Advances in hospitality, tourism and the services industry (AHTSI) book series,
Год журнала:
2024,
Номер
unknown, С. 133 - 160
Опубликована: Окт. 18, 2024
Cryptocurrency,
based
on
block-chain
technology
is
defined
as
a
decentralized
digital
peer-to-peer
currency.
The
emergence
of
cryptocurrency
boon
for
future
economy;
it
has
been
tagged
along
with
innumerable
practical
and
legal
issues
including
risks
associated
consumer's
protection
such
theft,
misinformation,
unpredictability;
complexity
surrounding
the
characterization
cryptocurrencies,
illegal
activities
driven
through
cryptocurrencies
lack
uniform
comprehensive
global
legislation
to
address
challenges
it.
Though
valiant
efforts
have
made
by
few
countries
like
Canada,
United
Kingdom,
Switzerland,
El
Salvador
etc.
formulate
broad
range
rules
regulations
currency
but
other
developed
developing
economies
largely
remained
silent
debate
regulation
cryptocurrencies.
This
chapter
seeks
explore
into
risk
posed
provide
need
formulation
structure
appropriate
regulating
Journal of Computer Science and Technology Studies,
Год журнала:
2024,
Номер
6(1), С. 68 - 75
Опубликована: Янв. 13, 2024
This
research
explores
the
application
of
four
deep
learning
architectures—Multilayer
Perceptron
(MLP),
Recurrent
Neural
Networks
(RNN),
Long
Short-Term
Memory
(LSTM),
and
Convolutional
(CNN)—in
predicting
stock
prices
using
historical
data.
Focusing
on
day-wise
closing
from
National
Stock
Exchange
(NSE)
India
New
York
(NYSE),
study
trains
neural
network
NSE
data
tests
it
both
NYSE
stocks.
Surprisingly,
CNN
model
outperforms
others,
successfully
despite
being
trained
Comparative
analysis
against
ARIMA
underscores
superior
performance
networks,
emphasizing
their
potential
in
forecasting
market
trends.
sheds
light
shared
underlying
dynamics
between
distinct
markets
demonstrates
efficacy
architectures
price
prediction.
Journal of Computer Science and Technology Studies,
Год журнала:
2024,
Номер
6(1), С. 155 - 161
Опубликована: Янв. 28, 2024
Breast
cancer
stands
as
one
of
the
most
prevalent
and
perilous
forms
affecting
both
women
men.
The
detection
treatment
breast
benefit
significantly
from
histopathological
images,
which
carry
crucial
phenotypic
information.
To
enhance
accuracy
in
detection,
Deep
Neural
Networks
(DNNs)
are
commonly
utilized.
Our
research
delves
into
analysis
pre-trained
deep
transfer
learning
models,
including
ResNet50,
ResNet101,
VGG16,
VGG19,
for
identifying
using
a
dataset
comprising
2453
histopathology
images.
categorizes
images
two
groups:
those
featuring
invasive
ductal
carcinoma
(IDC)
without
IDC.
Through
our
we
observed
that
ResNet50
outperformed
other
achieving
impressive
metrics
such
rates
92.2%,
Area
under
Curve
(AUC)
91.0%,
recall
95.7%,
minimal
loss
3.5%.
Journal of Business and Management Studies,
Год журнала:
2024,
Номер
6(2), С. 126 - 131
Опубликована: Апрель 11, 2024
This
research
examines
the
potential
of
Convolutional
Neural
Networks
(CNNs),
including
VGG16,
ResNet50,
and
InceptionV3,
in
predicting
ecommerce
profits.
Emphasizing
importance
high-quality
datasets,
study
showcases
superior
performance
CNN
models
over
traditional
algorithms,
particularly
noting
a
notable
accuracy
rate
92.55%
with
(VGG16).
These
results
highlight
deep
learning's
capability
to
extract
actionable
insights
from
complex
data,
offering
significant
opportunities
for
revenue
optimization
operational
efficiency
improvement.
The
conclusion
underscores
need
investment
infrastructure
expertise
successful
integration,
alongside
ethical
privacy
considerations.
contributes
valuable
discourse
on
learning
ecommerce,
guidance
businesses
navigating
competitive
global
market
landscape.
Journal of Business and Management Studies,
Год журнала:
2024,
Номер
6(1), С. 230 - 237
Опубликована: Фев. 13, 2024
This
research
delves
into
the
transformative
impact
of
deep
learning,
specifically
Convolutional
Neural
Networks
(CNNs)
such
as
VGG16,
ResNet50,
and
InceptionV3,
on
organizational
management
business
intelligence.
The
study
follows
a
comprehensive
methodology,
emphasizing
importance
high-quality
datasets
in
leveraging
learning
for
enhanced
decision-making.
Results
demonstrate
superior
performance
CNN
models
over
traditional
algorithms,
with
(VGG16)
achieving
an
accuracy
rate
89.45%.
findings
underscore
potential
extracting
meaningful
insights
from
complex
data,
offering
paradigm
shift
optimizing
various
processes.
article
concludes
by
significance
investing
infrastructure
expertise
successful
integration,
ensuring
ethical
considerations,
addressing
data
privacy
concerns.
contributes
to
growing
discourse
application
management,
providing
valuable
resource
businesses
navigating
dynamic
landscape
global
market.
Journal of Business and Management Studies,
Год журнала:
2024,
Номер
6(3), С. 21 - 27
Опубликована: Май 7, 2024
This
article
explores
a
machine
learning
approach
focused
on
predicting
bank
customer
behavior,
emphasizing
deep
methods.
Various
architectures,
including
CNNs
like
VGG16,
ResNet50,
and
InceptionV3,
are
compared
with
traditional
algorithms
such
as
Random
Forest
SVM.
Results
show
models,
particularly
outperform
ones,
an
accuracy
of
86.66%.
A
structured
methodology
ensures
ethical
data
use.
Investing
in
infrastructure
expertise
is
crucial
for
successful
integration,
offering
competitive
edge
banking
decision-making.
Journal of Computer Science and Technology Studies,
Год журнала:
2024,
Номер
6(2), С. 62 - 70
Опубликована: Апрель 20, 2024
Cardiovascular
diseases,
including
myocardial
infarction,
present
significant
challenges
in
modern
healthcare,
necessitating
accurate
prediction
models
for
early
intervention.
This
study
explores
the
efficacy
of
machine
learning
algorithms
predicting
leveraging
a
dataset
comprising
various
clinical
attributes
sourced
from
patients
with
heart
failure.
Six
models,
Logistic
Regression,
Support
Vector
Machine,
XGBoost,
LightGBM,
Decision
Tree,
and
Bagging,
are
evaluated
based
on
key
performance
metrics
such
as
accuracy,
precision,
recall,
F1
Score,
AUC.
The
results
reveal
XGBoost
top
performer,
achieving
an
accuracy
94.80%
AUC
90.0%.
LightGBM
closely
follows
92.50%
92.00%.
Regression
emerges
reliable
option
85.0%.
underscores
potential
enhancing
infarction
prediction,
offering
valuable
insights
decision-making
healthcare
intervention
strategies.
Journal of Business and Management Studies,
Год журнала:
2024,
Номер
6(2), С. 153 - 160
Опубликована: Апрель 20, 2024
This
study
explores
the
transformative
impact
of
deep
learning,
specifically
Convolutional
Neural
Networks
(CNNs),
on
organizational
decision-making
in
stock
market.
Utilizing
CNN
architectures
like
VGG16,
ResNet50,
and
InceptionV3,
research
emphasizes
significance
leveraging
learning
for
improved
business
intelligence
management.
It
highlights
superiority
models
over
traditional
algorithms,
with
VGG16
achieving
an
accuracy
rate
90.45%.
The
underscores
potential
extracting
valuable
insights
from
complex
data,
leading
to
a
shift
optimizing
processes.
Additionally,
it
stresses
importance
investing
infrastructure
expertise
successful
integration,
alongside
addressing
ethical
privacy
concerns.
Through
dive
into
real-time
mathematical
concepts,
provides
functionality
offers
comparisons
between
different
architectures,
aiding
specialized
applications
such
as
market
trends.
Journal of Computer Science and Technology Studies,
Год журнала:
2024,
Номер
6(1), С. 170 - 178
Опубликована: Фев. 12, 2024
This
article
presents
a
systematic
review
of
research
on
predicting
human
behavior
through
unstructured
textual
data,
employing
comprehensive
selection
process
illustrated
in
flow
diagram.
The
categorizes
82
selected
papers
into
three
primary
behavioral
domains:
emotional,
social,
and
cognitive.
Each
paper
undergoes
meticulous
examination,
identifying
objectives,
algorithms,
computational
models,
applications.
Natural
language
processing
(NLP)
emerges
as
dominant
text
mining
approach,
utilized
over
half
the
literature,
followed
by
data
extraction,
report
arrangement,
clusterization.
study
further
employs
VOSviewer
to
visualize
co-occurrence
term
"text
mining,"
revealing
prevalent
associations
emphasizing
challenges
analyzing
efficiently.
contributes
understanding
evolving
landscape
analysis
mining,
addressing
need
for
automated
methods
evaluating
individuals'
attitudes,
emotions,
or
performance.
Journal of Computer Science and Technology Studies,
Год журнала:
2024,
Номер
6(1), С. 217 - 224
Опубликована: Март 13, 2024
This
study
analyzes
machine
learning
algorithms
to
predict
the
need
for
corticosteroid
(CS)
therapy
in
COVID-19
patients
based
on
initial
assessments.
Using
data
from
1861
patients,
parameters
like
blood
tests
and
pulmonary
function
were
examined.
Decision
Tree
XGBoost
emerged
as
top
performers,
achieving
accuracy
rates
of
80.68%
83.44%
respectively.
Multilayer
Perceptron
AdaBoost
also
showed
competitive
performance.
These
findings
highlight
potential
AI
guiding
CS
decisions,
with
standing
out
effective
tools
patient
identification.
research
offers
valuable
insights
personalized
medicine
infectious
disease
management.
Journal of Business and Management Studies,
Год журнала:
2024,
Номер
6(3), С. 28 - 34
Опубликована: Май 7, 2024
This
research
delves
into
the
transformative
impact
of
deep
learning,
specifically
Convolutional
Neural
Networks
(CNNs)
such
as
VGG16,
ResNet50,
and
InceptionV3,
on
organizational
management
business
intelligence.
The
study
follows
a
comprehensive
methodology,
emphasizing
importance
high-quality
datasets
in
leveraging
learning
for
enhanced
decision-making.
Results
demonstrate
superior
performance
CNN
models
over
traditional
algorithms,
with
(VGG19)
achieving
an
accuracy
rate
89.45%.
findings
underscore
potential
extracting
meaningful
insights
from
complex
data,
offering
paradigm
shift
optimizing
various
processes.
article
concludes
by
significance
investing
infrastructure
expertise
successful
integration,
ensuring
ethical
considerations,
addressing
data
privacy
concerns.
contributes
to
growing
discourse
application
management,
providing
valuable
resource
businesses
navigating
dynamic
landscape
global
market.