Stochastic discount factors

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Stochastic discount factors

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For stocks, Xit 1 = pit 1 dit 1 (price dividend) ... Without data on m we can't directly estimate these. But we do have some theoretical restrictions on m: ... – PowerPoint PPT presentation

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Title: Stochastic discount factors


1
Stochastic discount factors
  • HKUST
  • FINA790C Spring 2006

2
Objectives of asset pricing theories
  • Explain differences in returns across different
    assets at point in time (cross-sectional
    explanation)
  • Explain differences in an assets return over
    time (time-series)
  • In either case we can provide explanations based
    on absolute pricing (prices are related to
    fundamentals, economy-wide variables) OR relative
    pricing (prices are related to benchmark price)

3
Most general asset pricing theory
  • All the models we will talk about can be written
    as
  • Pit Et mt1 Xit1
  • where Pit price of asset i at time t
  • Et expectation conditional on
    investors time t information
  • Xit1 asset is payoff at t1
  • mt1 stochastic discount factor

4
The stochastic discount factor
  • mt1 (stochastic discount factor pricing kernel)
    is the same across all assets at time t1
  • It values future payoffs by discounting them
    back to the present, with adjustment for risk
  • pit Et mt1Xit1
  • Etmt1EtXit1 covt(mt1,Xit1)
  • Repeated substitution gives
  • pit Et S mt,tj Xitj (if no bubbles)

5
Stochastic discount factor prices
  • If a riskless asset exists which costs 1 at t
    and pays Rf 1rf at t1
  • 1 Et mt1Rf or Rf 1/Etmt1
  • So our risk-adjusted discounting formula is
  • pit EtXit1/Rf covt(Xit1,mt1)

6
What can we say about sdf?
  • Law of One Price if two assets have same payoffs
    in all states of nature then they must have the
    same price
  • ? m pit Et mt1 Xit1 iff law holds
  • Absence of arbitrage there are no arbitrage
    opportunities iff ? m gt 0 pit Etmt1Xit1

7
Stochastic discount factors
  • For stocks, Xit1 pit1 dit1 (price
    dividend)
  • For riskless asset if it exists Xit1 1 rf
    Rf
  • Since pt is in investors information set at time
    t,
  • 1 Et mt1( Xit1/pit ) Etmt1Rit1
  • This holds for conditional as well as for
    unconditional expectations

8
Stochastic discount factor returns
  • If a riskless asset exists 1 Etmt1Rf or
  • Rf 1/Etmt1
  • EtRit1 ( 1 covt(mt1,Rit1 )/Etmt1
  • EtRit1 EtRzt1 -covt(mt1,Rit1)EtRzt1
  • assets expected excess return is higher the
    lower its covariance with m

9
Paths to take from here
  • (1) We can build a specific model for m and see
    what it says about prices/returns
  • E.g., mt1 b ?U/?Ct1/Et?U/?Ct from first-order
    condition of investors utility maximization
    problem
  • E.g., mt1 a bft1 linear factor model
  • (2) We can view m as a random variable and see
    what we can say about it generally
  • Does there always exist a sdf?
  • What market structures support such a sdf?
  • It is easier to narrow down what m is like,
    compared to narrowing down what all assets
    payoffs are like

10
Thinking about the stochastic discount factor
  • Suppose there are S states of nature
  • Investors can trade contingent claims that pay 1
    in state s and today costs c(s)
  • Suppose market is complete any contingent claim
    can be traded
  • Bottom line if a complete set of contingent
    claims exists, then a discount factor exists and
    it is equal to the contingent claim prices
    divided by state probabilities

11
Thinking about the stochastic discount factor
  • Let x(s) denote Payoff ? p(x) S c(s)x(s)
  • p(x) ? ?(s) c(s)/??(s) x(s) , where??(s)
    is probability of state s
  • Let m(s) c(s)/?(s)
  • Then p S ?(s)m(s)x(s) E m(s)x(s)
  • So in a complete market the stochastic discount
    factor m exists with p E mx

12
Thinking about the stochastic discount factor
  • The stochastic discount factor is the state price
    c(s) scaled by the probability of the state,
    therefore a state price density
  • Define ?(s) Rfm(s)?(s) Rfc(s) c(s)/Et(m)
  • Then pt Et(x)/Rf ( pricing using
    risk-neutral probabilities ?(s) )

13
A simple example
  • S2, p(1) ½
  • 3 securities with x1 (1,0), x2(0,1), x3 (1,1)
  • Let m(½,1)
  • Therefore, p1¼, p2 1/2 , p3 ¾
  • R1 (4,0), R2(0,2), R3(4/3,4/3)
  • ER12, ER21, ER34/3

14
Simple example (contd.)
  • Where did m come from?
  • representative agent economy with
  • endowment 1 in date 0, (2,1) in date 1
  • utility EU(c0, c11, c12) Sps(lnc0 lnc1s)
  • i.e. u(c0, c1s) lnc0 lnc1s (additive) time
    separable utility function
  • m ?u1/E?u0(c0/c11, c0/c12)(1/2, 1/1)
  • m(½,1) since endowmentconsumption
  • Low consumption states are high m states

15
What can we say about m?
  • The unconditional representation for returns in
    excess of the riskfree rate is
  • Emt1(Rit1 Rf) 0
  • So ERit1-Rf -cov(mt1,Rit1)/Emt1
  • ERit1-Rf -?(mt1,Rit1)?(mt1)?(Rit1)/Emt
    1
  • Rewritten in terms of the Sharpe ratio
  • ERit1-Rf/?(Rit1) -?(mt1,Rit1)?(mt1)/Emt
    1

16
Hansen-Jagannathan bound
  • Since -1 ? 1, we get
  • ?(mt1)/Emt1 supi ERit1-Rf/?(Rit1)
  • This is known as the Hansen-Jagannathan Bound
    The ratio of the standard deviation of a
    stochastic discount factor to its mean exceeds
    the Sharpe Ratio attained by any asset

17
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18
Computing HJ bounds
  • For specified E(m) (and implied Rf) we calculate
    E(m)S(Rf) trace out the feasible region for the
    stochastic discount factor (above the minimum
    standard deviation bound)
  • The bound is tighter when S(Rf) is high for
    different E(m) i.e. portfolios that have similar
    ? but different E(R) can be justified by very
    volatile m

19
Computing HJ bounds
  • We dont observe m directly so we have to infer
    its behavior from what we do observe
    (i.e.returns)
  • Consider the regression of m onto vector of
    returns R on assets observed by the
    econometrician
  • m a Rb e where a is constant term, b is
    a vector of slope coefficients and e is the
    regression error
  • b cov(R,R) -1 cov(R,m)
  • a E(m) E(R)b

20
Computing HJ bounds
  • Without data on m we cant directly estimate
    these. But we do have some theoretical
    restrictions on m 1 E(mR) or cov(R,m) 1
    E(m)E(R)
  • Substitute back
  • b cov(R,R) -1 1 E(m)E(R)
  • Since var(m) var(Rb) var(e)
  • ?(m) ?(Rb) (1-E(m)E(R))cov(R,R)-1(1-E(
    m)E(R))½

21
Using HJ bounds
  • We can use the bound to check whether the sdf
    implied by a given model is legitimate
  • A candidate m a Rb must satisfy
  • E( a Rb ) E(m)
  • E ( (aRb)R ) 1
  • Let X 1 R , ?? ( a b ), y (
    E(m) 1 )
  • E X X ? - y 0
  • Premultiply both sides by ?
  • E (aRb)2 E(m) 1 ?

22
Using HJ bounds
  • The composite set of moment restrictions is E
    X X ? - y 0
  • E y? - m2 0
  • See, e.g. Burnside (RFS 1994), Cecchetti, Lam
    Mark (JF 1994), Hansen, Heaton Luttmer (RFS,
    1995)

23
HJ bounds
  • These are the weakest bounds on the sdf
    (additional restrictions delivered by the
    specific theory generating m)
  • Tighter bound require mgt0
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