Computer-aided detection systems based on ballistocardiography signals: A review
Engineering Applications of Artificial Intelligence,
Journal Year:
2025,
Volume and Issue:
151, P. 110669 - 110669
Published: April 12, 2025
Language: Английский
A novel CTGAN-ENN hybrid approach to enhance the performance and interpretability of machine learning black-box models in intrusion detection and IoT
Future Generation Computer Systems,
Journal Year:
2025,
Volume and Issue:
unknown, P. 107882 - 107882
Published: May 1, 2025
Language: Английский
Adaptive Mask-Based Interpretable Convolutional Neural Network (AMI-CNN) for Modulation Format Identification
Xiyue Zhu,
No information about this author
Yu Cheng,
No information about this author
Jiafeng He
No information about this author
et al.
Applied Sciences,
Journal Year:
2024,
Volume and Issue:
14(14), P. 6302 - 6302
Published: July 19, 2024
Recently,
various
deep
learning
methods
have
been
applied
to
Modulation
Format
Identification
(MFI).
The
interpretability
of
models
is
important.
However,
this
challenged
due
the
black-box
nature
learning.
To
deal
with
difficulty,
we
propose
an
Adaptive
Mask-Based
Interpretable
Convolutional
Neural
Network
(AMI-CNN)
that
utilizes
a
mask
structure
for
feature
selection
during
neural
network
training
and
feeds
selected
features
into
classifier
decision
making.
During
training,
masks
are
updated
dynamically
parameters
optimize
selection.
extracted
serves
as
interpretable
weights,
each
weight
corresponding
feature,
reflecting
contribution
model’s
decision.
We
validate
model
on
two
datasets—Power
Spectral
Density
(PSD)
constellation
phase
histogram—and
compare
it
three
classical
methods:
Gradient-Weighted
Class
Activation
Mapping
(Grad-CAM),
Local
Model-Agnostic
Explanations
(LIME),
Shapley
Additive
exPlanations
(SHAP).
MSE
values
follows:
AMI-CNN
achieves
lowest
0.0246,
followed
by
SHAP
0.0547,
LIME
0.0775,
Grad-CAM
0.1995.
Additionally,
highest
PG-Acc
1,
whether
PSD
or
histogram.
Experimental
results
demonstrate
outperforms
compared
in
both
qualitative
quantitative
analyses.
Language: Английский
Curvature index of image samples used to evaluate the interpretability informativeness
Engineering Applications of Artificial Intelligence,
Journal Year:
2024,
Volume and Issue:
137, P. 109044 - 109044
Published: Aug. 8, 2024
Language: Английский
Automating Athletic Excellence Through Intelligent Process Automation and Sports Analytics
Mohandass Lingappan,
No information about this author
Swaminathan Sethu,
No information about this author
T. Parasuraman
No information about this author
et al.
Advances in computational intelligence and robotics book series,
Journal Year:
2024,
Volume and Issue:
unknown, P. 179 - 200
Published: Sept. 20, 2024
This
study
examines
the
profound
influence
of
artificial
intelligence
(AI)
on
sports
industry,
including
its
effects
games,
training
methods,
fan
involvement,
and
player
well-being.
text
explores
how
is
transforming
several
aspects
industry
by
analysing
current
trends
future
predictions.
AI-powered
intelligent
referees
are
being
developed
to
enhance
fairness
accuracy
refereeing,
while
personalised
experiences
created
increase
spectator
engagement.
Furthermore,
implementation
health
aid
virtual
reality
environments
expected
performance
raise
safety
standards.
The
integration
technology
athleticism
in
has
potential
revolutionise
field
AI,
creating
a
mutually
beneficial
connection
between
innovation
human
accomplishment.
will
ultimately
improve
whole
experience
for
everyone
involved.
Language: Английский
Finnish perspective on using synthetic health data to protect privacy: the PRIVASA project
Applied Computing and Intelligence,
Journal Year:
2024,
Volume and Issue:
4(2), P. 138 - 163
Published: Jan. 1, 2024
<p>The
use
of
synthetic
data
could
facilitate
data-driven
innovation
across
industries
and
applications.
Synthetic
can
be
generated
using
a
range
methods,
from
statistical
modeling
to
machine
learning
generative
AI,
resulting
in
datasets
different
formats
utility.
In
the
health
sector,
is
often
motivated
by
privacy
concerns.
As
AI
becoming
an
everyday
tool,
there
need
for
practice-oriented
insights
into
prospects
limitations
data,
especially
sensitive
domains.
We
present
interdisciplinary
outlook
on
topic,
focusing
on,
but
not
limited
to,
Finnish
regulatory
context.
First,
we
emphasize
working
definitions
avoid
misplaced
assumptions.
Second,
consider
cases
viewing
it
as
helpful
tool
experimentation,
decision-making,
building
literacy.
Yet
complementary
uses
should
diminish
continued
efforts
collect
share
high-quality
real-world
data.
Third,
discuss
how
privacy-preserving
fall
existing
protection
frameworks.
Neither
process
generation
nor
are
automatically
exempt
obligations
concerning
personal
Finally,
explore
future
research
directions
generating
conclude
discussing
potential
developments
at
societal
level.</p>
Language: Английский