For part 2, note that *=k 1 s 1 +k 2 s 2 , where
(A8)
(A9)
This implies that the distribution of * conditional on θ+is nor-
mal with mean
(A10)
and variance
(A11)
The complement of the standardized cumulative normal distribution
function of a normal random variable with nonzero mean and vari-
ance is increasing in its mean. Since E[*θ+] is proportional to θ+,
the probability conditional on P 1 that * exceeds a given threshold
value (indicating occurrence of the positive event) is increasing in θ+.
The reverse holds for a negative event, proving part (2).
Appendix B: Discrete Model of Outcome-dependent
Overconfidence
At time 0, θhas a value of +1 or −1 and an expected value of zero. At time
1, the player receives a signal s 1 , and, at time 2, a signal s 2. s 1 may be either
Hor Lwhile s 2 may be either Uor D. After each signal, the player updates
his prior expected value of θ.
Pr(s 1 =Hθ=+1)=p=Pr(s 1 =Lθ=−1), (A12)
Pr(s 2 =Uθ=+1)=q=Pr(s 2 =Dθ=−1). (A13)
The probabilities that θ=+1, given s 1 and s 2 are
(A14)
Pr
Pr Pr
Pr
()
()()
()
/
/( )/
.
θ
θθ
=+ = =
==+ =+
=
=
+−
=
1
11
2
21 2
1
1
1
sH
sH
sH
p
pp
p
[( ) ]
().
kk 122 k 1 22
22
++
+
+
σσ
σσ
θ θ
θ
()
()
kk 122 k 1 2
22
++
+
+
σσ
σσ
θ θ
θ
k
Cp p
2
22
=− (^22) ++ 2 22
σσ
σσ σ σσ
θ
θθ
()
.
k
p
Cp p
1
22 2
= 22 2 22
- ++
σσ σ
σσ σ σσ
θ
θθ
()
()
,
492 DANIEL, HIRSHLEIFER, SUBRAHMANYAM