Multitask Learning and Bandits via Robust Statistics
Management Science,
Journal Year:
2025,
Volume and Issue:
unknown
Published: Jan. 6, 2025
Decision
makers
often
simultaneously
face
many
related
but
heterogeneous
learning
problems.
For
instance,
a
large
retailer
may
wish
to
learn
product
demand
at
different
stores
solve
pricing
or
inventory
problems,
making
it
desirable
jointly
for
serving
similar
customers;
alternatively,
hospital
network
patient
risk
providers
allocate
personalized
interventions,
hospitals
populations.
Motivated
by
real
data
sets,
we
study
natural
setting
where
the
unknown
parameter
in
each
instance
can
be
decomposed
into
shared
global
plus
sparse
instance-specific
term.
We
propose
novel
two-stage
multitask
estimator
that
exploits
this
structure
sample-efficient
way,
using
unique
combination
of
robust
statistics
(to
across
instances)
and
LASSO
regression
debias
results).
Our
yields
improved
sample
complexity
bounds
feature
dimension
d
relative
commonly
employed
estimators;
improvement
is
exponential
“data-poor”
instances,
which
benefit
most
from
learning.
illustrate
utility
these
results
online
embedding
our
within
simultaneous
contextual
bandit
algorithms.
specify
dynamic
calibration
appropriately
balance
bias-variance
trade-off
over
time,
improving
resulting
regret
context
d.
Finally,
value
approach
on
synthetic
sets.
This
paper
was
accepted
J.
George
Shanthikumar,
science.
Supplemental
Material:
The
appendix
files
are
available
https://doi.org/10.1287/mnsc.2022.00490
.
Language: Английский
Using Contingency Management with a Deposit Contract to Increase Toothbrushing Accuracy with College Students
Journal of Behavioral Education,
Journal Year:
2025,
Volume and Issue:
unknown
Published: Jan. 28, 2025
Language: Английский
Exploring parental opinions on oral hygiene behavior and knowledge of their young children in Lithuania: a cross-sectional survey study
Yvonne A.B. Buunk‐Werkhoven,
No information about this author
Rasa Tamulienė,
No information about this author
Daiva Mačiulienė
No information about this author
et al.
Frontiers in Oral Health,
Journal Year:
2025,
Volume and Issue:
6
Published: April 29, 2025
Background
An
appropriately
formulated
oral
health
education
program
carefully
based
on
research,
can
increase
knowledge,
change
behavior
in
a
positive
direction
and
improve
self-confidence.
This
study
aimed
to
examine
parental
opinions
their
children's
hygiene
(OHB)
knowledge
(OHK)
among
pre-
primary
school
children
Kaunas,
Lithuania.
Methods
In
this
cross-sectional
study,
an
online
33-question
survey
was
conducted
before
after
World
Oral
Health
Day
March
20
assess
the
skills,
eating
habits,
demographics
of
5–12
year
children.
A
total
532
parents
participated,
with
data
from
420
parents,
mainly
married
mothers
(average
age
37.3
years)
being
analyzed.
Most
participants
had
higher
education,
lived
one
three
children,
average
7
years
for
oldest
child.
Results
used
manual
toothbrush.
The
adapted
OHB
index
showed
that
most
generally
good
control
over
tooth
brushing
many
twice
daily
using
fluoride
toothpaste.
One-third
always
re-brushed
child's
teeth
child
brushed
independently.
Parents
demonstrated
strong
care,
as
reflected
high
scores
OHK
index.
correlation
found
between
(
r
=
0.14,
p
0.05).
Younger
were
more
frequently,
linked
frequent
re-brushing,
particularly
less
than
10
years,
better
but
did
not
demonstrate
OHB.
Conclusions
insights
gained
into
help
implement
evidence-based
preventive
approach
practices.
Language: Английский
Improving Treatment Responses through Limited Nudges: A Data-Driven Learning and Optimization Approach
Published: Jan. 1, 2024
Language: Английский
Evaluate Closed-Loop, Mindless Intervention in-the-Wild: A Micro-Randomized Trial on Offset Heart Rate Biofeedback
Published: Sept. 22, 2024
Language: Английский
Multitask Learning and Bandits via Robust Statistics
SSRN Electronic Journal,
Journal Year:
2024,
Volume and Issue:
unknown
Published: Jan. 1, 2024
Decision-makers
often
simultaneously
face
many
related
but
heterogeneous
learning
problems.
For
instance,
a
large
retailer
may
wish
to
learn
product
demand
at
different
stores
solve
pricing
or
inventory
problems,
making
it
desirable
jointly
for
serving
similar
customers;
alternatively,
hospital
network
patient
risk
providers
allocate
personalized
interventions,
hospitals
populations.
Motivated
by
real
datasets,
we
study
natural
setting
where
the
unknown
parameter
in
each
instance
can
be
decomposed
into
shared
global
plus
sparse
instance-specific
term.
We
propose
novel
two-stage
multitask
estimator
that
exploits
this
structure
sample-efficient
way,
using
unique
combination
of
robust
statistics
(to
across
instances)
and
LASSO
regression
debias
results).
Our
yields
improved
sample
complexity
bounds
feature
dimension
d
relative
commonly-employed
estimators;
improvement
is
exponential
"data-poor"
instances,
which
benefit
most
from
learning.
illustrate
utility
these
results
online
embedding
our
within
simultaneous
contextual
bandit
algorithms.
specify
dynamic
calibration
appropriately
balance
bias-variance
tradeoff
over
time,
improving
resulting
regret
context
d.
Finally,
value
approach
on
synthetic
datasets.
Language: Английский