Deep Learning for Financial Markets: A Case-Based Analysis of BRICS Nations in the Era of Intelligent Forecasting
Shake Ibna Abir,
Mohammad Hasan Sarwer,
Mahmud Hasan
и другие.
Journal of Economics Finance and Accounting Studies,
Год журнала:
2025,
Номер
7(1), С. 01 - 15
Опубликована: Янв. 5, 2025
In
this
paper,
we
develop
a
method
based
on
deep
learning
in
financial
market
prediction,
which
includes
BRICS
economies
as
the
test
cases.
Financial
markets
are
rife
with
volatility
that
is
affected
by
"bed
of
complexity,"
coddled
local
and
distal
factors.
To
leverage
these
vast
datasets
both
models
such
Convolutional
Neural
Networks
(CNNs),
Long
Short
Term
Memory
(LSTM)
networks
well
hybrid
architectures
used
study.
The
paper
evaluates
predictive
accuracy
models,
so
doing,
identifies
their
strengths
predicting
temporal
dependencies
intricate
patterns.
particular,
techniques
applied
to
case
studies
individual
countries
highlight
application
disparate
country
specific
problems,
liquidity
crises
shocks.
These
findings
show
classical
statistical
methods
outperformed
systems
precise
reliable
forecasting.
This
research
highlights
ability
AI
driven
change
decision
making
processes,
improving
investor
confidence
economic
stability
nations.
study
also
readers
value
analysis,
especially
developing
countries.
Application
e.g.
(CNNs)
excel
at
identifying
spatial
patterns,
Short-Term
renowned
for
prowess
sequential
time
series
data,
real
world
prediction
explained.
addition,
discusses
extend
knowledge,
fusing
improve
how
develops
solve
particular
challenges.
Through
reading
notes
get
exposed
data
preprocessing
normalization
feature
selection
important
boosting
performance.
an
introduction
evaluation
using
MSE
R-squared
values
validating
them
terms
outputs.
combines
theory
practical
offer
useful
educational
resource
students,
researchers,
practitioners
who
want
apply
forecasting
complex
dynamic
global
markets.
Язык: Английский
Comparative Analysis of Currency Exchange and Stock Markets in BRICS Using Machine Learning to Forecast Optimal Trends for Data-Driven Decision Making
Shake Ibna Abir,
Shariar Islam Saimon,
Tui Rani Saha
и другие.
Journal of Economics Finance and Accounting Studies,
Год журнала:
2025,
Номер
7(1), С. 26 - 48
Опубликована: Янв. 8, 2025
The
BRICS
nations’
economies
show
that
the
countries
are
global
financial
powerhouses
whose
currency
exchange
rates
and
stock
markets
have
influence
globally.
In
this
paper,
analysis
of
forecast
trends
in
both
Currency
Exchange
Stock
Markets
using
a
dual
layered
machine
learning
approach
exposing
models
such
as
Long
Short
Term
Memory
(LSTM),
Random
Forest,
Gradient
Boosting
Support
vector
machines
(SVM)
is
conducted.
Their
performance
tested
twice,
first
on
then
market
data,
to
compare
them
basis
predictive
power
deliver
actionable
insights.
Each
model
applied
separately,
study
mainly
uses
extensive
historical
datasets
from
economies.
Benchmarking
done
metrics
Mean
Absolute
Error
(MAE),
Root
Square
(RMSE)
R-squared
values.
For
exchange,
LSTM
turned
out
be
most
effective
it
can
handle
sequence
time
series
data.
best
for
forecasting
was
achieved
by
Boosting,
which
adept
at
finding
complex
nonlinear
relationships.
Forest
proved
consistent
across
Datasets
but
SVM
found
challenged
Scalability
Data
Complexity,
with
relatively
lower
accuracy.
research
goes
repeat
comparative
each
different
models,
illustrate
subtle
differences
between
techniques
their
capacity
effectively
process
all
varieties.
Predictive
accuracy
reliability
further
enhanced
reconcile
conflicting
creating
an
ensemble
algorithms.
These
findings
provide
robust
framework
informed
decision
making
stakeholders
identify
more
stable
hence
profitable
context.
results
add
expansion
application
finance
demonstrating
how
tailored
algorithms
offer
significant
economic
planning
investment
strategy
plans.
Язык: Английский
Accelerating BRICS Economic Growth: AI-Driven Data Analytics for Informed Policy and Decision Making
Shake Ibna Abir,
Mohammad Hasan Sarwer,
Mahmud Hasan
и другие.
Journal of Economics Finance and Accounting Studies,
Год журнала:
2024,
Номер
6(6), С. 102 - 115
Опубликована: Дек. 30, 2024
This
paper
analyzes
how
the
Artificial
Intelligence
(AI)
and
Machine
Learning
(ML)
are
bridging
gap
between
economic
growth
in
BRICS
countries.
countries
emerging
economies
that
challenged
by
increasing
income
inequality,
industrial
transformation
need
for
infrastructure
development.
Driven
AI,
this
study
applies
data
analytics
to
macroeconomic
datasets,
tracking
down
patterns
functional
takeaways
regarding
policy
formulation
strategic
decision
making.
The
research
employs
techniques,
including
predictive
modeling,
clustering,
natural
language
processing
(NLP),
areas
such
as
trade
optimization,
resource
allocation
labour
market
analysis.
Case
examples
document
successful
introduction
of
AI
systems
solve
critical
problems,
from
healthcare
access
raising
productivity
agriculture.
findings
illustrate
role
ML
helping
policymakers
an
informed,
driven
puts
core
process
advancement,
a
solution
developmental
gaps
driver
growth.
contributes
both
its
practical
outcomes
providing
insights
into
can
complex
problems
markets.
introduces
which
anticipates
trends
based
on
past
clustering
groups
similar
behaviors
find
tools
important
Further,
Natural
Language
Processing
(NLP)
is
covered
highly
effective
approach
understand
documents,
news,
unstructured
improve
ability
make
decisions.
By
students,
researchers,
these
powered
techniques
optimize
trade,
management
labor,
scalable
solutions
sustainable
development
available.
touts
innovation
means
global
challenges,
well-equipped
readers
with
skills
knowledge
leverage
progress
geography
dynamic
connected.
Язык: Английский