Lexicon-based
approaches
to
sentiment
analysis
of
text
are
based
on
each
word
or
lexical
entry
having
a
predefined
weight
indicating
its
polarity.
These
usually
man-ually
assigned
but
the
accuracy
these
when
compared
against
machine
leaning
computing
sentiment,
not
known.
It
may
be
that
there
entries
whose
values
cause
lexicon-based
approach
give
results
which
very
different
learning
approach.
In
this
paper
we
compute
for
more
than
150,000
English
language
texts
drawn
from
4
domains
using
Hedonometer,
technique
and
Azure,
contemporary
machine-learning
is
part
Azure
Cognitive
Services
family
APIs
easy
use.
We
model
differences
in
scores
between
documents
domain
regression
analyse
independent
variables
(Hedonometer
entries)
as
indicators
word's
importance
contribution
score
differences.
Our
findings
depends
no
standout
systematically
scores.
Artificial Intelligence Review,
Journal Year:
2024,
Volume and Issue:
57(3)
Published: Feb. 19, 2024
Abstract
Social
media
is
used
to
categorise
products
or
services,
but
analysing
vast
comments
time-consuming.
Researchers
use
sentiment
analysis
via
natural
language
processing,
evaluating
methods
and
results
conventionally
through
literature
reviews
assessments.
However,
our
approach
diverges
by
offering
a
thorough
analytical
perspective
with
critical
analysis,
research
findings,
identified
gaps,
limitations,
challenges
future
prospects
specific
deep
learning-based
in
recent
times.
Furthermore,
we
provide
in-depth
investigation
into
categorizing
prevalent
data,
pre-processing
methods,
text
representations,
learning
models,
applications.
We
conduct
evaluation
of
advances
architectures,
assessing
their
pros
cons.
Additionally,
offer
meticulous
methodologies,
integrating
insights
on
applied
tools,
strengths,
weaknesses,
performance
results,
detailed
feature-based
examination.
present
discussion
the
challenges,
drawbacks,
factors
contributing
successful
enhancement
accuracy
within
realm
analysis.
A
comparative
article
clearly
shows
that
capsule-based
RNN
approaches
give
best
an
98.02%
which
CNN
RNN-based
models.
implemented
various
advanced
deep-learning
models
across
four
benchmarks
identify
top
performers.
introduced
innovative
CRDC
(Capsule
Deep
Bi
structured
RNN)
model,
demonstrated
superior
compared
other
methods.
Our
proposed
achieved
remarkable
different
databases:
IMDB
(88.15%),
Toxic
(98.28%),
CrowdFlower
(92.34%),
ER
(95.48%).
Hence,
this
method
holds
promise
for
automated
potential
deployment.
International Journal of Energy Research,
Journal Year:
2024,
Volume and Issue:
2024(1)
Published: Jan. 1, 2024
This
paper
proposes
a
novel
innovative
version
of
enhanced
artificial
rabbit
optimization
(EARO)
algorithm
integrating
an
equilibrium
pool
(EP)
that
consists
the
best
solutions.
Furthermore,
detour
foraging
and
hiding
mechanisms
are
modified
to
amplify
search
capability.
These
modifications
enable
dynamically
focus
on
exploring
various
randomized
directions
emanating
from
EP.
The
proposed
EARO
is
designed
investigate
PV
module
characteristics
identification
issue.
To
obtain
nine
parameters
triple
diode
model
(TDM)
while
taking
into
account
three
distinct
real‐world
modules,
utilized
evaluated
in
comparison
with
standard
ARO.
tested
different
modules:
Ultra
85‐P
panel,
PVM_752GaAs,
RTC
France.
results
corresponding
compared
respect
several
published
latest
studies.
simulation
show
shows
significant
overall
improvement
rates
for
each
modules.
A
validation
common
SDM
DDM
France
assessed
which
illustrates
superiority
robustness
over
recent
results.
Artificial Intelligence Review,
Journal Year:
2024,
Volume and Issue:
57(8)
Published: July 11, 2024
Abstract
Along
with
the
growth
of
Internet
its
numerous
potential
applications
and
diverse
fields,
artificial
intelligence
(AI)
sentiment
analysis
(SA)
have
become
significant
popular
research
areas.
Additionally,
it
was
a
key
technology
that
contributed
to
Fourth
Industrial
Revolution
(IR
4.0).
The
subset
AI
known
as
emotion
recognition
systems
facilitates
communication
between
IR
4.0
5.0.
Nowadays
users
social
media,
digital
marketing,
e-commerce
sites
are
increasing
day
by
resulting
in
massive
amounts
unstructured
data.
Medical,
public
safety,
education,
human
resources,
business,
other
industries
also
use
system
widely.
Hence
provides
large
amount
textual
data
extract
emotions
from
them.
paper
presents
systematic
literature
review
existing
published
2013
2023
text-based
detection.
This
scrupulously
summarized
330
papers
different
conferences,
journals,
workshops,
dissertations.
explores
approaches,
methods,
deep
learning
models,
aspects,
description
datasets,
evaluation
techniques,
Future
prospects
learning,
challenges
studies
limitations
practical
implications.
Electronic Research Archive,
Journal Year:
2024,
Volume and Issue:
32(3), P. 1770 - 1800
Published: Jan. 1, 2024
<p>For
the
feature
selection
of
network
intrusion
detection,
issue
numerous
redundant
features
arises,
posing
challenges
in
enhancing
detection
accuracy
and
adversely
affecting
overall
performance
to
some
extent.
Artificial
rabbits
optimization
(ARO)
is
capable
reducing
can
be
applied
for
detection.
The
ARO
exhibits
a
slow
iteration
speed
exploration
phase
population
prone
an
iterative
stagnation
condition
exploitation
phase,
which
hinders
its
ability
deliver
outstanding
aforementioned
problems.
First,
enhance
global
capabilities
further,
thinking
incorporates
mud
ring
feeding
strategy
from
bottlenose
dolphin
optimizer
(BDO).
Simultaneously,
adjusting
phases,
employs
adaptive
switching
mechanism.
Second,
avoid
original
algorithm
getting
trapped
local
optimum
during
levy
flight
adopted.
Lastly,
dynamic
lens-imaging
introduced
variety
facilitate
escape
optimum.
Then,
this
paper
proposes
modified
ARO,
namely
LBARO,
hybrid
that
combines
BDO
model.
LBARO
first
empirically
evaluated
comprehensively
demonstrate
superiority
proposed
algorithm,
using
8
benchmark
test
functions
4
UCI
datasets.
Subsequently,
integrated
into
process
model
classification
experimental
validation.
This
integration
validated
utilizing
NSL-KDD,
UNSW
NB-15,
InSDN
datasets,
respectively.
Experimental
results
indicate
based
on
successfully
reduces
characteristics
while
detection.</p>
Water,
Journal Year:
2024,
Volume and Issue:
16(2), P. 339 - 339
Published: Jan. 19, 2024
In
order
to
further
improve
the
accuracy
of
flood
routing,
this
article
uses
Variable
Exponential
Nonlinear
Muskingum
Model
(VEP-NMM),
combined
with
Artificial
Rabbit
Optimization
(ARO)
algorithm
for
parameter
calibration,
construct
ARO-VEP-NMM
routing
model.
Taking
Wilson’s
(1974)
as
an
example,
model
calculation
results
were
compared
and
analyzed
constructed
seven
optimization
algorithms.
At
same
time,
six
measured
floods
in
Zishui
Basin
selected
applicability
testing.
The
show
that
ARO
exhibits
stronger
robustness
search
ability
other
algorithms
can
better
solve
problem
use
accurately
reflects
movement
patterns
floods.
Nash
coefficient
Wilson
section
reached
0.9983,
average
during
validation
period
was
0.9,
verifying
adaptability
feasibility
routing.
research
provide
certain
references
a
theoretical
basis
improving
forecasting.