In
recent
years,
with
the
improvement
of
computer
problem-solving
ability
and
continuous
development
progress
artificial
intelligence
technology,
application
"AI+"
has
gradually
appeared,
that
is,
technology
been
used
in
various
industries.
For
example,
field
management,
as
a
manager,
he
needs
to
constantly
improve
his
management
ability,
so
buy
management-related
books.
order
help
grasp
historical
price
trend
related
books,
this
paper
takes
book
"21
Rules
Deep
Management"
an
puts
forward
method
analyze
predict
books
by
using
machine
learning
algorithm
model.
This
first
analyzes
visualizes
data,
initially
understands
data
distribution;
Then
there
is
modeling
mining
deep
information
six
models
are
model
respectively.
After
above
training
completed,
can
be
analyzed
predicted,
problem
obtaining
lowest
solved.
Ecological Modelling,
Journal Year:
2024,
Volume and Issue:
492, P. 110691 - 110691
Published: April 8, 2024
Species
distribution
modeling
has
emerged
as
a
foundational
method
to
predict
occurrence
and
suitability
of
species
in
relation
environmental
variables
advance
ecological
understanding
guide
conservation
planning.
Recent
research,
however,
shown
that
species-environmental
relationships
habitat
model
predictions
are
often
nonstationary
space,
time
context.
This
calls
into
question
approaches
assume
global,
stationary
realized
niche
use
predictive
describe
it.
paper
explores
this
issue
by
comparing
the
performance
models
for
wildcat
hybrid
based
on
(1)
global
pooled
data
across
individuals,
(2)
geographically
weighted
aggregation
individual
models,
(3)
ecologically
(4)
combinations
geographical
weighting.
Our
study
system
included
GPS
telemetry
from
14
hybrids
Scotland.
We
developed
both
using
Generalized
Linear
Models
(GLM)
Random
Forest
machine
learning
compare
these
differing
algorithms
how
they
analyses.
validated
predicted
four
different
ways.
First,
we
used
independent
hold-out
collared
hybrids.
Second,
8
additional
previous
were
not
training
sample.
Third,
sightings
sent
public
researchers
expert
opinion.
Fourth,
collected
camera
trap
surveys
between
2012
–
2021
various
sources
produce
combined
dataset
showing
where
wildcats
had
been
detected.
results
show
validation
individuals
train
provides
highly
biased
assessment
true
other
locations,
with
particular
appearing
perform
exceptionally
(and
inaccurately)
well
when
same
models.
Very
obtained
three
sources.
Each
sets
gave
result
terms
best
overall
model.
The
average
datasets
suggested
produced
potential
was
an
ensemble
Model
GLM
suggests
debate
over
whether
which
vs
is
superior
or
aggregated
may
be
false
choice.
presented
here
prediction
applies
combination
all
framework.
Ecological Informatics,
Journal Year:
2024,
Volume and Issue:
81, P. 102564 - 102564
Published: March 18, 2024
Tree
growth
models
are
an
important
and
essential
part
of
modeling
forest
dynamics
valuable
tools
for
management
planning
biodiversity
conservation
strategies.
We
applied
three
different
machine
learning
models,
namely
Artificial
Neural
Networks
(ANN),
Support
Vector
Machine
(SVM)
Random
Forest
(RF)
to
predict
tree
at
the
plot-level
in
Atlantic
Brazil.
attributes,
land
use
history,
landscape,
soil
climatic
characteristics
were
used
modeling.
Recursive
Feature
Elimination
was
select
best
subset
predictor
variables.
found
that
edaphic,
attributes
variables
shaping
Brazilian
Forest.
Soil
acidity
most
characteristic.
The
methods
efficient.
method
showed
superiority
over
others
Nemenyi
test
pointed
out
difference
between
RF
model
other
techniques
greater
than
calculated
critical
(CD).
can
be
tool
fragments
They
help
understanding
biome
developing
strategies
aimed
recovering
reducing
deleterious
effects
fragmentation.
Journal of Animal Ecology,
Journal Year:
2023,
Volume and Issue:
92(9), P. 1786 - 1801
Published: May 23, 2023
Understanding
the
spatial
dynamics
and
drivers
of
wildlife
pathogens
is
constrained
by
sampling
logistics,
with
implications
for
advancing
field
landscape
epidemiology
targeted
allocation
management
resources.
However,
visually
apparent
diseases,
when
combined
remote-surveillance
distribution
modelling
technologies,
present
an
opportunity
to
overcome
this
landscape-scale
problem.
Here,
we
investigated
disease,
using
clinical
signs
sarcoptic
mange
(caused
Sarcoptes
scabiei)
in
its
bare-nosed
wombat
(BNW;
Vombatus
ursinus)
host.
We
used
53,089
camera-trap
observations
from
over
3261
locations
across
68,401
km2
area
Tasmania,
Australia,
data
ensemble
species
(SDM).
investigated:
(1)
variables
predicted
drive
habitat
suitability
host;
(2)
host
associated
disease
(3)
environmental
conditions
at
greatest
risk
occurrence,
including
some
Bass
Strait
islands
where
BNW
translocations
are
proposed.
showed
that
Tasmanian
landscape,
ecosystems
therein,
nearly
ubiquitously
suited
BNWs.
Only
high
mean
annual
precipitation
reduced
In
contrast,
BNWs
were
widespread,
but
heterogeneously
distributed
landscape.
Mange
(which
environmentally
transmitted
BNWs)
was
most
likely
be
observed
areas
increased
suitability,
lower
precipitation,
near
sources
freshwater
topographic
roughness
minimal
(e.g.
human
modified
landscapes,
such
as
farmland
intensive
land-use
areas,
shrub
grass
lands).
Thus,
a
confluence
host,
anthropogenic
appear
influence
transmission
S.
scabiei.
identified
Islands
highly
suitable
mix
low
pathogen.
This
study
largest
assessment
any
species,
advances
understanding
research
illustrates
how
host-pathogen
co-suitability
can
useful
allocating
resources
Biodiversity and Conservation,
Journal Year:
2025,
Volume and Issue:
unknown
Published: Feb. 20, 2025
Abstract
Southeast
Asia
hosts
more
felid
species
than
any
other
region
and,
although
smaller
(<
30
kg)
felids
have
important
ecological
roles,
regional
conservation
has
mainly
focused
on
a
few
charismatic
big
cats.
Information
the
ecology
and
status
of
small
is
often
lacking
or
geographically
limited.
We
used
empirically
derived
scale-optimized
models
for
seven
in
three
regions
(mainland,
Borneo
Sumatra)
to
evaluate
effectiveness
existing
protected
areas
network
preserving
suitable
habitats,
map
protection.
Finally,
we
assessed
whether
are
good
proxies
broader
terrestrial
biodiversity.
On
mainland,
largest
most
habitats
occurred
Northern
Forest
Complex
Myanmar
between
Eastern
Myanmar,
Laos
Vietnam.
In
these
also
highlighted
areas.
Borneo,
central
highlands
Sabah.
Sumatra,
strongholds
habitat
suitability
were
Barisan
Mountains,
western
extent
island,
highly
concentrated
within
found
that
aggregated
was
correlated
strongly
vertebrate
biodiversity
single
individually,
suggesting
multiple
an
association
with
high
overall
Overall,
our
assessment
distribution
highlights
fundamental
importance
conservation,
given
associated
large
extents
forest.
Our
results
clarion
call
expand
extent,
improve
management,
remaining
core
Asia,
work
enhance
protect
connectivity
them
ensure
long-term
demographic
genetic
exchange
among
region’s
wildlife
populations.
Landscape Ecology,
Journal Year:
2024,
Volume and Issue:
39(5)
Published: May 15, 2024
Abstract
Context
Resource
selection
functions
are
powerful
tools
for
predicting
habitat
of
animals.
Recently,
machine-learning
methods
such
as
random
forest
have
gained
popularity
due
to
their
flexibility
and
strong
predictive
performance.
Objectives
We
tested
two
continental-scale,
second-order
a
wide-ranging
large
carnivore,
the
mountain
lion
(
Puma
concolor
),
support
continent-wide
conservation
management,
including
estimating
abundance,
predict
suitability
recolonizing
or
reintroduced
Methods
compared
generalized
linear
model
(GLM)
using
GPS
location
data
from
476
individuals
across
20
study
sites
in
western
USA
Canada
remotely-sensed
landscape
data.
internally
validated
models
examined
ability
correctly
classify
used
available
points
by
calculating
area
under
receiver
operating
characteristics
(AUC).
performed
leave-one-out
(LOO)
out-of-sample
tests
strength
on
both
models.
Results
Both
suggested
that
lions
select
steeper
slopes,
areas
closer
water,
with
higher
normalized
difference
vegetation
index
(NDVI),
against
variables
associated
human
impact.
The
(AUC
=
0.94)
demonstrated
can
be
accurately
predicted
at
continental
scales,
outperforming
traditional
GLM
0.68).
Our
LOO
validation
provided
similar
results
(x̄
0.93
x̄
0.65
GLM).
Conclusions
found
added
deeper
insights
into
how
individual
covariates
impacted
diverse
ecosystems.
analyses
our
unoccupied
where
local
unavailable.
thus
provides
tool
discussions
relevant
management
metapopulation
abundance.
African Journal of Ecology,
Journal Year:
2025,
Volume and Issue:
63(3)
Published: April 1, 2025
ABSTRACT
Ecology's
strength
lies
in
its
ability
to
explain
and
predict
interactions
between
organisms
their
environment.
However,
African
ecological
research
has
historically
been
dominated
by
descriptive
studies,
focusing
on
biodiversity
patterns,
species
distributions,
behavioural
observations
or
monitoring
of
large
mammal
populations
(especially
East
savannahs).
This
pattern
also
traditionally
characterised
the
studies
community
ecology.
While
valuable,
these
often
fall
short
providing
predictive
insights
essential
for
addressing
pressing
challenges
such
as
climate
change,
ecosystem
resilience.
We
advocate
a
paradigm
shift
ecology—moving
beyond
description
hypothesis‐driven,
research.
Community
ecology
Africa
can
transcend
documentation
uncover
mechanisms
underlying
processes
integrating
methodologies
null
models,
Monte
Carlo
simulations
modelling
based
upon
data
mining
techniques.
Predictive
interactions,
assembly
functions
have
potential
enhance
both
theoretical
applied
science,
ensuring
global
relevance.
Curriculum
reforms
statistics
methodological
training
academic
institutions
will
be
crucial
fostering
this
transformation.
As
Journal
Ecology
seeks
champion
transition,
we
urge
researchers
embrace
frameworks
that
not
only
document
but
provide
actionable
into
dynamics.
could
achieved
re‐analysing
long‐term
sets
published
several
less‐distributed
journals,
other
languages
than
English.
is
critical
positioning
at
forefront
international
discourse,
driving
impactful
conservation
management
strategies.