Journal
of
Economic
Psychology
83
(2021)
102350
Contents
lists
available
at
ScienceDirect
Journal
of
Economic
Psychology
journal
homepage:
www.elsevier.com/locate/joep
Replication:
Revisiting
Tversky
and
Shafir’s
(1992)
Disjunction
Effect
with
an
extension
comparing
between
and
within
subject
designs
Ignazio
Ziano
a,
1
,
Man
Fai
Kong
b,
1
,
Hong
Joo
Kim
b,
1
,
Chit
Yu
Liu
b,
1
,
Sze
Chai
Wong
b,
1
,
Bo
Ley
Cheng
b
,
Gilad
Feldman
b,
*
a
b
Grenoble
Ecole
de
Management,
F-38000
Grenoble,
France
Department
of
Psychology,
University
of
Hong
Kong,
Hong
Kong
Special
Administrative
Region
A
R
T
I
C
L
E
I
N
F
O
A
B
S
T
R
A
C
T
Keywords:
Disjunction
effect
Replication
Judgment
and
decision-making
Uncertainty
Risk
Between
versus
within
subject
design
Does
uncertainty
about
an
outcome
influence
decisions?
The
sure-thing
principle
(Savage,
1954)
posits
that
it
should
not,
but
Tversky
and
Shafir
(1992)
found
that
people
regularly
violate
it
in
hypothetical
gambling
and
vacation
decisions,
a
phenomenon
they
termed
“disjunction
effect”.
Very
close
replications
and
extensions
of
Tversky
and
Shafir
(1992)
were
conducted
in
this
paper
(N
=
890,
MTurk).
The
target
article
demonstrated
the
effect
using
two
paradigms
in
a
between-
subject
design:
here,
an
extension
also
testing
a
within-subject
design,
with
design
being
randomly
assigned
was
added.
These
results
were
consistent
with
the
original
findings
for
the
“paying
to
know“
problem
(original:
Cramer’s
V
=
0.22,
95%
(CI)
[0.14,
0.32];
replication:
Cramer’s
V
=
0.30,
95%
CI
[0.24,
0.37]),
yet
not
for
the
“choice
under
risk”
problem
(original:
Cramer’s
V
=
0.26,
95%
CI
[0.14,
0.39];
replication:
Cramer’s
V
=
0.11,
95%
CI
[−
0.07,
0.20]).
The
within-subject
extension
showed
very
similar
results.
Implications
for
the
disjunction
effect
and
judgment
and
decision-making
theory
are
discussed,
and
a
call
for
improvements
on
the
statistical
understanding
of
comparisons
of
between-subject
and
within-subject
designs
is
intro
duced.
All
materials,
data,
and
code
are
available
on
https://osf.io/gu58m/.
1.
Introduction
The
sure-thing
principle
(STP;
Savage,
1954)
is
an
axiom
of
rational
choice
theory.
It
posits
that
if
decision-makers
are
willing
to
make
the
same
decision
regardless
of
whether
an
external
event
happens
or
not,
then
decision-makers
should
also
be
willing
to
make
the
same
decision
when
the
outcome
of
the
event
is
uncertain.
Tversky
and
Shafir
(1992),
however,
found
that
people
regularly
violate
the
STP.
In
a
“paying-to-know”
paradigm
they
found
that
participants
were
willing
to
pay
a
small
fee
to
postpone
a
decision
about
a
vacation
package
promotion
when
outcome
of
an
exam
was
uncertain,
despite
preferences
to
purchase
the
package
regardless
of
exam
outcome.
Using
a
“choice
under
risk”
problem,
they
found
that
facing
uncertainty
about
the
outcome
of
an
initial
bet
led
to
less
willingness
to
again
accept
the
exact
same
bet,
compared
to
when
having
learned
the
outcome
of
the
first
bet.
Tversky
and
Shafir
(1992)
attributed
this
effect
–
coined
“disjunction
effect”
–
to
the
relative
ease
of
coming
up
with
reasons
for
*
Corresponding
author.
E-mail
addresses:
Ignazio.ZIANO@grenoble-em.com
(I.
Ziano),
boleystudies@gmail.com
(B.L.
Cheng),
gfeldman@hku.hk
(G.
Feldman).
1
Contributed
equally,
joint
first
authors.
https://doi.org/10.1016/j.joep.2020.102350
Received
2
April
2020;
Received
in
revised
form
24
November
2020;
Accepted
17
December
2020
Available
online
24
December
2020
0167-4870/©
2020
Elsevier
B.V.
All
rights
reserved.
Paying
to
know
Choice
under
risk
Choice
Win
Loss
Uncertain
Inferential
Statistics
ES
[95%
CI]
N
Choice
Win
Loss
Uncertain
Tversky
&
Shafir,
1992,
original
(within-
subject)
/
/
/
/
/
/
/
98
Accept
(%)
68
(69%)
58
(59%)
35
(34%)
/
/
/
/
/
/
/
199
Buy
(%)
36
(54%)
38
(57%)
21
(32%)
χ
2
(4)
=
19.02,
Cramer’s
V
=
0.218
[0.137,
0.317]
30
(31%)
40
(41%)
49
(69%)
1
63
(66%)
Tversky
&
Shafir,
1992,
original
(between-
subject)
Reject
(%)
Accept
(%)
11
(16%)
20
(30%)
/
8
(12%)
21
(31%)
/
4
(7%)
41
(61%)
22
(31%)
1
31
(43%)
1
/
Not
buy
(%)
Pay
$5
(%)
/
/
/
/
/
/
/
/
/
/
/
/
/
/
/
/
/
/
/
/
/
/
/
/
/
/
/
/
/
/
/
/
/
/
/
/
/
/
/
/
/
/
/
/
/
/
/
/
/
/
/
/
/
/
/
/
/
/
/
/
/
/
/
/
/
/
/
/
/
/
/
/
/
/
/
/
/
/
/
/
/
445
Buy
(%)
256
(58%)
127
(29%)
99
(22%)
Tversky
&
Shafir,
1992,
modified
gambles
(between-subject)
2
Kühberger
et
al.,
2001,
exp.
1
(between-
subject)
Kühberger
et
al.,
2001,
exp.
2
(between-
subject)
Kühberger
et
al.,
2001,
exp.
3
(within-
subject)
Kühberger
et
al.,
2001,
exp.
4
(between-
subject)
Lambdin
&
Burdsal,
2007
(within-subject)
Present
work
(within-
subject)
p
<
.001
213
Reject
(%)
†
171
177
184
35
97
55
445
40
(57%)
1
Inferential
Statistics
ES
[95%
CI]
χ
2
(2)
=
13.89,
Cramer’s
V
=
0.255
[0.144,
0.394]
χ
2
(2)
=
0.76,
Cramer’s
V
=
0.067
[−
0.108,
0.218]
…
…
…
…
…
…
…
…
p
<
.001
Accept
(%)
42
(73%)
1
39
(69%)
1
43
(75%)
1
Reject
(%)
Accept
(%)
15
(27%)
1
18
(31%)
1
14
(25%)
1
(60%)
2
(47%)
2
(47%)
2
(40%)
2
(53%)
2
(53%)
2
(83%)
2
(70%)
2
(62%)
2
Reject
(%)
(17%)
2
(30%)
2
(38%)
2
Accept
(%)
28
(80%)
1
13
(37%)
1
15
(43%)
1
…
…
Reject
(%)
Accept
(%)
7
(20%)
1
22
(63%)
1
20
(57%)
1
…
…
(68%)
2
(32%)
2
(38%)
2
…
…
(32%)
2
35
(64%)
20
(36%)
164
(37%)
(68%)
2
26
(47%)
31
(53%)
187
(42%)
(62%)
2
21
(38%)
…
…
…
…
…
…
Reject
(%)
Accept
(%)
Reject
(%)
Accept
(%)
Reject
(%)
Accept
(%)
34
(62%)
165
(37%)
p
=
.68
†
(continued
on
next
page)
Journal
of
Economic
Psychology
83
(2021)
102350
N
I.
Ziano
et
al.
Table
1
Descriptive
and
omnibus
inferential
statistics,
across
original
studies
and
replications.
I.
Ziano
et
al.
Table
1
(continued
)
Paying
to
know
N
Present
work
(between-
subject)
445
Choice
Choice
under
risk
Win
Loss
Uncertain
3
Not
buy
(%)
Pay
$5
(%)
Buy
(%)
97
(22%)
92
(21%)
58
(39%)
247
(56%)
71
(16%)
61
(42%)
168
(38%)
178
(40%)
25
(16%)
Not
buy
(%)
Pay
$5
(%)
38
(26%)
52
(35%)
61
(42%)
22
(16%)
29
(19%)
99
(65%)
Inferential
Statistics
ES
[95%
CI]
N
Friedman
χ
2
(2)
=
132.678,
p
<
.001
χ
2
(4)
=
81.00,
p
<
.001
Cramer’s
V
=
0.302
[0.239,
0.368]
445
Choice
Win
Loss
Uncertain
Reject
(%)
281
(63%)
258
(58%)
280
(63%)
Accept
(%)
46
(31%)
56
(38%)
65
(44%)
Reject
(%)
102
(69%)
92
(62%)
84
(56%)
Inferential
Statistics
ES
[95%
CI]
Cochran’s
Q
(2)
=
4.63,
p
=
.099
χ
2
(2)
=
4.99,
p
=
.082
Cramer’s
V
=
0.106
[−
0.067,
0.202]
1
Reconstructed
cell
Ns.
Impossible
to
recover
cell
N
because
no
cell
size
is
specified.
†
No
appropriate
omnibus
effect
size.
/
Absent.
-
-
-
Impossible
to
calculate
without
original
data.
2
Journal
of
Economic
Psychology
83
(2021)
102350
Journal
of
Economic
Psychology
83
(2021)
102350
I.
Ziano
et
al.
Table
2
Comparison
of
differences
across
conditions.
Tversky
&
Shafir,
1992
(within-subjects)
Inferential
statistics
Effect
size
[95%
CI]
Tversky
&
Shafir,
1992
(between-subjects)
Inferential
statistics
Paying
to
know,
,
difference
in
%
Pay
$5
across
conditions
Choice
under
risk,
difference
in
%
Accept
across
conditions
N
Pass-Fail
Pass-Uncertain
Fail-Uncertain
N
Win-Loss
Win-:
Uncertain
Loss-
Uncertain
/
/
/
/
98
10
35
25
/
/
199
/
/
−
1
/
/
−
31
/
/
−
30
213
…
†
14
…
†
31
…
†
17
χ
2
(2)
=
0.552,
p
=
.759
χ
2
(2)
=
14.437,
χ
2
(1)
=
1.927,
χ
2
(1)
=
12.484,
p
<
.001
Cramer’s
V
=
0.31
[0.168,
0.482]
χ
2
(1)
=
4.07,
Cramer’s
V
=
0.329
[0.188,
0.505]
χ
2
(2)
=
12.676,
p
=
.001
Cramer’s
V
=
0.308
[0.171,
0.484]
/
/
1
−
4
χ
2
(1)
=
Effect
size
[95%
CI]
p
<
.001
p
=
.165
Tversky
&
Shafir,
1992,
modified
gambles
(between-subjects)
Inferential
statistics
/
Cramer’s
V
=
0.064
[−
0.122,
0.231]
/
/
/
/
/
χ
2
(1)
=
0.171,
p
=
.68
χ
2
(1)
<
0.001,
p
>
.99
Effect
size
[95%
CI]
/
/
/
/
Kühberger
et
al.,
2001,
exp.
1
(between-subject)
Inferential
statistics
/
/
/
/
Cramer’s
V
=
0.058
[−
0.094,
0.258]
13
Cramer’s
V
=
0.02
[−
0.093,
0.207]
13
/
/
/
/
χ
2
<
2.14,
χ
2
<
2.14,
Effect
size
[95%
CI]
Kühberger
et
al.,
2001,
exp.
2
(between-subject)
Inferential
statistics
/
/
/
/
/
/
/
/
χ
2
<
2.14,
p
>
.14
…
26
/
/
/
/
χ
2
(1)
=
2.76,
/
/
/
/
/
/
/
/
χ
2
(1)
=
6.50,
p
=
.01
…
39
χ
2
(1)
=
0.88,
Effect
size
[95%
CI]
Kühberger
et
al.,
2001,
exp.
3
(within-subject)
Inferential
statistics
Effect
size
[95%
CI]
Kühberger
et
al.,
2001,
exp.
4
(between-subject)
Inferential
statistics
p
=
.10
…
44
/
/
/
/
/
/
/
/
/
/
/
/
p
<
.001
p
<
.001
p
=
.73
35
30
5
/
/
/
/
χ
2
(1)
=
8.02,
/
35
/
17
/
26
/
9
χ
2
(1)
=
6.24,
p
=
.01
…
/
χ
2
(1)
=
0.19,
Effect
size
[95%
CI]
Lambdin
&
Burdsal,
2007
(within-subject)
Inferential
statistics
Effect
size
[95%
CI]
Present
work
(within-subject)
Inferential
statistics
p
=
.005
…
/
445
…
…
−
5
…
…
−
19
…
…
−
24
/
/
−
5
/
/
0
/
/
−
5
χ
2
(3)
=
χ
2
(3)
=
152.08,
p
<
.001
χ
2
(3)
=
85.72,
p
<
.001
χ
2
(1)
=
2.989,
p
=
.084
χ
2
(1)
=
0.007,
p
=
.936
χ
2
(1)
=
†
−
30
†
−
50
†
−
7
†
−
13
χ
2
(2)
=
28.88,
χ
2
(2)
=
75.24,
p
<
.001
Cramer’s
V
=
0.503
[0.394,
0.619]
χ
2
(1)
=
1.496,
χ
2
(1)
=
4.991,
p
=
.025
Cramer’s
V
=
0.13
[−
0.058,
0.25]
Effect
size
[95%
CI]
Present
work
(between-subject)
Inferential
statistics
Effect
size
[95%
CI]
445
138.38,
p
<
.001
†
−
20
χ
2
(2)
=
17.53,
p
<
.001
Cramer’s
V
=
0.245
[0.146,
0.363]
p
<
.001
Cramer’s
V
=
0.31
[0.207,
0.426]
No
appropriate
omnibus
effect
size.
Absent.
-
-
-
Impossible
to
recalculate
from
original
paper.
†
/
4
171
177
171
184
97
445
445
Cramer’s
V
=
0.131
[−
0.083,
0.307]
−
2
p
=
.04
p
>
.14
…
18
p
=
.221
Cramer’s
V
=
0.071
[−
0.058,
0.194]
Cramer’s
V
=
0.183
[0.08,
0.357]
0.391,
p
=
.531
Cramer’s
V
=
0.078
[−
0.094,
0.278]
0
p
>
.14
…
6
p
=
.35
…
5
p
=
.66
…
/
4.481,
p
=
.034
†
−
6
χ
2
(1)
=
1.03,
p
=
.31
Cramer’s
V
=
0.059
[−
0.058,
0.182]
Journal
of
Economic
Psychology
83
(2021)
102350
I.
Ziano
et
al.
Table
3
Attention
check
results.
Response
alternative
1
(Not
at
all
characteristic
of
me)
2
(A
little
characteristic
of
me)
3
(Somewhat
characteristic
of
me)
4
(Very
characteristic
of
me)
5
(Entirely
characteristic
of
me)
“Never
answer
scales
in
online
studies
seriously”*
“Always
carefully
read
and
answer
each
item
on
online
surveys”**
Counts
%
of
total
Counts
%
of
total
834
19
19
14
4
93.7%
2.1%
2.1%
1.6%
0.4%
1
9
19
81
780
0.1%
1.0%
2.1%
9.1%
87.6%
*M
=
1.13;
SD
=
0.55
(here,
lower
numbers
indicate
higher
attentiveness).
**M
=
4.83,
SD
=
0.51
(here,
higher
numbers
indicate
higher
attentiveness).
making
definitive
choices
that
definitive
outcomes
provide,
compared
to
uncertain
ones.
They
argued
the
following:
when
people
envision
that
they
have
passed
an
exam,
they
could
easily
come
up
with
reasons
to
go
on
vacation
(“let’s
celebrate!”);
when
people
envision
they
have
failed
an
exam,
they
could
easily
find
opposite
reasons
to
go
on
vacation
(“let’s
live
a
little!”);
yet,
an
uncertain
outcome
does
not
elicit
good
reasons
to
make
a
definitive
decision.
1.1.
Chosen
target
for
replication:
Tversky
and
Shafir
(1992)
We
chose
Tversky
and
Shafir
(1992)
due
to
the
impact
the
article
has
had,
the
lack
of
direct
close
replications,
and
open
questions
regarding
the
findings
(Coles,
Tiokhin,
Scheel,
Isager,
&
Lakens,
2018;
Lambdin
&
Burdsal,
2007;
Li,
Jiang,
Dunn,
&
Wang,
2012).
We
identified
several
potential
contributions
and
clarifications
that
could
be
achieved
by
revisiting
this
classic,
and
we
discuss
those
further
below.
The
original
article
has
been
highly
influential
across
disciplines
because
it
provided
a
new
model
of
decision-makers,
one
that
is
based
on
rationalization
and
not
on
expected
value.
At
the
time
of
writing,
the
article
had
been
cited
664
times
according
to
Google
Scholar.
Furthermore,
highly
influential
theoretical
papers
about
decision-making
in
psychology
(Shafir,
Simonson,
&
Tversky,
1993),
marketing
(Simonson
&
Tversky,
1992)
and
management
(Tversky
&
Simonson,
1993)
were
directly
based
on
this
empirical
finding.
Tversky
and
Shafir
claimed
support
for
the
disjunction
effect
in
both
“choice
under
risk”
and
“paying
to
know“
paradigms,
and
for
these
to
hold
for
both
between-subject
and
within-subject
experimental
designs.
Tversky
and
Shafir
did
not
report
any
inferential
statistics
in
their
paper,
limiting
the
discussion
of
their
results
to
descriptives.
The
“choice
under
risk”
results
are
not
without
controversy.
Kühberger,
Komunska,
and
Perner
(2001)
failed
to
replicate
the
“choice
under
risk”
problem
four
times,
and
Lambdin
and
Burdsal
(2007)
also
failed
to
find
support
for
a
disjunction
effect
(as
Fig.
1.
Tversky
and
Shafir
(1992)
original
studies’
results
and
present
replications
results.
5
Journal
of
Economic
Psychology
83
(2021)
102350
I.
Ziano
et
al.
conceptualized
by
the
original
authors).
However,
it
may
be
that
neither
replication
team
had
sufficient
power
to
detect
a
disjunction
effect
in
two-step
gambles.
Moreover,
Li
et
al.
(2012)
found
support
for
the
disjunction
effect
in
a
conceptual
replication
involving
a
World
Cup
scenario,
and
mixed
support
for
the
disjunction
effect
in
a
variation
of
the
two-steps
gambles
problem.
Further,
there
are
no
known
direct
replications
of
the
“paying
to
know”
problem.
Given
the
paper’s
influence
across
fields
and
the
controversy
surrounding
the
findings,
we
decided
to
attempt
a
pre-registered
well-powered
replication
using
a
between-subject
design
resembling
the
original
study.
We
summarized
our
review
of
the
current
findings
in
the
literature
in
Tables
1
and
2.
1.2.
Extension:
Testing
both
between-subject
and
within-subject
designs
We
decided
to
also
test
the
robustness
of
the
disjunction
effect
by
conducting
an
extension,
adding
a
conceptual
replication
of
both
the
“choice
under
risk“
and
the
“paying
to
know”
paradigms
in
a
within-subject
design
(joint
evaluation),
in
which
all
participants
are
exposed
to
all
experimental
conditions.
There
is
some
evidence
that
people
make
different
judgments
and
decisions
when
evaluating
different
options
jointly
compared
to
when
they
are
in
separate
evaluation
(Hsee,
1996).
Such
differences
are
interesting
for
both
theoretical
and
practical
reasons,
as
they
highlight
the
“on-the-fly”
nature
of
preference
construction,
and
may
give
indications
on
how
to
construct
choice
menus
in
order
to
achieve
desired
goals
(Sunstein,
2018).
It
is
not
entirely
clear
which
problems
in
judgments
and
decision-making
are
affected
by
evaluation
mode,
and
to
what
extent
(Lambdin
&
Shaffer,
2009).
Note
that
in
the
original
paper,
results
were
very
similar
and
in
support
of
the
disjunction
effect
when
using
either
within-subject
or
the
between-subject
experimental
designs.
This
extension
would
therefore
provide
theoretically
interesting
insights
into
the
nature
of
the
disjunction
effect
and
the
impact
of
study
design
on
a
classic
problem
in
judgment
and
decision-making.
2.
Method
2.1.
Pre-registrations
and
open
data
We
first
pre-registered
the
experiment
on
the
Open
Science
Framework
(OSF)
and
data
collection
was
launched
later
that
week.
Pre-registrations,
disclosures,
power
analyses,
and
all
materials
are
available
in
the
supplementary
materials.
These
together
with
datasets
and
code
were
made
available
on
the
OSF
at
https://osf.io/gu58m/.
All
measures,
manipulations,
and
exclusions
for
this
investigation
are
reported,
and
data
collection
was
completed
before
analyses.
Pre-registrations
are
available
on
the
OSF:
https://osf.
io/fzchj.
2.2.
Procedure
and
participants
We
recruited
a
total
of
890
participants
from
Mechanical
Turk
(405
males,
483
females,
2
other/prefer
not
to
disclose,
M
age
=
40,
SD
age
=
11.35),
who
were
paid
$1.38
for
this
task,
administered
as
part
of
a
multi-study
replication
effort.
We
ran
the
replications
both
using
a
between-subject
design
as
in
the
original
paper,
and
using
a
within-subject
design,
randomly
assigned.
Specifically,
half
of
participants
completed
the
“choice
under
risk”
problem
between-subject
and
the
“paying
to
know”
problem
within-subject;
the
other
half
completed
the
“paying
to
know”
problem
between-subject
and
the
“choice
under
risk”
problem
within-subject.
In
the
between-subject
replication
of
choice
under
risk
and
the
within-subject
replication
of
“paying
to
know”,
445
participants
(194
male,
250
female,
1
other/would
rather
not
disclose,
M
age
=
39.2,
SD
age
=
11.32)
were
randomly
assigned
to
one
of
the
three
conditions
of
the
“choice
under
risk”
scenario
(Win,
Loss,
or
Uncertain)
and
all
conditions
in
the
“paying
to
know”
scenario
(Pass,
Fail,
Uncertain)
presented
in
randomized
order.
In
the
within-subject
replication
of
“choice
under
risk”
and
the
between-subject
replication
of
“paying
to
know”,
445
participants
(211
males,
233
females,
1
other/would
rather
not
disclose,
M
age
=
40.1,
SD
age
=
11.38)
were
randomly
assigned
to
one
of
the
three
conditions
of
the
“paying
to
know”
scenario
(Pass,
Fail,
Uncertain)
and
all
conditions
in
the
“choice
under
risk”
scenario
(Win,
Loss,
or
Uncertain)
presented
in
randomized
order.
We
employed
two
checks,
which
indicated
that
participants
were
very
attentive
(Table
3).
Following
our
pre-registered
plan,
we
report
analyses
below
based
on
data
from
all
participants,
maximizing
statistical
power.
2.3.
How
to
analyze
the
disjunction
effect?
Lambdin
and
Burdsal
(2007)
argued
that
disjunction
effects
can
only
be
observed
using
within-subject
designs,
i.e.,
by
observing
how
participants
change
their
choice
of
a
bet
or
of
a
vacation
in
uncertain
situations
compared
to
certain
situations,
and
then
clas
sifying
them
as
displaying
a
disjunction
effect.
This
approach
certainly
has
merits,
because
of
its
granularity
and
precision.
Our
goal
for
this
replication
was
to
compare
our
findings
with
the
original
findings.
Using
Lambdin
and
Burdsal
(2007)
approach
is
unfeasible,
as
it
would
require
the
original
data
and
to
limit
the
comparison
to
only
a
within-subject
design.
Further,
using
Lambdin
and
Burdsal
(2007)’s
method
is
uninformative
for
our
goals,
as
Tversky
and
Shafir
(1992)
measured
the
disjunction
effect
at
the
group
level
in
between-subjects
studies,
and
at
the
condition
level
in
within-subjects.
For
both
these
reasons
(unfeasibility
and
impossibility
of
comparison),
we
decided
to
compare
group
proportions
as
in
the
original
paper.
6
Journal
of
Economic
Psychology
83
(2021)
102350
I.
Ziano
et
al.
2.4.
Scenarios
2.4.1.
“Paying
to
know”
In
the
“paying
to
know“
paradigm,
participants
read
the
following
scenarios
(differences
between
the
scenarios
are
underlined):
[Pass/Fail
Version]
“Imagine
that
you
have
just
taken
a
tough
qualifying
examination.
It
is
the
end
of
the
semester,
you
feel
tired
and
run-down,
and
you
find
out
that
you
[passed
the
exam
/
failed
the
exam.
You
will
have
to
take
it
again
in
a
couple
of
months—after
the
Christmas
holidays.]
You
now
have
an
opportunity
to
buy
a
very
attractive
5-day
Christmas
vacation
package
to
Hawaii
at
an
exceptionally
low
price.
The
special
offer
expires
tomorrow.
[Uncertain
Version]
“Imagine
that
you
have
just
taken
a
tough
qualifying
examination.
It
is
the
end
of
the
fall
quarter,
you
feel
tired
and
run-down,
and
you
are
not
sure
that
you
passed
the
exam.
In
case
you
failed
you
have
to
take
the
exam
again
in
a
couple
of
months—after
the
Christmas
holidays.
You
now
have
an
opportunity
to
buy
a
very
attractive
5-day
Christmas
vacation
package
to
Hawaii
at
an
exceptionally
low
price.
The
special
offer
expires
tomorrow,
while
the
exam
grade
will
not
be
available
until
the
following
day.
Once
presented
with
a
scenario,
participants
had
to
make
a
choice
between
three
options:
1)
“I
would
buy
the
vacation
package“,
2)
“I
would
not
buy
the
vacation
package”,
and
3)
“I
would
pay
a
$5
nonrefundable
fee
in
order
to
retain
the
rights
to
buy
the
vacation
package
at
the
same
exceptional
price
the
day
after
tomorrow“.
2.4.2.
“Choice
under
risk”
In
the
“choice
under
risk“
scenario,
participants
were
assigned
to
one
of
the
following
scenarios:
[Win/Loss
version]
“Imagine
that
you
have
just
played
a
game
of
chance
that
gave
you
a
50%
chance
to
win
$200
and
a
50%
chance
to
lose
$100.
The
coin
was
tossed
and
you
have
[won
$200
/
lost
$100].
You
are
now
offered
a
second
identical
gamble:
50%
chance
to
win
$200
and
50%
chance
to
lose
$100
[Uncertain
version]
“Imagine
that
the
coin
has
already
been
tossed,
but
that
you
will
not
know
whether
you
have
won
$200
or
lost
$100
until
you
make
your
decision
concerning
a
second,
identical
gamble:
50%
chance
to
win
$200
and
50%
chance
to
lose
$100
Once
presented
with
a
scenario,
participants
then
indicated
whether
they
would
accept
or
reject
the
second
bet.
2.5.
Clarifications
about
effect
sizes
Across
between-subject
scenarios,
we
used
Cramer’s
V
as
a
standardized
effect
size.
However,
Cramer’s
V
is
bounded
at
0
and
1.
One
could
therefore
find
similar
Cramer’s
V
in
two
studies,
but
a
completely
different
pattern
of
results.
Further,
the
calculation
of
95%
CIs
around
Cramer’s
V
is
problematic
for
the
same
reason.
We
calculated
95%
CIs
with
the
R
package
DescTools
(Signorell,
2016)
that
provides
with
negative
pseudo-lower
bounds.
Finally,
Cramer’s
V
cannot
be
used
for
within-subject
designs.
We
chose
to
include
it
to
give
a
broader
indication
of
an
unstandardized
effect
size,
but
given
these
limitations,
we
caution
against
the
over-reliance
on
Cramer’s
V
and
instead
invite
the
reader
to
give
more
weight
to
descriptive
statistics.
3.
Results
Descriptives
and
inferential
statistics
are
provided
in
Tables
1
and
2,
and
findings
are
plotted
in
Fig.
1.
3.1.
“Paying
to
know”
3.1.1.
Between-subject
design
replication
In
the
Fail
condition,
only
22/144
(15%)
participants
chose
to
pay
the
$5
to
reserve
the
vacation
price,
in
the
Pass
condition,
this
proportion
increased
to
52/148
(35%),
and
in
the
Uncertain
condition
99/153
(65%)
participants
indicated
that
they
would
pay
the
$5.
This
pattern
was
largely
consistent
with
the
original
results,
with
a
sharp
increase
in
the
proportion
of
participants
choosing
to
pay
$5
to
reserve
in
the
Uncertain
condition
compared
to
the
Pass
and
the
Fail
conditions.
We
conducted
a
test
for
equality
of
proportions
and
found
support
for
an
omnibus
effect
of
condition
on
decision
(
χ
2
(4)
=
81.00,
p
<
.001,
Cramer’s
V
=
0.302,
[0.239,
0.368]).
We
proceeded
to
conduct
three
pairwise
tests
for
equality
of
proportion.
We
found
support
for
differences
between
the
Pass
and
the
Fail
conditions
(
χ
2
(2)
=
17.53,
p
<
.001,
Cramer’s
V
=
0.245,
[0.146,
0.363]),
support
for
differences
between
the
Fail
and
the
Uncertain
conditions
(
χ
2
(2)
=
75.24,
p
<
.001,
Cramer’s
V
=
0.503,
[0.394,
0.619]),
and
7
Journal
of
Economic
Psychology
83
(2021)
102350
I.
Ziano
et
al.
support
for
differences
between
the
Pass
and
the
Uncertain
conditions
(
χ
2
(2)
=
28.88,
p
<
.001,
Cramer’s
V
=
0.31,
[0.207,
0.426]).
Dwass-Steel-Critchlow-Fligner
comparisons
in
a
Kruskal-Wallis
ANOVA,
which
control
for
multiple
comparisons,
showed
no
support
for
differences
between
the
Pass
and
the
Fail
conditions
(W
=
3.153,
p
=
.066),
and
support
for
differences
between
the
Fail
and
the
Uncertain
conditions
(W
=
11.34,
p
<
.001)
and
for
the
Pass
and
the
Uncertain
conditions
(W
=
7.58,
p
<
.001).
3.1.2.
Within-subject
design
replication
In
the
Fail
condition,
71/445
(16%)
participants
chose
to
pay
the
$5
to
reserve
the
vacation
price,
in
the
Pass
condition
this
proportion
increased
to
92/445
(21%),
and
in
the
Uncertain
condition
178/445
(40%)
participants
indicated
that
they
would
pay
the
$5.
As
in
the
between-subject
replication,
this
pattern
of
results
was
consistent
with
original
findings.
We
conducted
three
pairwise
multiple
comparisons
using
McNemar’s
test
for
repeated
measures.
We
found
support
for
differences
between
the
Pass
and
Fail
conditions
(
χ
2
(3)
=
138.38,
p
<
.001),
support
for
differences
between
the
Fail
and
the
Uncertain
condition
(
χ
2
(3)
=
85.72,
p
<
.001),
and
support
for
difference
between
the
Pass
and
the
Uncertain
conditions
(
χ
2
(3)
=
152.08,
p
<
.001).
In
a
Friedman
test
and
series
of
Durbin-Conover
comparisons,
which
correct
for
multiple
comparisons,
we
found
support
for
an
omnibus
effect
of
condition
(
χ
2
(2)
=
132.678,
p
<
.001;
Uncertain
–
Pass
statistic
=
12.436,
p
<
.001;
Uncertain
–
Fail
statistic
=
7.05,
p
<
.001;
Pass
–
Fail
statistic
=
5.386,
p
<
.001).
3.1.3.
“Paying
to
know”
summary:
Comparing
between
and
within
designs
Overall,
in
both
the
within-subject
and
the
between-subject
replications
we
found
effects
consistent
with
the
original
findings.
We
found
an
increase
in
the
share
of
participants
reporting
that
they
would
pay
$5
to
reserve
the
price
of
the
vacation
in
the
Uncertain
condition,
compared
to
the
two
other
conditions.
The
share
of
participants
who
decided
not
to
buy
the
vacation
was
higher
across
our
replications
in
all
conditions.
3.2.
“Choice
under
risk”
3.2.1.
Between-subject
replication
In
the
“Win”
condition,
46/148
(31%)
participants
chose
to
accept
the
gamble,
in
the
“Loss”
condition,
56/148
participants
(38%)
chose
to
accept
the
gamble,
and
in
the
“Uncertain”
condition
65/149
(44%)
participants
chose
to
accept
the
gamble.
This
pattern
was
inconsistent
with
the
original
findings,
and
in
direct
contrast
to
original
results.
We
expected
the
proportion
of
participants
who
chose
to
accept
the
bet
to
decrease
in
the
Uncertain
condition
compared
to
the
other
two
conditions,
and
yet
we
found
that
only
a
minority
of
participants
accepted
the
bet
across
all
conditions.
We
conducted
a
test
of
equality
of
proportion
with
condition
(win,
loss,
uncertain)
as
the
independent
variable
and
choice
(accept;
reject)
as
the
dependent
variable
and
indeed
failed
to
find
support
for
the
effect
(
χ
2
(2)
=
4.99,
p
=
.082,
Cramer’s
V
=
0.106,
95%
CI
[−
0.067,
0.202].)
We
followed
by
conducting
three
pairwise
tests
for
equality
of
proportions.
We
found
support
for
differences
between
the
Win
and
the
Uncertain
conditions
(
χ
2
(1)
=
4.991,
p
=
.025,
Cramer’s
V
=
0.13
[−
0.058,
0.25]),
albeit
in
a
direction
opposite
to
the
original
findings.
We
found
no
support
for
differences
between
the
Win
and
the
Loss
conditions
(
χ
2
(1)
=
1.496,
p
=
.221,
Cramer’s
V
=
0.071
[−
0.058,
0.194])
or
for
differences
between
the
Loss
and
the
Uncertain
conditions
(
χ
2
(1)
=
1.03,
p
=
.31,
Cramer’s
V
=
0.059
[−
0.058,
0.182]).
Dwass-Steel-Critchlow-Fligner
comparisons
in
a
Kruskal-Wallis
ANOVA,
which
correct
for
multiple
comparisons
(Douglas
&
Michael,
2007),
and
again
found
no
evidence
for
any
differences
between
conditions
(Loss-Win:
W
=
1.73,
p
=
.441;
Loss-Uncertain:
W
=
-1.43,
p
=
.569;
Win
-
Uncertain:
W
=
-3.15,
p
=
.066).
3.2.2.
Within-subject
replication
In
the
Win
condition
164/445
(37%)
participants
chose
to
accept
the
gamble,
in
the
Loss
condition
187/445
(42%)
participants
chose
to
accept
the
gamble,
and
in
the
Uncertain
condition
165/445
(37%)
chose
to
accept
the
gamble.
Comparing
the
certain
con
ditions
(Win,
Loss)
with
the
Uncertain
condition,
we
failed
to
find
support
for
a
disjunction
effect.
Again,
as
in
the
between-subject
design
findings,
this
pattern
was
not
consistent
with
the
original
findings.
Whereas
original
findings
pointed
to
the
majority
of
par
ticipants
accepting
the
bet
in
both
the
Win
and
the
Loss
conditions,
and
a
minority
accepting
the
bet
in
the
Uncertain
condition,
we
found
that
the
minority
accepted
the
bet
across
all
conditions.
We
ran
a
Cochran
test
for
equality
of
outcomes
in
a
repeated-measures
design
and
found
no
support
for
an
effect
(Cochran’s
Q
(2)
=
4.63,
p
=
.099).
We
conducted
three
pairwise
McNemar
test
for
repeated-measures
equality
of
proportions,
and
found
no
support
for
differences
between
the
Win
and
the
Loss
conditions
(
χ
2
(1)
=
2.989,
p
=
.084),
some
support
for
differences
between
the
Loss
and
the
Uncertain
condition
(
χ
2
(1)
=
4.481,
p
=
.034),
and
no
support
for
differences
between
the
Win
and
the
Uncertain
condition
(
χ
2
(1)
=
0.007,
p
=
.936).
Similar
results
were
obtained
using
the
Durbin-Conover
pairwise
comparisons,
which
correct
for
multiple
com
parisons
(Conover
&
Iman,
1979)
(Uncertain
–
Win
statistic
=
0.083,
p
=
.934;
Uncertain
–
Loss
statistic
=
1.823,
p
=
.069;
Win
–
Loss
statistic
=
1.906,
p
=
.057).
3.2.3.
“Choice
under
risk”
summary:
Comparing
between
and
within
designs
In
both
replications
using
different
designs
only
a
minority
of
participants
accepted
the
second
bet,
whereas
in
the
original
studies
a
majority
of
participants
chose
to
accept
the
bet
in
the
Win
and
the
Loss
conditions,
but
only
a
minority
chose
to
accept
it
in
the
Uncertain
condition.
8
Journal
of
Economic
Psychology
83
(2021)
102350
I.
Ziano
et
al.
4.
General
discussion
We
conducted
a
replication
of
disjunction
effect
(Tversky
&
Shafir,
1992),
testing
two
paradigms.
Our
results
were
consistent
with
original
findings
for
the
“paying
to
know”
paradigm,
but
inconsistent
with
a
much
weaker
effect
than
original
findings
in
the
“choice
under
risk”
paradigm.
We
ran
each
of
the
two
paradigms
using
two
designs,
between-subject
and
within-subject,
and
results
were
very
consistent
across
designs.
4.1.
Replications
results
Two
and
a
half
decades
after
the
publication
of
the
original
findings,
we
were
able
to
successfully
replicate
the
findings
regarding
“paying
to
know“
scenario,
regardless
of
research
design,
showing
support
for
the
robustness
and
reliability
of
the
disjunction
effect.
With
that
said,
we
identified
a
caveat
in
a
failed
replication
for
the
“choice
under
risk”
scenario.
Moving
forward,
those
who
aim
to
study
the
disjunction
effect
further
may
want
to
base
their
follow-ups
on
what
was
successfully
replicated,
or
to
investigate
factors
that
led
to
the
differences
between
the
two
paradigms.
What
may
explain
differences
between
the
original
article
and
the
present
replications?
An
immediate
suspect
is
the
participants
we
recruited,
and
their
demographic
features.
The
original
experiment
employed
Stanford
undergraduates,
and
we
employed
online
MTurk
samples,
which
have
been
shown
reliable
(Buhrmester,
Kwang,
&
Gosling,
2011;
Coppock,
2017;
Coppock,
Leeper,
&
Mullinix,
2018;
Zwaan
et
al.,
2018),
especially
so
in
the
domain
of
judgement
and
decision
making
replications,
with
replications
from
the
economic
psychology
and
judgment
and
decision-making
yielding
highly
similar
results
even
more
than
20
years
later
(Chandrashekar
et
al.,
2021;
Ziano,
Jie,
et
al.,
2020;
Ziano,
Wang,
et
al.,
2020;
Ziano,
Mok,
&
Feldman,
2020).
Yet,
we
consider
it
unlikely
that
the
sample
is
to
blame
for
the
failed
replication
of
the
“choice
under
risk”
problem,
when
at
the
same
time
demonstrating
a
successful
replication
of
the
“paying
to
know”
problem.
Second,
some
may
argue
that
the
passing
of
time
may
have
affected
replication
results.
The
original
studies
were
conducted
on
or
before
1992.
It
is
possible
that
the
meaning
of
the
“choice
under
risk”
problem
factors
has
changed
during
that
time.
Again,
this
account
does
not
explain
why
the
“paying
to
know”
problem
was
successfully
replicated.
It
is
possible
that
the
passing
of
time
has
affected
the
two
problems
differently,
yet
given
the
broad
context-less
descriptions
of
the
gambles
in
that
scenario,
we
find
this
argument
unconvincing.
Third,
it
is
possible
that
the
“choice
under
risk“
problem
was
a
false-positive
finding
(given
the
smaller
effect
size
we
found
compared
to
the
original
paper),
whereas
the
“paying
to
know”
problem
was
a
true
positive
finding.
We
provide
two
arguments
in
support
of
this
explanation.
First,
previous
research
failed
to
find
a
disjunction
effect
in
two-steps
gambles,
using
either
a
between-
subject
design
or
a
within-subject
design
(Kühberger
et
al.,
2001;
Lambdin
&
Burdsal,
2007),
or
found
mixed
results
in
conceptual
replications
(Li
et
al.,
2012).
Second,
Tversky
and
Shafir
(1992)
report
two
successful
replications
of
the
“choice
under
risk”
problem
(p.
307),
yet
also
report
that
increasing
the
stakes
in
the
initial
gamble
(but
leaving
the
second
gamble
unchanged)
led
to
no
disjunction
effect,
presumably
because
additional
gambles
did
not
provide
strong
enough
reasons
since
the
stakes
were
lower
in
comparison
to
first
one.
Possibly,
this
account
of
Tversky
and
Shafir
(1992)’s
failed
two-step
gambles
rerun
with
modified
amounts
may
be
an
indication
of
their
own
first
failed
replication
of
the
disjunction
effect.
An
additional
possibility,
suggested
by
a
recent
paper
(Broekaert,
Busemeyer,
&
Pothos,
2020),
is
that
risk-aversion
may
moderate
the
extent
to
which
people
exhibit
the
disjunction
effect,
such
that
less
risk-averse
people
do
not
exhibit
the
effect,
and
that
a
quantum-
dynamic
model
can
reconcile
opposing
results
from
the
original
paper
and
from
unsuccessful
replication.
This
investigation
falls
outside
the
purview
of
this
paper,
but
it
seems
a
potentially
fruitful
avenue
for
future
research.
Overall,
these
results
pose
a
challenge
for
research
based
on
the
disjunction
effect.
With
inconsistent
evidence
for
the
two
problems,
which
of
the
problems
is
to
be
associated
with
the
disjunction
effect?
Though
we
now
have
fairly
clear
criteria
for
summarizing
a
replication
for
a
single
hypothesis
with
a
single
association
between
two
variables,
we
still
lack
the
criteria
to
evaluate
complex
replications
with
mixed
findings,
and
then
relate
that
back
underlying
theory.
Further
research
is
needed
to
disentangle
when
and
why
supposedly
irrelevant
uncertain
outcomes
cause
preference
reversals.
There
is
also
much
need
for
to
establishing
clearer
criteria
in
evaluating
complex
replication
efforts,
of
multiple
studies,
multiple
hypotheses,
and
multiple
independent
and
dependent
variables,
all
representing
a
single
theory
or
article.
4.2.
Comparing
research
designs
We
found
consistent
results
across
within-subject
and
between-subject
designs.
We
did
not
find
larger
differences
in
the
within-
subjects
condition
compared
to
the
between-subjects
condition
in
the
Paying
to
Know
scenario.
While
there
was
pattern
of
choices
more
pronounced
and
more
similar
to
the
original
results
in
the
Win
and
Loss
condition
for
the
within-subjects
condition,
there
was
a
more
pronounced
pattern
for
the
Uncertain
condition
in
the
between-subjects
condition.
Comparisons
of
evaluation
modes
is
highly
relevant
for
both
theoretical
and
practical
purposes,
as
it
highlights
the
fickle
nature
of
preferences
and
choices
that
people
make
in
different
situations
(Sunstein,
2018).
This
is
an
important
contribution,
as
there
are
conflicting
findings
in
judgment
and
decision-
making,
some
showing
differences
between
joint
evaluations
(within-subject)
and
separate
evaluations
(between-subject)
(e.g.,
Hsee,
1996;
Hsee,
Loewenstein,
Blount,
&
Bazerman,
1999;
Paharia,
Kassam,
Greene,
&
Bazerman,
2009)
whereas
others
show
effects
robust
to
evaluation
mode
change
(Lambdin
&
Shaffer,
2009;
Ziano,
Lembregts,
&
Pandelaere,
2019;
Ziano
&
Pandelaere,
2020).
We
identified
a
methods
gap
regarding
comparisons
of
within-
and
between-
subject
experiments.
Although
there
are
methods
for
such
comparisons
for
frequentist
linear
dependent
variables
(e.g.,
Sezer,
Zhang,
Gino,
&
Bazerman,
2016),
methods
are
still
lacking
9
Journal
of
Economic
Psychology
83
(2021)
102350
I.
Ziano
et
al.
regarding
similar
analyses
for
binomial
or
multinomial
dependent
variables.
This
poses
a
challenge
for
comparisons
of
joint
and
separate
evaluations
from
an
inferential
point
of
view
(beyond
descriptives
in
Tversky
&
Shafir,
1992),
and
it
is
a
promising
issue
to
tackle
in
future
research.
Author
bios
Ignazio
Ziano
is
an
assistant
professor
with
the
Grenoble
Ecole
de
Management
marketing
department,
F-38000
Grenoble
(France).
His
research
focuses
on
judgment
and
decision-making
and
consumer
behavior.
Gilad
Feldman
is
an
assistant
professor
with
the
University
of
Hong
Kong
psychology
department.
His
research
focuses
on
judgment
and
decision-making.
Man
Fai
Kong,
Hong
Joo
Kim,
Chit
Yu
Liu,
Sze
Chai
Wong
were
students
at
the
University
of
Hong
Kong
during
academic
year
2018.
Bo
Ley
Cheng
was
a
teaching
assistant
at
the
University
of
Hong
Kong
psychology
department
during
academic
year
2018.
Authorship
declaration
Gilad
led
the
reported
replication
effort
in
advanced
social
psychology
and
judgment
and
decision-making
courses
(PSYC2071/
3052).
Gilad
supervised
each
step
in
the
project,
conducted
the
pre-registration,
and
ran
data
collection.
Ignazio
reanalyzed
and
validated
all
findings,
added
additional
analyses
and
reports,
and
integrated
all
reports
into
a
manuscript.
Ignazio
and
Gilad
jointly
finalized
the
manuscript
for
submission.
Man
Fai
Kong,
Hong
Joo
Kim,
Chit
Yu
Liu,
Sze
Chai
Wong
designed
the
replication,
wrote
the
pre-registrations,
analyzed
the
findings
and
wrote
an
initial
report
of
the
findings
as
part
of
their
course.
Man
Fai
Kong
designed
and
initiated
the
between-within
design
contrast
extension.
Bo
Ley
Cheng
guided
and
assisted
the
replication
effort.
Financial
disclosure/funding
This
research
was
supported
by
the
European
Association
for
Social
Psychology
seedcorn
grant.
Declaration
of
Competing
Interest
The
authors
declare
that
they
have
no
known
competing
financial
interests
or
personal
relationships
that
could
have
appeared
to
influence
the
work
reported
in
this
paper.
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