VAR for a Portfolio of Options - PowerPoint PPT Presentation

1 / 54
About This Presentation
Title:

VAR for a Portfolio of Options

Description:

... change in a linear fashion with reference to the ... Rising global demand from emerging economies and low worldwide supplies. Shifts in world diets ... – PowerPoint PPT presentation

Number of Views:151
Avg rating:3.0/5.0
Slides: 55
Provided by: xxx3116
Category:
Tags: var | options | portfolio

less

Transcript and Presenter's Notes

Title: VAR for a Portfolio of Options


1
VAR for a Portfolio of Options Commodities as
an asset class going forward
By NGUYEN Thi My Hoang NGUYEN Tuong
Tam CHAMNINAWAKUN Phawina
2
Contents
3
  • VAR of portfolio of options

4
Options basic strategies
  • Buying calls
  • Buying calls to participate in upward price
    movements.
  • Buying calls as part of an investment plan
  • Buying calls to lock in a stock purchase price
  • Buying calls to hedge short stock sales
  • Buying puts
  • Buying puts to participate in downward price
    movements.
  • Buying puts to protect a long stock position
  • Buying puts to protect unrealized profit in long
    stock
  • Selling calls
  • Covered call writing
  • Uncovered call writing
  • Selling puts
  • Covered put writing
  • Uncovered put writing

5
  • It is paradoxical that instruments such as
    derivatives originally conceived as a hedging
    instrument could be blamed for the generation of
    bigger risks, and more difficult to control
  • An empirical surveys proposed to send a series
    of portfolios of different kinds including
    non-linear to all Australian banks to have the
    daily VaR of each portfolio calculated with their
    own methods. Of all the banks which answered
    (only twenty-two), just two banks were able to
    calculate the VaR for all the portfolios

Source Maria Coronado, 2000
6
Schematic of How VAR measures work
  • A mapping procedure describes exposure
  • An inference procedure describes uncertainty by
    characterizing the joint distribution for key
    factors
  • A transformation procedure combines exposure and
    uncertainty to describe the distribution of the
    portfolio's current market value , which it then
    summarizes with the value of some VaR metric

Source www.riskglossary.com
7
Mapping and inference procedures
  • The purpose of a mapping procedure is to
    characterize a portfolio's exposures. It does so
    by expressing the portfolio's value as a function
    of applicable market variables (key factors),
    such as stock prices, exchange rates, commodity
    prices or interest rates.
  • In case of options portfolio, we would be using
    option prices as key factors, which means that
    the inference procedure would need to
    characterize their joint distribution.
  • Designing an inference procedure to do
    characterize their joint distribution would be
    difficult. Because of
  • the limited downside risk of options,
  • their prices have skewed price distributions,
  • their standard deviations would be highly
    dependent upon whether the options were
    in-the-money or out-of-the-money.

8
Mapping procedures
  • A simpler solution is to not employ options
    prices as key factors, but to use more
    fundamental risk factors such as the options'
    underlier prices and implied volatilities .
  • For many VaR measures, output of the mapping
    procedure is a primary mapping, but not for all.
    Use of primary mappings can pose certain
    problems.
  • The most common of these is that primary mappings
    can be mathematically complicated. This is
    especially true for large portfolios of
    instruments such as mortgage-backed securities or
    exotic derivatives.
  • Applying a transformation procedure to a
    complicated portfolio mapping can be
    computationally expensive. For this reason, many
    mapping procedures replace primary mappings with
    simpler approximations. Those approximations are
    called portfolio remappings.

9
Remapping
  • portfolio remapping, which approximate a
    portfolio's value with some other random
    variable.
  • A function remapping approximates a portfolios
    value by replacing its primary mapping functions
    with an approximate mapping function
  • A variables remapping approximates a portfolios
    value by replacing its key factors with
    alternative and simpler key factors
  • A dual remapping approximates a portfolios value
    by replacing both mapping functions and key
    factor vector
  • Many function remapping approximate a portfolio
    mapping function with a linear or quadratic
    polynomial to facilitate use of a linear
    transformation or quadratic transformation.

10
Transformation procedures
  • Four basic forms of transformations are used
  • linear transformations simple and run in real
    time, applied only if a portfolio mapping
    function is a linear polynomial.
  • quadratic transformations slightly more
    complicated, but also run in real time (or
    near-real time). They apply only if a portfolio
    mapping function is a quadratic polynomial and
    key factors distribution is joint-normal (using
    Central Limit Theorem)
  • Monte Carlo transformations, and
  • historical transformations

11
VAR measures
  • Traditionally, VaR measures have been categorized
    according to the transformation procedures they
    employ. There are
  • linear VaR measures (other names include
    parametric, variance-covariance, closed form, or
    delta normal VaR measures)
  • quadratic VaR measures (also called delta-gamma
    VaR measures)
  • Monte Carlo VaR measures, and
  • historical VaR measures.

12
Source Maria Coronado, 2000
13
Normality assumption in the case of options
Source www.riskglossary.com
14
Normality assumption in the case of options
portfolio
  • The normality of the underlying asset does not
    mean that the option should follow a normal
    distribution, since the price of the options does
    not change in a linear fashion with reference to
    the underlying ones.
  • However, with sufficiently large portfolios of
    independent options, the normality assumption can
    be used by applying Central Limit Theorem
  • To determine when the options portfolio returns
    can be described by a normal distribution, we
    have to identify two aspects
  • The number of options in the portfolio (i.e. its
    size).
  • Analyze if even though the options are not
    completely independent but with a small degree of
    serial correlation

15
Analytical methods
  • Computing delta, gamma, vega risk of a single
    instruments is straightforward.
  • But they often become ad hoc when applied to
    portfolios
  • The famous RikMetricsTM of J. P. Morgan is an
    analytic variance-covariance matrix method

16
Pros Cons
  • Advantages
  • It facilitates VaR calculations , making this
    method easily understandable for all the
    connected people in the risk management. Its
    implementation could be effortless.
  • Rapidity in such calculations, a very important
    feature when working in real time.
  • Drawbacks
  • The VaR estimation through the variance-covariance
    matrix approach gives VaR overestimates for
    small confidence levels and VaR underestimates
    for big levels of probability.
  • The linearity assumption makes this method only
    applicable, theoretically, to linear portfolios
  • Even by increasing the portfolio value
    approximation to a quadratic one (deltagamma
    methods), success would not be guaranteed since
    an accurate VaR estimate of the non-linear
    portfolios is not feasible

17
Delta-normal VAR
  • The delta-normal approach originally introduced
    by J.P. Morgan's RiskMetrics software is based on
    two important assumptions (J.P. Morgan 1996)
  • Linearity The change in the value of the
    portfolio over a given interval of time is linear
    in the returns of N lt 8 risk factors
  • Normality The returns of the risk factors1
    follow a multivariate normal distribution.

18
Historical simulation method
  • The historical simulation approach is an easy
    method both to understand and to explain. It is
    also quite easy to implement. It is a
    non-parametric method, which does not depend on
    any assumption about the probability distribution
    of the underlying asset. Therefore, it allows
    capturing fat tails (and other non-normal
    characteristics), while eliminating the need for
    estimating and working with volatilities and
    correlations. It also avoids greatly the
    modelisation risk.
  • It can be applied to all kinds of instruments,
    both linear and non-linear.
  • Advantages This method allows capturing fat
    tails this is not the case of the
    variance-covariance matrix approach.
  • Drawbacks This method depends completely on the
    specific historical data set used, and ignores
    any event not represented in such database.

19
Monte-Carlo simulation method
  • Both parametric (partial MC simulation or
    delta-gamma simulation) and non-parametric (full
    MC simulation)
  • the non-parametric Monte Carlo simulation method,
    as it does not rely on any assumption about the
    probability distribution of the underlying asset,
    greatly avoids the modelisation risk and allows
    capturing fat tails (and other non-normal
    properties). At the same time, it excludes the
    necessity of estimating and working with
    volatilities and correlations, keeping out
    historical simulation method drawbacks as opposed
    to the variance-covariance matrix one.
  • the parametric Monte Carlo simulation method
    presents a theoretical superiority as opposed to
    the variance-covariance matrix method. Although
    the former does call for the specification of a
    particular stochastic process for risk factors
    (dealing, therefore, with modelisation risk), it
    can be applied to non-linear positions and, it
    does not require the normality assumption.

20
Monte-Carlo simulation method
  • In contrast to the historical simulation method,
    its advantage lies in the random character of
    future prices paths, whereas prices generated by
    historical simulation represent only one of the
    possible paths that may happen.
  • Its drawback is time consuming and more
    difficult, and requiring a bigger computational
    effort, indeed are more exact in case of complex
    portfolios

21
Conclusion
  • Most of the problems originate from
  • VAR depends on the combined distribution of the
    instruments, which can become very complex when
    the number of different instruments is big.
  • The non-linearity of the instruments
  • The computational effort deriving from the number
    size and complexity of valuation formulas
    involved
  • Covariance matrix of underlying assets

22
  • Commodities as a future

23
What is commodities?
  • Commodities are things of value, of uniform
    quality, that were produced in large quantities
    by many different producers the items from each
    different producer are considered equivalent.
  • It is the contract and this underlying standard
    that define the commodity, not any quality
    inherent in the product.
  • Commodities exchanges include
  • Chicago Board of Trade
  • Euronext.liffe
  • London Metal Exchange
  • New York Mercantile Exchange
  • Multi Commodity Exchange
  • Dalian Commodity Exchange

24
Why commodities impact in the worlds capital
market?
  • Three main reasons to invest in commodities
    products
  • Rising global demand from emerging economies and
    low worldwide supplies
  • Shifts in world diets
  • Greater demand for alternative energy.

25
Why we need to forecast commodities price?
  • Since commodities and stocks have a negative
    correlation, which means that when stocks go
    down, commodities tend to move up and vice versa.
  • If a portfolio is diversified with stocks and
    commodities, it will likely experience less
    volatility than a portfolio that is comprised of
    only stocks. That's because as one asset class
    underperforms, the other asset class can
    outperform to offset the volatility.
  • Therefore, commodities price is important for
    investors to forecast return and risk from their
    portfolios.

26
Commodities products
  • 3 Main product categories
  • Agricultural Products
  • Metal and Minerals
  • Oil and Gas

27
Composite of each group
28
Historical price of commodities products
Agricultural Products
29
Historical price of commodities products
Metal and Minerals
30
Historical price of commodities products
Oil and Gas
31
Model for price forecasting
The mathematical models of the persistence, or
autocorrelation, in a time series which calls .
Auto regression Integrated Moving Average Model
(ARIMA )
32
Box and Jenkins ARIMA model
ARIMA is a method for determining two
things 1. How much of the past should be used
to predict the next observation (length of
weights)2. The values of the weights.For
example y(t) 1/3 y(t-3) 1/3 y(t-2)
1/3 y(t-1) y(t) 1/6 y(t-3) 4/6
y(t-2) 1/6 y(t-1)
Source http//www.valuebasedmanagement.net
33
ARIMA(p,d,q)
  • A nonseasonal ARIMA model is classified as an
    "ARIMA(p,d,q)" model, where
  • p is the number of autoregressive terms,
  • d is the number of nonseasonal differences, and
  • q is the number of lagged forecast errors in the
    prediction equation
  • ( In this case, we choose d 0)

34
Rules for identifying ARIMA model
Identifying the order of differencing and the
constant Rule 1 If the series has positive
autocorrelations out to a high number of lags,
then it probably needs a higher order of
differencing. Rule 2 If the lag-1
autocorrelation is zero or negative, or the
autocorrelations are all small and pattern less,
then the series does not need a higher order of
differencing. If the lag-1 autocorrelation is
-0.5 or more negative, the series may be over
differenced.  BEWARE OF OVERDIFFERENCING!! Rule
3 The optimal order of differencing is often the
order of differencing at which the standard
deviation is lowest.
35
Rules for identifying ARIMA model
Rule 4 A model with no orders of differencing
assumes that the original series is stationary
(among other things, mean-reverting). A model
with one order of differencing assumes that the
original series has a constant average trend
(e.g. a random walk or SES-type model, with or
without growth). A model with two orders of total
differencing assumes that the original series has
a time-varying trend (e.g. a random trend or
LES-type model). Rule 5 A model with no
orders of differencing normally includes a
constant term (which represents the mean of the
series). A model with two orders of total
differencing normally does not include a constant
term. In a model with one order of total
differencing, a constant term should be included
if the series has a non-zero average trend.
36
Rules for identifying ARIMA model
Identifying the order of autoregression
and moving average Rule 6 If the partial
autocorrelation function (PACF) of the
differenced series displays a sharp cutoff and/or
the lag-1 autocorrelation is positive--i.e., if
the series appears slightly "underdifferenced"--th
en consider adding one or more AR terms to the
model. The lag beyond which the PACF cuts off is
the indicated number of AR terms. Rule 7 If
the autocorrelation function (ACF) of the
differenced series displays a sharp cutoff and/or
the lag-1 autocorrelation is negative--i.e., if
the series appears slightly "overdifferenced"--the
n consider adding an MA term to the model. The
lag beyond which the ACF cuts off is the
indicated number of MA terms.
37
Rules for identifying ARIMA model
Rule 8 It is possible for an AR term and an MA
term to cancel each other's effects, so if a
mixed AR-MA model seems to fit the data, also try
a model with one fewer AR term and one fewer MA
term--particularly if the parameter estimates in
the original model require more than 10
iterations to converge. Rule 9 If there is a
unit root in the AR part of the model i.e., if
the sum of the AR coefficients is almost exactly
1 you should reduce the number of AR terms by one
and increase the order of differencing by one.
Rule 10 If there is a unit root in the MA part
of the model--i.e., if the sum of the MA
coefficients is almost exactly 1--you should
reduce the number of MA terms by one and reduce
the order of differencing by one. Rule 11 If
the long-term forecasts appear erratic or
unstable, there may be a unit root in the AR or
MA coefficients.
38
Gold Price Forecasting
39
Gold Price Forecasting
40
Gold Price Forecasting
41
Gold Price Forecasting
42
Gold Price Forecasting
43
Forecasting results
44
Forecasting results
45
Forecasting results
46
Forecasting results
47
Agricultural price forecasting
48
Metals and Minerals price forecasting
49
Oil and Gas price forecasting
50
All commodities
51
All commodities
52
All commodities
53
All commodities price forecasting
54
Thank You !
Write a Comment
User Comments (0)
About PowerShow.com