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Subjective Measures of Risk Eduardo Zambrano Department of Economics Cal Poly May 20, 2008
Example ,[object Object],[object Object],[object Object],[object Object]
The purpose of this talk ,[object Object],[object Object],[object Object],[object Object]
New solutions ,[object Object],[object Object],[object Object],[object Object],[object Object]
My contribution ,[object Object],[object Object],[object Object],[object Object]
Example ,[object Object],[object Object],[object Object],[object Object]
Traditional approach ,[object Object],[object Object],[object Object],[object Object],[object Object],[object Object]
[object Object],[object Object],All the measures of dispersion would rate  h  as risky as  g  in spite of the fact that  h  is sure to yield more than  g . ,[object Object],[object Object],[object Object],[object Object],1/2 1/2 $120 $-100 g 1   1/2 1/2 $170 $-50 h 1
“Sharpe ratios” ,[object Object],[object Object],1/2 1/2 $120 $-100 1/2 1/2 $170 $-50 μ =60 σ =110 σ / μ =1.83 σ 2 / μ =201.67 μ =10 σ =110 σ / μ =11 σ 2 / μ =1210 g 1   h 1
However… ,[object Object],[object Object],.98 .02 $100 $-100 g 2   μ =96 σ =28 σ / μ = 0.29 σ 2 / μ = 8.2 .49 .02 $200 $-100 h 2   $100 .49 μ =145 σ =60.6 σ / μ = 0.42 σ 2 / μ = 25.3 σ / μ  and  σ 2 / μ  rank  h  as more risky than  g  even though  h  never yields less than  g and yields more with probability almost half.
μ g  =  μ h ,[object Object],[object Object],μ =120 μ =120 $100 $-300 h 3   $0 $300 $500 $256 $-423 g 3   $256 $256 $256
σ g  =  σ h ,[object Object],[object Object],$100 $-300 h 3   μ =120 σ =303 μ =120 σ =303 $0 $300 $500 $256 $-423 g 3   $256 $256 $256
σ ,  σ 2 , E |g-Eg|, Q 3 -Q 1 ,  σ / μ ,  σ 2  / μ ,[object Object],[object Object]
Stochastic Dominance (I) ,[object Object],[object Object],[object Object],1 x H(x) G(x)
Stochastic Dominance (II) ,[object Object],1 x H(x) G(x)
[object Object],If  h  stochastically dominates  g  then it will be preferred by  any * risk averse expected utility decision maker
Problem (I) ,[object Object],[object Object]
Problem (II) ,[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object]
What to do?
Preliminaries ,[object Object],[object Object],[object Object]
[object Object],[object Object],[object Object],[object Object],[object Object]
Aumann, Serrano ,[object Object],[object Object],[object Object],Call R( g ) the riskiness of  g .
Properties of R AS ( g ) ,[object Object],[object Object],[object Object]
Example ( μ g   ≠  μ h ) ,[object Object],[object Object],1/2 1/2 $120 $-100 g 1   σ =110 R AS ( g ) = 601.66 1/2 1/2 $170 $-50 h 1   σ =110 R AS ( h ) = 78.95
Example ( μ g  =  μ h ) ,[object Object],[object Object],$100 $-300 h 3   σ =303 R AS ( h ) = 298.61 $0 $300 $500 Ok, so  g  is more risky than  h , but what do those numbers mean? σ =303 R AS ( g ) = 396.94 $256 $-423 g 3   $256 $256 $256
Another approach ,[object Object],[object Object],[object Object],[object Object],1/2 1/2 $120 $-100 g   E g =10 R AS ( g ) = 601.66
Foster, Hart ,[object Object],[object Object],Call R( g ) the riskiness of  g .
Example ,[object Object],[object Object],[object Object],[object Object],1/2 1/2 $120 $-100 g   E g =10 R AS ( g ) = 601.66 R FH ( g )=600 ,[object Object]
Properties of R FH ( g ) ,[object Object],[object Object],[object Object],[object Object]
Question ,[object Object]
I pondered about this as I walked the shores of the State Park near my house… me My house
… I started thinking about  subjective  measures of riskiness
Objective vs. Subjective ,[object Object],[object Object],[object Object]
My approach ,[object Object],[object Object],[object Object],Example (CARA) P[ g <CE-2R] < e -2 ≈14% ,[object Object],[object Object]
[object Object],[object Object],Call R i (w( g )) the riskiness of  g  for i. The “Riwi” of  g
Properties of “Riwi”  (I) ,[object Object],[object Object],[object Object]
Properties of Riwi  (II) ,[object Object],[object Object],[object Object],R i (w( g )): how high the risk tolerance of an decision maker  must be for that decision maker to want to hold  g .
Example ,[object Object],1/2 1/2 $120 $-100 g   E g =10 R AS ( g ) = 601.66 R FH ( g )=600 R i (w( g ))=600.37 ,[object Object]
Notice all these measures of risk are similar  for this investment ,[object Object],[object Object],[object Object],R AS ( g ) = 601.66 R FH ( g )=600 R i (w( g ))=600.37 R 0 ( g ) =610 {  third order terms in a Taylor  series expansion of Eu i (w( g )+ g )  } 1/2 1/2 $120 $-100 g   R 0 ( g )
Properties of Riwi  (III) ,[object Object],[object Object],[object Object],Max Eu(w+x( g / σ -p)) x
[object Object],[object Object],[object Object],dx/dp | x=0  = -R i (w)
[object Object],[object Object]
w 0 w 0 +g g  is too risky for i
w 1 w 1  +g g  is not too risky for i
w(g) w(g)   +g g  is “just right” for i
An operational interpretation of R i (w( g ))  ,[object Object],The “reservation slope” of the demand for  g
Decision making, again ,[object Object],[object Object],[object Object],Desired Marginal exposure Required marginal exposure
An investment 27.83 RiWi(3) 44.82 R FH 25.50 R AS 20.42 Stdev 8.47 E Rm -Rf
An investment A CRRA(3) decision maker with wealth $100,000 has R i (w)= 33,333   27.83 RiWi(3) 44.82 R FH 25.50 R AS 20.42 Stdev 8.47 E Rm -Rf
Scaling up A CRRA(3) decision maker with wealth $100,000 has R i (w)= 33,333   27833 27.83 RiWi(3) 44820 44.82 R FH 25500 25.50 R AS 20424 20.42 Stdev 8471 8.47 E 1000*( Rm –Rf) Rm -Rf
Two investments 24.21 27.83 RiWi(3) 29.71 44.82 R FH 23.82 25.50 R AS 14.47 20.42 Stdev 3.82 8.47 E SMB Rm -Rf
Three investments 25.39 24.21 27.83 RiWi(3) 39.56 29.71 44.82 R FH 23.16 23.82 25.50 R AS 14.02 14.47 20.42 Stdev 4.61 3.82 8.47 E HML SMB Rm -Rf
My contribution ,[object Object],[object Object],[object Object],[object Object]
Thank you for coming!
 
Take your pick 25.39 24.21 27.83 RiWi(3) 39.56 29.71 44.82 R FH 23.16 23.82 25.50 R AS 23.64 29.34 28.86 R 0 11.16 10.79 16.22 E|g-Eg| 18.97 17.04 28.27 Q3-Q1 15.32 14.01 24.99 VaR(5%) -39.40 - 28.68 -44.80 Min 42.66 54.86 49.24 Var/E 3.04 3.79 2.41 Stdev/E 196.69 209.42 417.15 Var 14.02 14.47 20.42 Stdev 4.61 3.82 8.47 E HML SMB Rm -Rf

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Subjective Measures of Risk

  • 1. Subjective Measures of Risk Eduardo Zambrano Department of Economics Cal Poly May 20, 2008
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  • 31. I pondered about this as I walked the shores of the State Park near my house… me My house
  • 32. … I started thinking about subjective measures of riskiness
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  • 43. w 0 w 0 +g g is too risky for i
  • 44. w 1 w 1 +g g is not too risky for i
  • 45. w(g) w(g) +g g is “just right” for i
  • 46.
  • 47.
  • 48. An investment 27.83 RiWi(3) 44.82 R FH 25.50 R AS 20.42 Stdev 8.47 E Rm -Rf
  • 49. An investment A CRRA(3) decision maker with wealth $100,000 has R i (w)= 33,333 27.83 RiWi(3) 44.82 R FH 25.50 R AS 20.42 Stdev 8.47 E Rm -Rf
  • 50. Scaling up A CRRA(3) decision maker with wealth $100,000 has R i (w)= 33,333 27833 27.83 RiWi(3) 44820 44.82 R FH 25500 25.50 R AS 20424 20.42 Stdev 8471 8.47 E 1000*( Rm –Rf) Rm -Rf
  • 51. Two investments 24.21 27.83 RiWi(3) 29.71 44.82 R FH 23.82 25.50 R AS 14.47 20.42 Stdev 3.82 8.47 E SMB Rm -Rf
  • 52. Three investments 25.39 24.21 27.83 RiWi(3) 39.56 29.71 44.82 R FH 23.16 23.82 25.50 R AS 14.02 14.47 20.42 Stdev 4.61 3.82 8.47 E HML SMB Rm -Rf
  • 53.
  • 54. Thank you for coming!
  • 55.  
  • 56. Take your pick 25.39 24.21 27.83 RiWi(3) 39.56 29.71 44.82 R FH 23.16 23.82 25.50 R AS 23.64 29.34 28.86 R 0 11.16 10.79 16.22 E|g-Eg| 18.97 17.04 28.27 Q3-Q1 15.32 14.01 24.99 VaR(5%) -39.40 - 28.68 -44.80 Min 42.66 54.86 49.24 Var/E 3.04 3.79 2.41 Stdev/E 196.69 209.42 417.15 Var 14.02 14.47 20.42 Stdev 4.61 3.82 8.47 E HML SMB Rm -Rf