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Prof. Dr. Thomas
Gries




                    Beyond Mean-Variance in Financial
                   decisions under Risk und Uncertainty
                               Fakultät Wirtschaftswissenschaften

                         Lehrstuhl für Wachstums- und Konjunkturtheorie

                                     Prof. Dr. Thomas Gries

                                        Sherif Elkoumy




       16.02.13                     1
Prof. Dr. Thomas
Gries




                   • Introduction
                   • Expected Utility Framework
                   • Mean-Variance Framework
                   • Alternatives Risk Measures
                   • Black-Litterman Framework
                   • Stochastic Dominance Rules

    16.02.13                                      2
Prof. Dr. Thomas
Gries




                    The Thesis reviews different
                     frameworks concerning financial
                     decisions under risk and uncertainty.

                    It reviews as well alternative risk
                     measures to the traditional risk
                     measure, Standard deviation.

                    the thesis documents advantages and
                     disadvantages of those models and
                     frameworks.
    16.02.13                                                 3
Prof. Dr. Thomas
Gries




                    EU designed by VNM in 1941 and affected on
                     decisions theory and portfolio theory.
                    VNM assume a set of appealing axioms on
                     preferences.
                    EU established two major line of research

                    Selecting criteria according this formula;

                                           n
                                    EU = ∑ pi u(πi )
                                          i =1




    16.02.13                                                      4
Prof. Dr. Thomas
Gries




                   Criticism:
                   observing utility is difficult,

                   variety of patterns in behavior ,

                   Independence axiom is violated

                   Risk measure is a qualitative measure




    16.02.13                                                5
Prof. Dr. Thomas
Gries




                    The cornerstone of modern finance theory .
                    The simplicity form in construction and
                     selection of portfolios.
                    The interpretation of the mean as the
                     anticipated return and the variance as the risk.
                    Tradeoff between risk and return.
                    A quantative risk measure



    16.02.13                                                      6
Prof. Dr. Thomas
Gries




                    The Model Assumptions:
                    Risk Aversion, Two Parameter, One-Period,
                     Homogenous expectations.
                    In case of two Assets, A and B




    16.02.13                                                     7
Prof. Dr. Thomas
Gries




                    The Model: In case of three Assets, A , B, C




    16.02.13                                                        8
Prof. Dr. Thomas
Gries




    16.02.13       9
Prof. Dr. Thomas
Gries




                   Limitation of the model


                   Error maximization

                   Unstable optimal solutions

                   Ignorance of higher moments of distributions

                   Standard deviation inefficiency


    16.02.13                                                   10
Prof. Dr. Thomas
Gries




                    Semi-Variance

                    Lower Partial Moments

                    Value at Risk

                    Expected Shortfall




    16.02.13                                 11
Prof. Dr. Thomas
Gries




                    Returns below the mean
                    violates the subadditivity
                    Theoretically, it outperforms Variance
                    Empirically, M-SV outperforms M-V
                     (Non-Normal Distribution)




    16.02.13                                             12
Prof. Dr. Thomas
Gries




                    General type of risk measure
                    considers negative deviations from
                      target outcomes
                    represents different types of utility
                      functions and their characteristics




    16.02.13                                                 13
Prof. Dr. Thomas
Gries




                    How bad can things get?
                    the worst loss over a time horizon with
                     a given level of target probability
                    Time horizon from 1 day to 2 weeks
                    Probabilities from 1% to 5%
                    Efficient under symmetric distribution
                    violates the subadditivity.

    16.02.13                                               14
Prof. Dr. Thomas
Gries




    16.02.13       15
Prof. Dr. Thomas
Gries




                    If things do get bad, how much can one
                     expect to lose?.
                    satisfies (Monotonicity, Subadditivity,
                     Positive homogeneity, Translational
                     invariance.
                    measures the expected amount beyond
                     the VaR

    16.02.13                                               16
Prof. Dr. Thomas
Gries




    16.02.13       17
Prof. Dr. Thomas
Gries



                      determine optimal asset allocation in a
                       portfolio.

                      overcomes the problems of estimation error
                       maximization in M-V approach.

                      incorporates an investor’s own views in
                       determining asset allocations.




    16.02.13                                                     18
Prof. Dr. Thomas
Gries




                   Basic Idea and steps:

                   Find implied returns
                   Formulate investor views
                   Determine what the expected returns are
                   Find the asset allocation for the optimal
                   portfolio



    16.02.13                                                    19
Prof. Dr. Thomas
Gries




                   Implied Returns + Investor Views =
                   Expected Returns

                                    Π= δ Σ wmkt

                    Π = The implied excess equilibrium return (N*1
                     vector)
                    δ = (E(r) – rf)/σ2 , risk aversion coefficient
                    Σ = A covariance matrix of the assets (N*N
                     matrix)
                    wmkt = Market capitalization weights of the
                     Assets(N*1)

    16.02.13                                                   20
Prof. Dr. Thomas
Gries




                   Implied Returns + Investor Views =
                   Expected Returns
                    P = A matrix with investors views; each row a
                     specific view of the market and each entry of
                     the row represents the portfolio weights of
                     each assets (K*N matrix)
                    ε= the error term (uncertanity on views)
                    Ω = A diagonal covariance matrix with error
                     terms on each view (K*K matrix)
                    Q = The view vector described in matrix P
                     (K*1 vector)

    16.02.13                                                    21
Prof. Dr. Thomas
Gries




                   Breaking down the views

                   Asset A has an absolute return of 5%
                   Asset B will outperform Asset C by 1%


                               Q1   ε 1        ω 1   0 0 
                      Q + ε = .  + . 
                                           Ω = 0
                                                         . 0 
                              Q K   ε K 
                                               0
                                                         0 ωK 
                                                               


    16.02.13                                                       22
Prof. Dr. Thomas
Gries




                   The new combined expected returns views
                                                     −1
                      E [R] =  ( τ Σ ) + P ′Ω P   ( τ Σ ) −1 Π + P ′Ω − 1V 
                                      −1       −1
                                                                           

                    Assuming there are N-assets in the portfolio,
                     this formula computes E(R), the expected new
                     return.

                    τ = A scalar number indicating the
                     uncertainty of the CAPM distribution (0.025-
                     0.05

    16.02.13                                                                  23
Prof. Dr. Thomas
Gries




                   The new combined expected returns views




    16.02.13                                           24
Prof. Dr. Thomas
Gries




                   Advantages
                   Investor’s can insert their view.
                   Control over the confidence level of views.
                   More intuitive interpretation, less extreme shifts
                   in portfolio weights.
                   The reverse optimization techniques do not
                   generate implausible solutions.




    16.02.13                                                        25
Prof. Dr. Thomas
Gries




                   Disadvantages

                   Black-Litterman model does not give the best
                   possible portfolio, merely the best portfolio given
                   the views stated

                   As with any model, sensitive to assumptions
                   Model assumes that views are independent of each
                   other

                   The normal distribution


    16.02.13                                                        26
Prof. Dr. Thomas
Gries




                    An alternative approach to The M-V to the
                     ordering of uncertain prospects.
                    Decision rule for dividing alternatives into two
                     mutually exclusive groups: efficient and
                     inefficient.
                    Consistent with the VNM axioms on
                     preferences.



    16.02.13                                                      27
Prof. Dr. Thomas
Gries




                    The most general efficiency criteria relies only
                     on the assumption that utility is nondecreasing
                     in income, or the decision maker prefers more
                     of at least one good to less.
                    FSD: Given two CDFs F and G, an asset F will
                     dominate G by FSD independent of concavity if
                     F(x) ≤ G(x) for all return x with at least one
                     strict inequality.

    16.02.13                                                          28
Prof. Dr. Thomas
Gries




                      Intuitively, this rule states that F will dominate G
                      if its CDF always lies to the left of G’s:



                   F ( x)
                                 G ( x)


                                                   F ( x)




    16.02.13                                                            29
Prof. Dr. Thomas
Gries




                    SSD implies that the investor is risk averse
                    utility function is concave, implying that the
                     second derivative of the utility function is
                     negative.
                    SSD Rule A necessary and sufficient condition
                     for an alternative F to be preferred to a second
                     alternative G by all risk averse decision makers
                     is that

    16.02.13                                                        30
(
                                           ),



Prof. Dr. Thomas
Gries




                    Mathematically ;
                                                U ′ ≥ 0 and U ′′ ≤ 0
                   x              x              x

                   ∫ F ( z) dz ≤ ∫ G ( z) dz ∫[ G ( z) −F ( z)] dz ≥0
                   −∞            −∞             −∞




                    Graphically; Alternative F dominates
                        alternative G for all risk averse individuals if
                        the cumulative area under F exceeds the area
                        under the cumulative distribution function G
                        for all values x
    16.02.13                                                           31
(
                                     ),



Prof. Dr. Thomas
Gries




                    Graphically ;




    16.02.13                              32
(
                                            ),



Prof. Dr. Thomas
Gries




                    TSD refers to a preferences for positive
                        skewness. The sum of the cumulative
                        probabilities for all returns is never more with
                        F than G and sometimes less.
                              U ∈U 3 where U ′ ≥ 0, U ′′ ≤ 0 and U ′′′ ≥ 0
                   z    t                        z   t

                   ∫ ∫       F (x )dxdt ≤        ∫ ∫      G (x )dxdt   [ z , t ] ∈ℜ
                   −∞   −∞                   −∞      −∞


                                E F (x ) ≥ E G (x ) for all U ∈U 3

    16.02.13                                                                          33
(
                                     ),



Prof. Dr. Thomas
Gries




                   Advantages
                   It takes the entire distribution into account
                   It does not imply any assumptions related to the
                   return distribution.

                   Disadvantages
                   No precise quantifying for the risk
                   No complete diversification framework


    16.02.13                                                        34
Prof. Dr. Thomas
Gries




                   Thank you for your attention!




    16.02.13                                   35

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Mean-Variance in Financial Decisions under Risk and Uncertainty

  • 1. Prof. Dr. Thomas Gries Beyond Mean-Variance in Financial decisions under Risk und Uncertainty Fakultät Wirtschaftswissenschaften Lehrstuhl für Wachstums- und Konjunkturtheorie Prof. Dr. Thomas Gries Sherif Elkoumy 16.02.13 1
  • 2. Prof. Dr. Thomas Gries • Introduction • Expected Utility Framework • Mean-Variance Framework • Alternatives Risk Measures • Black-Litterman Framework • Stochastic Dominance Rules 16.02.13 2
  • 3. Prof. Dr. Thomas Gries  The Thesis reviews different frameworks concerning financial decisions under risk and uncertainty.  It reviews as well alternative risk measures to the traditional risk measure, Standard deviation.  the thesis documents advantages and disadvantages of those models and frameworks. 16.02.13 3
  • 4. Prof. Dr. Thomas Gries  EU designed by VNM in 1941 and affected on decisions theory and portfolio theory.  VNM assume a set of appealing axioms on preferences.  EU established two major line of research  Selecting criteria according this formula; n EU = ∑ pi u(πi ) i =1 16.02.13 4
  • 5. Prof. Dr. Thomas Gries Criticism: observing utility is difficult, variety of patterns in behavior , Independence axiom is violated Risk measure is a qualitative measure 16.02.13 5
  • 6. Prof. Dr. Thomas Gries  The cornerstone of modern finance theory .  The simplicity form in construction and selection of portfolios.  The interpretation of the mean as the anticipated return and the variance as the risk.  Tradeoff between risk and return.  A quantative risk measure 16.02.13 6
  • 7. Prof. Dr. Thomas Gries  The Model Assumptions:  Risk Aversion, Two Parameter, One-Period, Homogenous expectations.  In case of two Assets, A and B 16.02.13 7
  • 8. Prof. Dr. Thomas Gries  The Model: In case of three Assets, A , B, C 16.02.13 8
  • 10. Prof. Dr. Thomas Gries Limitation of the model Error maximization Unstable optimal solutions Ignorance of higher moments of distributions Standard deviation inefficiency 16.02.13 10
  • 11. Prof. Dr. Thomas Gries  Semi-Variance  Lower Partial Moments  Value at Risk  Expected Shortfall 16.02.13 11
  • 12. Prof. Dr. Thomas Gries  Returns below the mean  violates the subadditivity  Theoretically, it outperforms Variance  Empirically, M-SV outperforms M-V (Non-Normal Distribution) 16.02.13 12
  • 13. Prof. Dr. Thomas Gries  General type of risk measure  considers negative deviations from target outcomes  represents different types of utility functions and their characteristics 16.02.13 13
  • 14. Prof. Dr. Thomas Gries  How bad can things get?  the worst loss over a time horizon with a given level of target probability  Time horizon from 1 day to 2 weeks  Probabilities from 1% to 5%  Efficient under symmetric distribution  violates the subadditivity. 16.02.13 14
  • 15. Prof. Dr. Thomas Gries 16.02.13 15
  • 16. Prof. Dr. Thomas Gries  If things do get bad, how much can one expect to lose?.  satisfies (Monotonicity, Subadditivity, Positive homogeneity, Translational invariance.  measures the expected amount beyond the VaR 16.02.13 16
  • 17. Prof. Dr. Thomas Gries 16.02.13 17
  • 18. Prof. Dr. Thomas Gries  determine optimal asset allocation in a portfolio.  overcomes the problems of estimation error maximization in M-V approach.  incorporates an investor’s own views in determining asset allocations. 16.02.13 18
  • 19. Prof. Dr. Thomas Gries Basic Idea and steps: Find implied returns Formulate investor views Determine what the expected returns are Find the asset allocation for the optimal portfolio 16.02.13 19
  • 20. Prof. Dr. Thomas Gries Implied Returns + Investor Views = Expected Returns Π= δ Σ wmkt  Π = The implied excess equilibrium return (N*1 vector)  δ = (E(r) – rf)/σ2 , risk aversion coefficient  Σ = A covariance matrix of the assets (N*N matrix)  wmkt = Market capitalization weights of the Assets(N*1) 16.02.13 20
  • 21. Prof. Dr. Thomas Gries Implied Returns + Investor Views = Expected Returns  P = A matrix with investors views; each row a specific view of the market and each entry of the row represents the portfolio weights of each assets (K*N matrix)  ε= the error term (uncertanity on views)  Ω = A diagonal covariance matrix with error terms on each view (K*K matrix)  Q = The view vector described in matrix P (K*1 vector) 16.02.13 21
  • 22. Prof. Dr. Thomas Gries Breaking down the views Asset A has an absolute return of 5% Asset B will outperform Asset C by 1%  Q1   ε 1  ω 1 0 0  Q + ε = .  + .      Ω = 0  . 0  Q K   ε K      0  0 ωK   16.02.13 22
  • 23. Prof. Dr. Thomas Gries The new combined expected returns views −1 E [R] =  ( τ Σ ) + P ′Ω P   ( τ Σ ) −1 Π + P ′Ω − 1V  −1 −1      Assuming there are N-assets in the portfolio, this formula computes E(R), the expected new return.  τ = A scalar number indicating the uncertainty of the CAPM distribution (0.025- 0.05 16.02.13 23
  • 24. Prof. Dr. Thomas Gries The new combined expected returns views 16.02.13 24
  • 25. Prof. Dr. Thomas Gries Advantages Investor’s can insert their view. Control over the confidence level of views. More intuitive interpretation, less extreme shifts in portfolio weights. The reverse optimization techniques do not generate implausible solutions. 16.02.13 25
  • 26. Prof. Dr. Thomas Gries Disadvantages Black-Litterman model does not give the best possible portfolio, merely the best portfolio given the views stated As with any model, sensitive to assumptions Model assumes that views are independent of each other The normal distribution 16.02.13 26
  • 27. Prof. Dr. Thomas Gries  An alternative approach to The M-V to the ordering of uncertain prospects.  Decision rule for dividing alternatives into two mutually exclusive groups: efficient and inefficient.  Consistent with the VNM axioms on preferences. 16.02.13 27
  • 28. Prof. Dr. Thomas Gries  The most general efficiency criteria relies only on the assumption that utility is nondecreasing in income, or the decision maker prefers more of at least one good to less.  FSD: Given two CDFs F and G, an asset F will dominate G by FSD independent of concavity if F(x) ≤ G(x) for all return x with at least one strict inequality. 16.02.13 28
  • 29. Prof. Dr. Thomas Gries Intuitively, this rule states that F will dominate G if its CDF always lies to the left of G’s: F ( x) G ( x) F ( x) 16.02.13 29
  • 30. Prof. Dr. Thomas Gries  SSD implies that the investor is risk averse  utility function is concave, implying that the second derivative of the utility function is negative.  SSD Rule A necessary and sufficient condition for an alternative F to be preferred to a second alternative G by all risk averse decision makers is that 16.02.13 30
  • 31. ( ), Prof. Dr. Thomas Gries  Mathematically ; U ′ ≥ 0 and U ′′ ≤ 0 x x x ∫ F ( z) dz ≤ ∫ G ( z) dz ∫[ G ( z) −F ( z)] dz ≥0 −∞ −∞ −∞  Graphically; Alternative F dominates alternative G for all risk averse individuals if the cumulative area under F exceeds the area under the cumulative distribution function G for all values x 16.02.13 31
  • 32. ( ), Prof. Dr. Thomas Gries  Graphically ; 16.02.13 32
  • 33. ( ), Prof. Dr. Thomas Gries  TSD refers to a preferences for positive skewness. The sum of the cumulative probabilities for all returns is never more with F than G and sometimes less. U ∈U 3 where U ′ ≥ 0, U ′′ ≤ 0 and U ′′′ ≥ 0 z t z t ∫ ∫ F (x )dxdt ≤ ∫ ∫ G (x )dxdt [ z , t ] ∈ℜ −∞ −∞ −∞ −∞ E F (x ) ≥ E G (x ) for all U ∈U 3 16.02.13 33
  • 34. ( ), Prof. Dr. Thomas Gries Advantages It takes the entire distribution into account It does not imply any assumptions related to the return distribution. Disadvantages No precise quantifying for the risk No complete diversification framework 16.02.13 34
  • 35. Prof. Dr. Thomas Gries Thank you for your attention! 16.02.13 35

Notas do Editor

  1. Welcome everybody to my presentation. My name is sherif and I will present today my master thesis. It is entitles Beyond Mean-Variance in Financial decisions under risk and Uncertainty. First, I show you my Agenda.