated
diverse
research
areas,
focussing
scope
distribution
studies.
Through
review
scholarly
articles,
we
chart
global
utilisation
scientific
domains,
exploring
contribution
advancing
paradigms
adoption
trends
among
different
disciplines.
Our
findings
reveal
widespread
endorsement
multiple
fields,
with
implementations
healthcare
(38.6%),
computer
science/IT
(18.6%),
education/research
(17.3%).
Moreover,
our
demographic
analysis
underscores
ChatGPT's
reach
accessibility,
indicating
participation
from
80
unique
countries
ChatGPT-related
research,
most
frequent
keyword
occurrence,
USA
(719),
China
(181),
India
(157)
leading
contributions.
Additionally,
highlights
roles
institutions
such
as
King
Saud
University,
All
Institute
Medical
Sciences,
Taipei
University
pioneering
dataset.
not
only
sheds
light
vast
opportunities
challenges
posed
pursuits
but
also
acts
pivotal
resource
for
future
inquiries.
It
emphasises
that
(LLM)
role
revolutionising
every
field.
The
insights
provided
paper
particularly
valuable
academics,
researchers,
practitioners
disciplines,
well
policymakers
looking
grasp
extensive
impact
technologies
community.
Advances in computational intelligence and robotics book series,
Год журнала:
2025,
Номер
unknown, С. 361 - 390
Опубликована: Фев. 28, 2025
Natural
Language
Processing
(NLP)
is
an
emerging
field
often
integrated
into
Artificial
Intelligence
(AI)
technologies.
NLP
has
significantly
advanced,
leading
to
the
widespread
use
of
generative
AI-powered
(Gen-AI)
models
across
various
domains.
However,
while
Gen-AI
systems
have
been
successfully
implemented
in
several
languages,
AI-based
language
still
face
considerable
challenges
and
shortcomings,
including
generating
biases
sensitive
languages
like
Arabic.
Therefore,
primary
objective
this
chapter
provide
overview
Gen-AI-powered
context
Arabic
language,
exploring
sources
these
biases,
their
implications,
potential
strategies
for
mitigation.
The
underscore
need
ongoing
research
development
create
more
equitable
accurate
AI
systems.
By
understanding
origins
implications
implementing
effective
mitigation
strategies,
we
can
work
towards
that
better
serve
diverse
linguistic
communities.
Journal of King Saud University - Computer and Information Sciences,
Год журнала:
2023,
Номер
35(8), С. 101736 - 101736
Опубликована: Авг. 29, 2023
Hope
Speech
Detection
(HSD)
from
social
media
is
a
new
direction
for
promoting
and
supporting
positive
content
to
encourage
harmony
positivity
in
society.
As
users
of
belong
different
linguistic
communities,
hope
speech
detection
rarely
studied
as
multilingual
task
considering
low-resource
languages.
Moreover,
prior
studies
explored
only
monolingual
techniques,
the
Russian
language
not
addressed.
This
study
tackles
issue
Multi-lingual
(MHSD)
English
languages
using
transfer
learning
paradigm
with
fine-tuning
approach.
We
explore
joint
multi-lingual
translation-based
approaches
tackle
multilingualism,
where
latter
approach
adopts
translation
mechanism
transform
all
into
one
then
classify
them.
The
method
handles
it
by
designing
universal
classifier
various
strengths
Robustly
Optimized
BERT
Pre-Training
Approach
(RoBERTa)
that
showed
benchmark
capturing
semantics
contextual
information
within
content.
proposed
framework
consists
several
stages:
1)
data
preprocessing,
2)
representation
RoBERTa
models,
3)
phase,
4)
classification
two
labels.
A
corpus
built,
containing
YouTube
comments.
Several
experiments
are
conducted
semi-supervised
bilingual
datasets.
findings
show
demonstrated
performance
outperformed
baselines.
Furthermore,
(Russian-RoBERTa)
offered
best
achieving
94%
accuracy
80.24%
f1-score.
International Journal of Low-Carbon Technologies,
Год журнала:
2025,
Номер
20, С. 626 - 634
Опубликована: Янв. 1, 2025
Abstract
This
study
introduces
an
enhanced
RoBERTa-based
model,
called
Industry
Aware
RoBERTa
(IA-RoBERTa),
designed
to
improve
the
accuracy
and
generalization
of
industry
label
recognition.
IA-RoBERTa
innovatively
integrates
structured
knowledge
through
a
graph
fusion
approach,
using
multigranularity
input
representation
industry-aware
self-attention
mechanisms.
Together,
these
features
enhance
model’s
ability
efficiently
process
understand
industry-specific
information.
In
addition,
includes
layered
classifier
that
expertly
handles
fine-grained
categories.
Experimental
evaluations
recognition
datasets
show
outperforms
existing
methods
in
terms
accuracy,
F1
scores,
macro-average
performance
metrics.
PeerJ Computer Science,
Год журнала:
2025,
Номер
11, С. e2693 - e2693
Опубликована: Март 11, 2025
The
proliferation
of
fake
news
has
become
a
significant
threat,
influencing
individuals,
institutions,
and
societies
at
large.
This
issue
been
exacerbated
by
the
pervasive
integration
social
media
into
daily
life,
directly
shaping
opinions,
trends,
even
economies
nations.
Social
platforms
have
struggled
to
mitigate
effects
news,
relying
primarily
on
traditional
methods
based
human
expertise
knowledge.
Consequently,
machine
learning
(ML)
deep
(DL)
techniques
now
play
critical
role
in
distinguishing
necessitating
their
extensive
deployment
counter
rapid
spread
misinformation
across
all
languages,
particularly
Arabic.
Detecting
Arabic
presents
unique
challenges,
including
complex
grammar,
diverse
dialects,
scarcity
annotated
datasets,
along
with
lack
research
field
detection
compared
English.
study
provides
comprehensive
review
examining
its
types,
domains,
characteristics,
life
cycle,
approaches.
It
further
explores
recent
advancements
leveraging
ML,
DL,
transformer-based
for
detection,
special
attention
delves
Arabic-specific
pre-processing
techniques,
methodologies
tailored
language,
datasets
employed
these
studies.
Additionally,
it
outlines
future
directions
aimed
developing
more
effective
robust
strategies
address
challenge
content.
IEEE Access,
Год журнала:
2024,
Номер
12, С. 93305 - 93317
Опубликована: Янв. 1, 2024
Sentiment
analysis
towards
short
texts
is
always
facing
challenges,
because
only
contain
limited
semantic
characteristics.
As
a
result,
this
paper
constructs
specific
large
language
structure
to
deal
with
issue.
In
all,
novel
automatic
sentiment
method
for
based
on
Transformer-BERT
hybrid
model
proposed
by
paper.
Firstly,
BERT
utilized
extract
word
vectors,
and
integrated
topic
vectors
improve
textual
feature
expression
ability.
Then,
the
fused
are
input
into
Bidirectional
Gated
Recurrent
Unit
(Bi-GRU)
learn
contextual
features.
part,
Transformer
applied
behind
Bi-GRU
combined
previous
module
output
results.
addition,
Accuracy,
Precision,
Recall
F1
indexes
were
collected
from
real-world
Twitter
datasets
shopping
data
evaluate
performance
of
method.
The
experimental
results
show
that
performs
well
in
many
indexes.
Compared
traditional
method,
it
has
achieved
remarkable
improvement,
achieves
higher
accuracy
efficiency
texts,
good
generalization