Research Square (Research Square),
Год журнала:
2022,
Номер
unknown
Опубликована: Дек. 5, 2022
Abstract
Unstructured
and
unorganized
data
always
degrade
the
performance
of
search
techniques
produce
irrelevant
results
in
response
to
query
as
well
decrease
speed
retrieval
results.
Ontology
Semantic
Web
(SW)
provides
an
adequate
solution
represent
knowledge,
because
its
backbone
knowledge
application
or
domain.
But,
a
domain
ontology
has
three
basic
problems
while
retrieving
useful
from
ontology-
structuring/arrangement,
unnecessary
reduction,
selection
extraction,
speeding
up
process.
To
handle
such
problem,
MLK-rBO
model
is
proposed
that
works
for
four
different
phases-
clustering,
discovery,
building
probabilistic
network,
evaluation
using
ensemble
approach
namely
rough
set,
Bayesian
network
(BN).
Finally,
tested
with
statistical
parameters
compared
other
models
DT,
RF,
SVM
check
effectiveness
MLK-rBO.
By
analyzing
experimental
results,
we
observed
gives
better
accuracy
(98.36
\%)
than
available
models.
Healthcare Analytics,
Год журнала:
2024,
Номер
6, С. 100353 - 100353
Опубликована: Июнь 25, 2024
In
recent
decades,
breast
cancer
has
become
the
most
prevalent
type
of
that
impacts
women
in
world,
which
shows
a
significant
risk
to
death
rates
women.
Early
identification
might
drastically
decrease
patient
mortality
and
greatly
improve
chance
an
effective
treatment.
modern
times,
machine
learning
models
have
crucial
for
classifying
strengthening
both
accuracy
efficiency
diagnostic
medical
treatment
strategies.
Therefore,
this
study
is
focused
on
early
detection
using
variety
algorithms
desires
identify
feature
selection
process
with
amalgamated
dataset.
Initially,
we
evaluated
five
traditional
two
meta-models
separate
datasets.
To
find
valuable
features,
used
Least
Absolute
Shrinkage
Selection
Operator
(LASSO)
as
well
SHapley
Additive
exPlanations
(SHAP)
methods
analyzed
them
through
wide
range
performance
regulations.
Additionally,
applied
these
combined
dataset
observed
mergeddataset
was
significantly
beneficial
diagnosis.
After
analyzing
strategies,
it
demonstrated
majority
performed
more
accurately
when
utilizing
SHAP
methodologies.
Notably,
three
meta-classifiers
obtained
99.82%,
demonstrating
superior
compared
state-of-the-art
methods.
This
advancement
holds
role
lays
foundation
refining
tools
enhancing
progression
science
field.
Procedia Computer Science,
Год журнала:
2023,
Номер
218, С. 2392 - 2400
Опубликована: Янв. 1, 2023
Breast
cancer
is
a
disease
that
primarily
affects
women,
but
it
can
also
affect
men,
although
in
much
smaller
percentage.
Recently,
doctors
have
made
great
strides
this
trend
of
early
detection
and
treatment
breast
to
reduce
the
number
deaths
caused
by
serious
disease.
Moreover,
researchers
are
analyzing
massive
amounts
sophisticated
medical
data
using
combination
statistical
machine
learning
approaches
help
clinicians
predict
cancer.
In
presented
work,
an
ontological
model
based
on
decision
tree
algorithm
capable
reliably
predicting
has
been
demonstrated.
The
method
consists
extracting
rules
from
distinguish
between
malignant
benign
patients,
then
implementing
these
reasoner
via
Semantic
Web
Rule
Language
(SWRL).
results
indicated
achieved
highest
prediction
accuracy
97.10%.
The
Internet
of
Behaviors
(IoB),
a
relatively
new
research
and
development
area,
can
be
considered
an
ecosystem
that
blends
technology,
advanced
data
analysis,
edge
analytics,
behavioral
science,
aims
to
aggregate,
analyze
comprehend,
from
the
standpoint
human
psychology,
users'
gathered
IoT
devices
online
platforms.
Then,
utilize
this
comprehension
alter
or
influence
behavior.
In
paper,
we
provide
up-to-date
literature
review
explain
$I
o
B$,
its
primary
characteristics,
connection
DKIW
pyramid.
focus
on
IoB
key-enablers
technologies,
summarize
main
application
fields
domains,
describe
challenges
addressed
by
ecosystem.
International Journal of Online and Biomedical Engineering (iJOE),
Год журнала:
2024,
Номер
20(02), С. 95 - 113
Опубликована: Фев. 14, 2024
Breast
cancer
is
one
of
the
most
significant
global
health
challenges.
Effective
diagnosis
and
prognosis
prediction
are
crucial
for
improving
patient
outcomes
in
case
this
disease.
As
machine
learning
(ML)
has
significantly
improved
models
many
disciplines,
goal
study
to
develop
a
ML
system
medical
specialists
that
can
accurately
predict
tumor
survival
breast
patients.
For
training
prediction,
five
algorithmic
models—decision
tree
(DT),
random
forest
(RF),
naive
bayes
(NB),
support
vector
machines
(SVMs),
gradient
boosting—were
trained
with
569
records
from
Cancer
Wisconsin
dataset
1,980
Gene
Expression
Profiles
dataset.
The
results
showed
NB
model
exhibited
better
performance
diagnosis,
achieving
an
accuracy
95.0%,
while
RF
presented
best
survival,
76.0%.
A
survey
experts’
experience
resulting
high
scores
reliability,
performance,
satisfaction,
usability,
efficiency,
confirming
systems
have
potential
improve
outcomes.
International Journal of Online and Biomedical Engineering (iJOE),
Год журнала:
2022,
Номер
18(11), С. 143 - 157
Опубликована: Авг. 31, 2022
Cardiovascular
disease
is
one
of
the
chronic
diseases
that
on
rise.
The
complications
occur
when
cardiovascular
not
discovered
early
and
correctly
diagnosed
at
right
time.
Various
machine
learning
approaches,
including
ontology-based
Machine
Learning
techniques,
have
lately
played
an
essential
role
in
medical
science
by
building
automated
system
can
identify
heart
illness.
This
paper
compares
reviews
most
prominent
algorithms,
as
well
classification.
Random
Forest,
Logistic
regression,
Decision
Tree,
Naive
Bayes,
k-Nearest
Neighbours,
Artificial
Neural
Network,
Support
Vector
were
among
classification
methods
explored.
dataset
used
consists
70000
instances
be
downloaded
from
Kaggle
website.
findings
are
assessed
using
performance
measures
generated
confusion
matrix,
such
F-Measure,
Accuracy,
Recall,
Precision.
results
showed
ontology
outperformed
all
algorithms.
International Journal of Advanced Computer Science and Applications,
Год журнала:
2024,
Номер
15(5)
Опубликована: Янв. 1, 2024
Everyday,
a
great
deal
of
children
and
young
adults
(aged
five
to
29)
lives
are
lost
in
road
accidents.
The
most
frequent
causes
driver's
behavior,
the
streets
infrastructure
is
lower
quality
delayed
response
emergency
services
especially
rural
areas.
There
need
for
automatics
accident
systems
detection
that
can
assist
recognizing
accidents
determining
their
positions.
This
work
reviews
existing
machine
learning
approaches
detection.
We
propose
three
distinct
classifiers:
Convolutional
Neural
Network
CNN,
Recurrent
Convolution
R-CNN
Support
Vector
Machine
SVM,
using
CCTV
footage
dataset.
These
models
evaluated
based
on
ROC
curve,
F1
measure,
precision,
accuracy
recall,
achieved
accuracies
were
92%,
82%,
93%,
respectively.
In
addition,
we
suggest
an
ensemble
strategy
maximize
strengths
individual
classifiers,
raising
94%.