Dynamic Portfolio Strategies

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Dynamic Portfolio Strategies

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... Long-Horizon Prices: IID Returns ... some simple descriptions that have been used for returns and dividends: ... referred to as a Vector Auto-Regression (VAR) ... – PowerPoint PPT presentation

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Title: Dynamic Portfolio Strategies


1
Dynamic Portfolio Strategies
  • Part 3
  • Dynamic Properties of Returns and Implications
    for Long Horizon Forecasts

2
Forecasting Long-Horizon Prices IID Returns
(review)
  • Keep in mind the effect of horizon on return
    distributions in the IID normal case

3
Forecasting Returns AR(1) Returns
  • An alternative model for returns, with dependence
    among the returns, is an AR(1) model
  • AR autoregressive
  • 1 lag length.
  • In this case, the model for returns is

4
AR(1) Returns
  • Note
  • Returns are not independent since future returns
    depend on past returns.
  • ? must be in (-1,1) in order for returns to have
    a long-run mean.
  • The current level of r affects the short-run mean
    returns.
  • ? will have an impact on long-horizon variances.

5
Conditional Expectations
  • Now that information is useful for forecasting
    future returns (here that information is past
    returns) we have to work with conditional
    expectations.
  • In this case, we wish to estimate the
    distribution of two period ahead returns
    conditional on the current return.

6
Forecasting Two-Period Returns AR(1)
  • Suppose weve just observed the log of prices
    change from pt-1 to pt (i.e. we know rt)

7
Forecasting Two-Period Returns AR(1)
  • Note
  • The impact of rt on the mean declines with time.
  • If ?lt1 the ?2 is small.
  • Old shocks to rt1 also show up in rt2 (the
    returns are correlated).

8
Forecasting Two-Period Returns AR(1)
  • The two-period return can be represented by

9
Forecasting Two-Period Returns AR(1)
  • Note
  • The shocks are independent and normal, so the sum
    is normal. Thus, the two-period return is
    normally distributed (prices two periods from now
    are lognormal).
  • The mean return is about twice the unconditional
    one-period expected return, ?.
  • The variance of returns can be larger or smaller
    than twice the one-period variance, depending on
    the sign of ?.

10
The Two-Period Return Variance
  • More details on the two-period return variance

11
Notes on Variance
  • Again, notice that the variance can be larger or
    smaller than in the IID return case.
  • Although it is possible to derive a formula for
    the conditional means and variances at all
    horizons, its instructive (and probably more
    useful) to see how to derive these forecasts
    using simulation.

12
Simulating Long-Horizon AR(1) Returns with excel
  • There are many commercial excel-based simulation
    tools
  • Crystal Ball http//www.decisioneering.com/crysta
    l_ball/
  • _at_Risk http//www.palisade.com/
  • Well be using a freeware addin called SIMTOOLS
    http//home.uchicago.edu/rmyerson/addins.htm

13
Simulating Returns
  • Two excel functions are needed to generate a
    random normally distributed number
  • rand() generates a random number, uniformly
    distributed on 0,1
  • normsinv() inverts the standard normal
    distribution
  • So to generate a N(0,1) random draw you call
    normsinv(rand())

14
Simulating Returns
  • With a sequence of N(0,1) variables in hand, we
    can recursively apply the return model to
    generate a sequence of one-period returns
  • To determine the distribution of the sum
  • Add the returns.
  • Simulate the sum many times, keeping track of
    each result (this is where SIMTOOLS is handy).

15
Simulating Returns An Example
  • Suppose youve determined that an index has the
    following properties
  • Long-run mean .96/month.
  • Standard deviation of shock 4.33/month.
  • Autocorrelation 4/month.
  • If the return last month was 1, calculate the
    conditional mean and variance of returns one year
    from now?
  • How do the mean and variance change if the
    autocorrelation is 4/month?

16
Estimating a model of AR(1) Returns
  • In order to simulate returns from the AR(1)
    model, we need to know what the model parameters
    are
  • In order to do this, we use regression techniques.

17
Determining AR(1) Return Parameters
  • To estimate the model
  • Generate a series of log prices over some time
    horizon and form continuous returns.
  • Regress the returns on their own lags and
    estimate coefficients in the model
  • Calculate the standard deviation of the error
    term, e.

18
Estimating an AR(1) Model Example
  • Using the returns from a broad-based index,
    estimate the coefficients in the following AR(1)
    model

19
Predictive Models of Returns
  • Returns, it seems, can be predicted.
  • We will
  • Examine evidence on dividend yields and
    predictability.
  • Estimate a model in which dividend yields predict
    returns.
  • Use the model to forecast returns over long
    horizons.

20
Dividend Yields
  • The dividend yield of an index is defined as the
    dividend paid by that index over some period
    divided by the current price of the stock.
  • In US data there is strong evidence that
    variation in dividend yields reflects
    time-varying expected returns.
  • The predictive ability of dividend yields
    improves as the forecasting horizon expands. For
    example, even though dividend yields are poor
    predictors of one-month returns, they are good
    predictors of four year returns.

21
Present Value Identity
  • Stock returns must come from two sources
    dividends and price appreciation.
  • This simple observation has some less obvious
    implications.
  • Begin with the identity

22
Present Value Identity
  • Rearrange and divide through by current
    dividends
  • Applying this recursive relation forward

23
Present Value Identity
  • Note that this is an identity. It must be true
    given any sequence of future returns and
    dividends.
  • The relationship must, therefore, hold when the
    conditional expectation is taken

24
Present Value Identity
  • This identity says nothing more than todays
    price is the discounted value (using future, as
    yet unspecified, discount rates) of future (again
    unspecified) dividends.
  • It is difficult to work with this relation
    statistically. Taking logs yields an equivalent
    approximating relation.

25
An Approximate Present Value Relation
  • The continuous compounding version of the
    identity
  • Again, this must hold taking expectations

26
Interpreting the Present Value Identity
  • The identity makes a straightforward point
  • If the current price/dividend ratio is high, then
    either
  • Future dividend growth must be high, or
  • Future returns must be low.
  • Another way of saying the same thing
  • If the price/dividend ratio varies (and it does)
    then it must be forecasting changing future
    dividends or changing future returns.

27
The Source of Variation in Dividend Yields
  • We can decompose dividend yield variation into
    two components

28
What We Learn About Returns
  • Think back to some simple descriptions that have
    been used for returns and dividends
  • IID returns (unpredictable).
  • Growing unpredictable dividends.
  • In this case, according to the formula above, the
    price/dividend ratio should be a constant. Again,
    this is not true.

29
Empirical Evidence
  • Historical dividend growth has been very smooth.
  • Dividend yields are negatively correlated with
    future dividend growth.
  • Dividend yields are highly correlated with future
    returns.
  • Another interpretation if prices are currently
    low (relative to dividends) then returns are
    expected to be high (historically, low dividends
    do not accompany low prices).

30
Conclusions to Draw from the Present Value
Identity
  • In light of the fact that dividend growth seems
    to be largely unpredictable, current dividend
    yields must predict future expected returns.
  • This has important implications for long-horizon
    investors. There are potentially large benefits
    to
  • Quantifying the nature of return predictability.
  • Applying this knowledge to the portfolio choice
    problem.

31
Dividend Yield and Return Predictability VAR
Models
  • The ability of dividend yields to predict
    expected returns can be incorporated into a
    formal statistical model.
  • This model is referred to as a Vector
    Auto-Regression (VAR)
  • The model is a multiple variable version of the
    AR(1) description of returns discussed previously.

32
A Dividend Yield VAR
  • The following model relates expected returns to
    dividend yields and future dividend yields to
    current

33
Estimating the VAR
  • In order to estimate this model we
  • Create a time-series of returns and log dividend
    yields using prices and dividends.
  • Regress returns on dividend yields.
  • Regress dividend yields on lagged dividend
    yields.
  • Use the regression residuals to estimate the
    covariance structure of the errors.

34
Estimating a VAR Example
  • Using the returns from a broad-based index,
    estimate the following VAR model

35
Forecasting Two-Period Returns with a VAR
  • The VAR model can be applied recursively to
    generate forecasts of long-horizon returns.
  • The two-period forecast gives some intuition
    about the distribution of these returns.

36
Two-Period Return Forecasts
  • The forecasts of the next two returns
    (conditional on the current level of dividend
    yields)

37
Two-Period Return Forecasts
  • The sum of the returns is

38
Two-Period Return Forecasts The Effect on
Variance
  • Note
  • Returns are normally distributed.
  • The variance of the two-period returns may be
    larger or smaller than the variance of the
    one-period returns

39
Forecasting Long-Horizon Returns
  • The distribution of long-horizon returns can be
    simulated, again by applying the VAR model
    recursively.
  • One complication that arises in this setting is
    to generate correlated random variables.
  • The SIMTOOLS function corand() is designed to do
    this.

40
Forecasting Long-Horizon Returns Example
  • Using the following estimates for the VAR,
    determine the properties of 5-year returns
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