100% satisfaction guarantee Immediately available after payment Both online and in PDF No strings attached 4.2 TrustPilot
logo-home
Lecture notes

Lecture notes on Risk and Expected Utility

Rating
-
Sold
-
Pages
7
Uploaded on
29-08-2021
Written in
2019/2020

Lecture notes on Risk and Expected Utility, with notes on supplementary readings included










Whoops! We can’t load your doc right now. Try again or contact support.

Document information

Uploaded on
August 29, 2021
Number of pages
7
Written in
2019/2020
Type
Lecture notes
Professor(s)
Godfrey keller
Contains
All classes

Content preview

Risk & Expected Utility

Modelling Framework
States
 There are S states of the world: s=1,2, … , S
 Before a state is realised, we agree that state s occurs with probability π s
Outcomes
 Possible outcomes measured in income, so y s is money DM has in state s
 The set of outcomes in exhaustive
 The outcomes are mutually exclusive
 States of the world are out of the control of any decision-taker
 All decision takers have in the minds the same states of the world, and agree which state is
realised, they are also able to assign probabilities to each state
Choices
 DM chooses among lotteries / prospects
 Simple lottery is a list of pairs, one per state, each comprising a probability and an outcome:
L=( π 1 , y 1 ; π 2 , y 2 ; … ;π s , y s )
The outcomes of a compound lottery are lotteries themselves: L=( p 1 , L1 ; … ; p K , L K ) , this
can be written as p1 ∘ L1+⋯+ p K ∘ L K
r
 For any compound lottery there is a simple reduced lottery, Lr with π s =p 1 π 1 ,s +⋯ p K π K , s
for s=1,2, … , S – as in it factors the outcomes of the second lotteries too 1
 Consequentialism: for any risky alternative, the reduced lottery over final outcomes is the
only thing that matters to the DM
Expected Utility (von Neumann-Morgenstern)
 Rational agents have a complete and transitive preference ordering over lotteries that is:
o Complete: L1 ≽ L2 or L2 ≽ L1
o Transitive: if L1 ≽ L2 and L2 ≽ L3 then L1 ≽ L3 ie agents are able to order prospects
 Continuity: if Lb ≽ L≽ Lw then there is some probability, p, s.t.: L ∼ p ∘ L b+ ( 1− p ) Lw
o Guarantees existence of a utility function representing preferences of a rational agent
over lotteries
o Implication is that if Lb is preferred to L, then a lottery close to Lb will still be
preferred to L ⇒ 3 lotteries: £10 for sure, nothing happens, you die; must be some
α ∈ [ 0,1 ] such that you are indifferent between getting nothing for sure, and getting
£10 with probability α and being killed with probability 1−α (Levin 2004)
 Independence: for any L1 , L2 , L , and any p
o L1 ≽ L2 ⇔ p ∘ L1 + ( 1− p ) ∘ L ≽ p ∘ L2+ (1− p ) ∘ L
o In that we prefer higher expected outcomes: ie if I prefer L1 to L2, I also prefer the
possibility of L1 to the possibility of L2 given the other possibility in both cases is the
same ( L)
o If I am comparing p ∘ L1 + ( 1− p ) ∘ L to p ∘ L2 + ( 1− p ) ∘ L, I should focus on the
distinction between L1 and L2 and hold the same preference independently of p and
L – also known as substitution axiom: idea that if L substituted for part of L1 and part
of L2, this shouldn’t change my ranking (Levin 2004)
o Similarly, preference increases with probability – decision-taker prefers the standard
prospect which gives the better chance of achieving the good state of the world ie
could assert p1 L ≻ p2 L ⇔ p1 > p2
 Consumers rationally evaluate lotteries and compound lotteries, so a compound lottery is
worth the same as a simple lottery with the same expected value

1
There is an example in the PDF notes

,  These axioms provide a procedure for predicting the choices among prospects of a decision-
taker to whom they apply
Expected Utility Theorem
 If preference ordering satisfies above axioms, there is a function u ( ⋅ ) that assigns a value
u ( y s ) to each outcome, such that
o L' ≽ L' ' ⇔ π '1 u ( y 1 )+ ⋯+π 'S u ( y S ) ≥ π ''1 u ( y1 ) +⋯ π 'S' u ( y s )
 Define expected utility function U ( ⋅) by U ( L )=π 1 u ( y1 ) +⋯ π S u ( y S )
 Rational decision makers act as if they were choosing L to maximise U ( L )
 Cardinal vs. Ordinal (EU is cardinal)
 Uniqueness: if v ( y )=a+bu ( y ) for any a and b> 0, then V ( L )=a+ bU ( L ) is also an EU
representation of preferences: since b> 0, if U ( p' ) ≥U ( p) then V ( p' ) ≥ V ( p)
Properties of the Expected Utility Function
 Lottery L=( π , y 1 ;1−π , y 2 ) ⇒ y=π y 1+ ( 1−π ) y 2 ⇒u=πu ( y 1) + (1−π ) u ( y 2 )
 Certainty equivalent: u ( y c )=u ie utility of getting this money for sure is equal to expected
utility from partaking in the lottery
 Expected utility function is linear in probabilities
 Risk premium: difference between expected value and certainty equivalent: r = y− y c
 Risk Averse: u ( ⋅ ) is concave, y c < y , r> 0
 Risk Neutral: u ( ⋅ ) is linear, y c = y , r=0
 Risk Loving: u ( ⋅ ) is convex, y c > y , r< 0




 Utility function is unique up to a positive linear transformation (cf ordinal utility function’s
property of being unique up to positive monotonic transformation) – restriction to linear
reflects signficance of the sign of u' ' ( y ) ⇒ expected utility function is cardinal
Risk Aversion
 A decision maker is strictly risk averse if for any non-degenerate lottery the decision maker
strictly prefers the expected value of the lottery to the lottery itself: Jensen’s inequality
 A decision maker is risk averse iff u is concave
Measures of Risk Aversion
 Certainty equivalent can measure risk aversion through risk premium
 Degree of risk aversion related to curvature of utility function – one possible measure of
curvature at y is u' ' ( y )
 This is not invariant to possible linear transformations v=a+ bu since v' =b u' , v' ' =bu ' '
'' '' ''
u ( y) bu ( y) v ( y)
 Simplest modification is to use ' since same as ' ie '
u ( y) bu ( y ) v ( y)
o Change sign to make it positive for functions that are increasing and concave
Arrow-Pratt Coefficient of Risk Aversion
''
−u ( y )
 Absolute risk aversion: A ( y )=
u' ( y )
o Can be shown that for lottery with small gambles, an approximation to risk premium
1
is given r ( y ) ≃ A ( y ) σ 2z , where σ 2z is the variance of outcomes
2
£7.49
Get access to the full document:

100% satisfaction guarantee
Immediately available after payment
Both online and in PDF
No strings attached

Get to know the seller
Seller avatar
ollieasjones

Get to know the seller

Seller avatar
ollieasjones University of Oxford
View profile
Follow You need to be logged in order to follow users or courses
Sold
0
Member since
4 year
Number of followers
0
Documents
10
Last sold
-

0.0

0 reviews

5
0
4
0
3
0
2
0
1
0

Recently viewed by you

Why students choose Stuvia

Created by fellow students, verified by reviews

Quality you can trust: written by students who passed their exams and reviewed by others who've used these revision notes.

Didn't get what you expected? Choose another document

No problem! You can straightaway pick a different document that better suits what you're after.

Pay as you like, start learning straight away

No subscription, no commitments. Pay the way you're used to via credit card and download your PDF document instantly.

Student with book image

“Bought, downloaded, and smashed it. It really can be that simple.”

Alisha Student

Frequently asked questions