289
PROSPECT
THEORY
The decision weight associated with an event will depend primarily on the
perceived likelihood of that event, which could be subject to major biases
[45].
In
addition, decision weights may be affected by other considerations, such as
ambiguity or vagueness. Indeed, the work of Ellsberg
[lo]
and Fellner
[12]
implies
that vagueness reduces decision weights. Consequently, subcertainty should be
more pronounced for vague than for clear probabilities.
The present analysis of preference between risky options has developed two
themes. The first theme concerns editing operations that determine how prospects
are perceived. The second theme involves the judgmental principles that govern
the evaluation of gains and losses and the weighting of uncertain outcomes.
Although both themes should be developed further, they appear to provide a
useful framework for the descriptive analysis of choice under risk.
The University of British Columbia
and
Stanford University
Manuscript received November,
1977;
final revision received March,
1978.
APPENDIX'
In this appendix we sketch an axiomatic analysis of prospect theory. Since a complete self-contained
treatment is long and tedious, we merely outline the essential steps and exhibit the key ordinal
properties needed to establish the bilinear representation of equation (1). Similar methods could be
extended to axiomatize equation
(2).
Consider the set of all regular prospects of the form (x, p; y, q) with p
+
q
<
1. The extension to
regular prospects with p +q
=
1
is straightforward. Let
2
denote the relation of preference between
prospects that is assumed to be connected, symmetric and transitive, and let
=
denote the associated
relation of indifference. Naturally, (x, p; y,
q)
=
(y, q; x, p). We also assume, as is implicit in our
notation, that (x, p; 0, q)
=
(x, p; 0, r), and (x, p; y, 0)
=
(x, p;
z,
0). That is, the null outcome and the
impossible event have the property of a multiplicative zero.
Note that the desired representation (equation
(1))
is additive in the probability-outcome pairs.
Hence, the theory of additive conjoint measurement can be applied to obtain a scale V which
preserves the preference order, and interval scales f and g in two arguments such that
V(x, p; y, q)=f(x, p)+g(y, q).
The key axioms used to derive this representation are:
Independence: (x, p; y, q)2 (x, p; y'q') iff (x', p'; y, q)> (x', p'; y', q').
Cancellation: If (x, p; y'q')
e
(x', p'; y, q) and (x', p'; y", q") ~(x", p"; y', q'), then (x, p; yo, q")
?
(x", PI';
Y,
q).
Solvabil~ty:If (x, p; y, q)?
(z,
r)Z (x, p; y' q') for some outcome
z
and probability r, then there exist
y",
q" such that
(x.
P; y"qs)
=
(z,
r).
It has been shown that these conditions are sufficient to construct the desired additive represen-
tation, provided the preference order is Archimedean
[8,25].
Furthermore, since (x, p; y, q)=
(Y, 4; x, PI, f(x, p)+g(y, q) =f(y, q)+g(x, PI, and letting q
=
0 yields
f
=
g.
Next, consider the set of all prospects of the form (x, p) with a single non-zero outcome. In this case,
the bilinear model reduces to V(x, p)
=
v(p)v(x). This is the multiplicative model, investigated in
[35j
and
[25].
To construct the multiplicative representation we assume that the ordering of the prob-
ability-outcome pairs satisfies independence, cancellation, solvability, and the Archimedean axiom. In
addition, we assume sign dependence
[25]
to ensure the proper multiplication of signs. It should be
noted that the solvability axiom used in
[35]
and
[25]
must be weakened because the probability factor
permits only bounded solvability.
'
We are indebted to David
H.
Krantz for his help in the formulation of this section.