Analysis
of
Stock
price
has
always
been
a
disparaging
topic
research
and
it
is
one
the
important
aspect
in
area
machine
learning.
Prediction
Price
helps
estimating
future
value
company
stock
some
other
financial
exchange.
The
main
aim
prediction
to
procure
significant
profits
trend.
Predicting
theway
how
market
may
perform
tedious
labor.
Some
factors
which
can
be
involved
are
psychological
physical
factors,
rational
irrational
practices,
many
more.
Such
make
share
prices
differ
alter
making
hard
predict
with
high
amount
accuracy.
Therefore,
this
paper
newer
skeleton
proposed
using
two
popular
fields:
Machine
learning
(ML)
Deep
(DL)
models.
Various
types
algorithms
taken
forecasting
trend
previous
years
like
Linear
Regression,
Ridge,
Lasso
Polynomial
Regression
from
LSTM
its
variants
proposed.
purpose
see
or
algorithm
cam
values
accurately.
Journal of Cancer Research and Clinical Oncology,
Journal Year:
2024,
Volume and Issue:
150(7)
Published: July 25, 2024
This
study
presents
a
robust
approach
for
the
classification
of
ovarian
cancer
subtypes
through
integration
deep
learning
and
k-nearest
neighbor
(KNN)
methods.
The
proposed
model
leverages
powerful
feature
extraction
capabilities
EfficientNet-B0,
utilizing
its
features
subsequent
fine-grained
using
fine-KNN
approach.
UBC-OCEAN
dataset,
encompassing
histopathological
images
five
distinct
subtypes,
namely,
high-grade
serous
carcinoma
(HGSC),
clear-cell
(CC),
endometrioid
(EC),
low-grade
(LGSC),
mucinous
(MC),
served
as
foundation
our
investigation.
With
dataset
comprising
725
images,
divided
into
80%
training
20%
testing,
exhibits
exceptional
performance.
Both
validation
testing
phases
achieved
100%
accuracy,
underscoring
efficacy
methodology.
In
addition,
area
under
curve
(AUC),
key
metric
evaluating
model's
discriminative
ability,
demonstrated
high
performance
across
various
with
AUC
values
0.94,
0.78,
0.69,
0.92,
0.94
MC.
Furthermore,
positive
likelihood
ratios
(LR
2022 IEEE 7th International conference for Convergence in Technology (I2CT),
Journal Year:
2024,
Volume and Issue:
unknown, P. 1 - 7
Published: April 5, 2024
Emotion
recognition
represents
a
critical
facet
of
human-centric
artificial
intelligence
systems.
This
paper
delves
into
the
forefront
emotion
detection
by
leveraging
cutting-edge
deep
learning
models
across
three
distinct
modalities:
textual,
visual,
and
auditory.
Our
text-based
model
harnesses
potency
Bidirectional
Long
Short-Term
Memory
(BiLSTM)
networks,
adept
at
capturing
intricate
semantic
relationships
contextual
nuances
within
textual
data.
Simultaneously,
we
employ
Convolutional
Neural
Networks
(CNNs)
in
domain
image-based
detection,
effectively
extracting
discriminative
spatial
features
to
discern
emotional
states
visual
content.
For
speech-based
recognition,
(LSTM)
capitalizing
on
their
ability
capture
temporal
dependencies
acoustic
signals.
These
modalities
converge
offer
comprehensive
insights
multimodal
where
fusion
auditory
information
enhances
classification
accuracy.
research
not
only
underscores
importance
analysis
but
also
holds
great
potential
for
applications
human-computer
interaction,
sentiment
analysis,
mental
health
diagnostics,
multimedia
content
understanding.
By
elucidating
strengths
synergies
these
modalities,
this
contributes
significantly
burgeoning
field
emotion-aware
AI
systems,
promising
more
nuanced
understanding
human
emotions
an
increasingly
digital
world.
Heliyon,
Journal Year:
2024,
Volume and Issue:
10(17), P. e37386 - e37386
Published: Sept. 1, 2024
Ovarian
tumors,
especially
malignant
ones,
represent
a
global
concern,
with
increased
prevalence
in
recent
years.
More
accurate
medical
support
systems
are
urgently
needed
to
staff
obtaining
an
efficient
ovarian
tumors
diagnosis
since
detection
early
stages
could
lead
immediately
applying
appropriate
treatment,
and
implicitly
improving
the
survival
rate.
The
current
paper
aims
demonstrate
that
more
be
designed
by
combining
different
convolutional
neural
networks
using
custom
combination
approaches
selecting
involved
ensemble
model
achieve
best
performance
metrics.
It
is
essential
understand
if
all
experimented
or
only
best-performing
ones
always
most
effective
results
not.
structured
three
main
phases.
first
step
propose
individual
experiments.
Five
DeepLab-V3+
encoders
(ResNet-18,
ResNet-50,
MobileNet-V2,
InceptionResNet-V2,
Xception)
were
used.
In
second
step,
proposes
algorithm
combine
multiple
semantic
segmentation
networks,
while
last
describes
iterative
selection
approach
for
combined
so
obtained.
system
performing
types
of
covering
both
benign
achieved
91.18
%
Intersection
over
union
(IoU),
thus
overperforming
networks.
proposed
method
extended
powerful
deep
learning
models
Emotion
detection
and
recognition
from
text
is
a
recent
field
of
research
that
closely
related
to
Sentiment
analysis.
Many
people
express
themselves
using
text,
photographs,
music,
video.
Text
communication
web-based
networking
platforms,
however,
could
be
little
overwhelming.
Every
second,
substantial
amount
unstructured
data
produced
on
the
Internet
as
result
social
media
sites.
This
where
sentiment
analysis,
which
recognises
polarity
in
texts,
can
useful.
It
assesses
author's
attitude
towards
specific
object,
administration,
person,
or
location
concludes
if
it
positive,
negative,
neutral.
In
some
cases,
analysis
inadequate,
necessitating
emotion
detection,
precisely
ascertains
person's
mental/emotional
state.
The
development
text-based
prediction
model
primary
goal
this
work.
confronting
several
market
hurdles,
with
accuracy
being
key
one.
As
result,
Decision
Trees,
Naive
Bayes,
Support
Vector
Machine,
Logistic
Regression,
k-Nearest
Neighbors
Random
Forest,
supervised
machine
learning
classification
algorithms
were
examined.
six
main
emotions
recognized
by
Ekman
are
joy,
fear,
anger,
love,
surprise,
sadness,
these
foundation
through
was
constructed.
strategies
for
preprocessing
containing
stemming,
stop-words,
numerals,
punctuation
marks
removal,
tokenization,
spelling
correction
implemented.
review
paper
delves
into
degrees
models
well
technique
text.
This
study
revolves
around
the
crucial
task
of
early
Alzheimer's
disease
(AD)
detection
using
machine
learning
algorithms.
Leveraging
a
dataset
6400
preprocessed
MRI
images,
research
rigorously
evaluates
spectrum
models,
encompassing
Support
Vector
Machines
(SVM)
with
diverse
kernels,
multidimensional
Linear
Discriminant
Analysis
(LDA),
comprehensive
Principal
Component
(PCA),
and
Convolutional
Neural
Networks
(CNN)
integrated
within
architecture
EfficientNetB0.
Significantly,
SVM
model,
utilizing
linear
kernel,
emerges
as
standout
performer,
achieving
an
impressive
accuracy
98%
in
AD
remarkable
98.7%
classification.
These
findings
distinctly
underscore
efficacy
particularly
when
harnessed
potent
tools
for
precise