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Social Mysteries of Prices of Assets and Derivatives

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of Assets and Derivatives. J. Michael Steele. The Wharton School ... Bond Model: d t = r t dt. Some Features of note: (1) the 'volatility' s is constant, and ... – PowerPoint PPT presentation

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Title: Social Mysteries of Prices of Assets and Derivatives


1
Social Mysteries of Prices of Assets and
Derivatives
  • J. Michael Steele
  • The Wharton School
  • University of Pennsylvania

2
First Some Ambidextrous Attitudes Toward
Speculation
  • While London's financial men toiled many weary
    hours in crowded offices, he played the market
    from his bed for half an hour each morning. This
    leisurely method of investing earned him several
    million pounds for his account and a tenfold
    increase in the market value of the endowment of
    his college, King's College, Cambridge. (B.
    Malkiel)

3
The Spirit of Speculation Has Been Part of a Long
Tradition in Economics
  • David Ricardo (1772-1823) made a fortune
    speculating on British bonds before the battle of
    Waterloo.
  • Irving Fisher (1867-1947) invented the
    rolodex, made a fortune, and lost it all
    speculating in 1929.

4
G.W. Bush in 04 Futures Contacts
  • Pays 100 points if GWB wins in November
  • TradeSports.com
  • Contract Hi75, Lo57
  • PointDime (1/10 USD)
  • Bid-Ask Gap.8 point
  • Exchange Fee 4 cents each way.
  • One contract 6 bet, open contracts 218K

5
MSO Can You Find the Day When Martha Was
Convicted?
6
A Three Part Plan with a Bonus
  • Introductory Observations that Illustrate
    anomalous price processes (thats done!)
  • Reflection on the recent past BS as a social
    event, as applied mathematics, and as a science
    paradigm. (I know you know Ill be quick --- but
    maybe you dont know.)
  • Facing Empirical Realities --- The Main Point.
  • ah, yes, the Bonus.

7
The Samuelson Model
  • Stock Model dSt µ St dt s St dWt
  • Bond Model dßt r ßt dt
  • Some Features of note
  • (1) the volatility s is constant, and
  • (2) the model is Markovian.

8
Without it we would not be here todayPricing of
European Call Option Under the Black-Scholes
Model
  • Arbitrage Price St P - K e-rt P-
  • P/-F(d/-/s sqrt(T-t) )
  • d log (St/K)(r s2/2)
  • d- log (St/K)(r -s2/2)

9
Examination of the Social Epistemology of
Black-Scholes The Technical Side.
  • Black and Scholes give two arguments for their
    pricing formula.
  • One of these is widely repeated and uses the Ito
    analog of (f/g)f/g.
  • The other argument has not been seen again.

10
The Famous Delta Hedge Argument
  • In 1973 Black and Scholes follow a lead from
    Beat the Market by Thorp and Kassouf. Linearizing
    through the origin they consider the portfolio
  • Xt St - f( t, St ) / fx( t,
    St )
  • Itos Formula with the odd (f/?) f/? twist
  • Yields the Black-Scholes PDE
  • Economic vs Mathematical Reasoning
  • Motivation for a PDE Model

11
The Less Famous CAPM Argument
  • Return on any asset will (in theory) be equal to
    the risk-free rate plus a multiple of the return
    of the market in excess of the risk-free rate.
  • The multiplier is just the covariance of the
    asset return and the market return, divided by
    the variance of the market return (Beta).
  • Apply this to St and f(t, St) to get two
    equations. Clear the market, get the BS-PDE

12
Two Questions with (Partial) Answers
  • What if you dont use (f/?) f/? in the delta
    hedge argument? What do you get?
  • Answer You get a nonlinear PDE which must be in
    some sense approximated by the Black-Scholes PDE,
    but no one seems to have pursued this program.
  • Why did the CAPM argument just disappear?
  • Answer Because it was pure flim-flam. You can
    replace CAPM with a cubic or quadratic and the
    argument goes through.

13
Where the Arguments Took Us First
  • Empirical performance is not particularly good
    --- not then, not now.
  • The Delta Hedge idea had serious impact on the
    practical world of finance.
  • The two motivational arguments of Black and
    Scholes have been supplemented by more satisfying
    arguments by Merton and especially by Harrison
    and Kreps.
  • Martingale theory now almost completely eclipses
    the PDE theory.

14
Reexamination of the Fundamentals
  • Here we have made assumptions about both the
    underlying price process and the logic of
    arbitrage.
  • Much is known about the drawbacks of GBM as a
    model for price --- though we will soon review
    some new findings.
  • It is harder, but still possible, to question the
    logic of arbitrage pricing.

15
One Way to Examine the Logic A
New Textbook Example
  • Simple, with a decent story
  • Explicitly solvable with the tools at hand
  • Suggesting simple inferences that are at odds
    with intuition
  • Resolved by seeing that these confusions with us
    all along
  • And revived by suggesting that those confusions
    may not be silly after all.

16
A State-Space CandidateThe Observational Model
for Stock Price
  • BM with Drift dXt µ dt s dWt
  • Model for Wobble dOt -a Ot dt e dWt
  • Model for Price St S0 exp (Xt Ot )
  • The point is that St is essentially geometric
    Brownian motion, but with a mean reverting
    observational error.
  • Please Note St is NOT a Markov process

17
Mean Reverting Process dOt -aOt dt edWt
Ot
time
18
What Do We Do? What Do We Get ?
  • Martingale Pricing Theory is up to the task. An
    easy exercise gives one a formula for the price
    of a European call option.
  • At first it may be surprising, but you get
    EXACTLY the Black-Scholes formula,
  • Except that the old s is replaced by a function
    of the new model parameters.
  • The PDE approach is meaningless in this context,
    but

19
Interpolation of Models as a way to test our
Logic
  • Here we have a price process which contains both
    the BS model and one that is highly predictable.
  • Martingale pricing theory applies seamlessly as
    we move from one extreme to the other.
  • Can we have appropriately priced options under a
    model which makes every man a king? You tell me
    (Im sure you will!)

20
The Mystery Fades Out, then Fades In
  • To be fair, this new model may only add a small
    stochastic confusion to a familiar fact
  • Every baby knows that µ does not matter in the
    BS price of an option what we see here a
    variation on that old story.
  • They also know why µ doesnt matter --- but can
    we trust what we have taught them?

21
John von Neumann once said
  • In mathematics, you dont understand things, you
    just get used to them.
  • Von Neumann had in mind such things as the
    Pythagorean theorem as the basis for the geometry
    of d-space, or
  • Here we might ask honestly ask (after we
    side-step any silly tautologies), Is µ really
    and truly irrelevant?

22
After I clean the pie off my face
  • OK, so you are unmoved. You cant say I didnt
    trymaybe another day. Anyway, lets move to a
    less contentious issue.
  • Many people are willing to agree that as a
    pricing model GBM is past its sell-by date.
  • What do we do about it? Where is our next model
    coming from?

23
First, Hi-Frequency Gives Us a More Honest View
of Volatility
  • We want (squared) volatility to mean something
    like the current growth rate of quadratic
    variation.
  • More commonly volatility is use to mean the
    value of some parameter in some model --- so its
    meaning can vary from place to place.
  • Model-based volatility can be self-fulfilling.
  • If we stick with the honest definition, we need
    hi-frequency data. Jonathan Weinberg has done
    this,and he finds a nice story.

24
(No Transcript)
25
What a Quick Look at the Picture Tells Us
  • These are honest QV volatilities, but they are
    not log-volatilities, well get to those shortly.
  • We see long-range dependence via the ACF, but
  • The PACF tells us that 6 days, tells the tale.
  • Similar pictures apply for MRK, GE, etc.
  • To the eye, this might support the SV model, but
    there is more to the story.

26
What a Second Look at the Picture Tells Us
  • If one takes logs of the (QV-defined)
    volatilities and fits an AR(1) model, the story
    for the SV price model falls apart.
  • The residual time series has an ACF with small
    but significant and non-decaying coefficients.
  • The PACF has many significant coeffients.
  • Even the lame Ljung-Box is highly significant we
    reject the SV model quite handily.

27
Its Maybe Confusingbut it is What Weve Got
  • The history of the Black-Scholes formula has more
    dark alleys than is it is customary to
    acknowledge.
  • We understand µ, or perhaps we dont. We
    collectively agree that we dont have a handle on
    µt.
  • We know s is not constant, but there is
    (probably) no point in pretending that Log(st) is
    an AR(1).

28
We are in an interesting time ofRevisionism
Examples and Reasons
  • More now argue that long-range dependence which
    has had some vogue, is perhaps just an artifact
    of non-stationarity of the underlying price
    process.
  • LTCM reminds us that in the extreme all markets
    become correlated.
  • Oddly enough, we dont have solid well-
    established standards, and our many of our
    streams have become polluted.

29
Take Aways and a Trailer
  • The logic of arbitrage pricing is not yet
    established beyond a question of doubt, even if
    it is closed to as good as economics gets.
  • Popularity of a model should be meaningless as
    far as science goes, but on a social level it
    always maters more than one could imagine.
  • As theoreticians, we need to read the fine print
    and not trust empirical work to others.

30
The Promised TrailerThe Cauchy-Schwarz Master
Class
  • A three-hundred page book about a one-line
    inequality
  • Coaching for problem solving, plus all of the
    classical inequalities viewed with new eyes
  • The real truth about Bunyakovsky
  • Thanks!
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