PortfolioCVaR Object
PortfolioCVaR Object Properties and Functions
The PortfolioCVaR
object implements conditional value-at-risk
(CVaR) portfolio optimization. Every property and function of the
PortfolioCVaR
object is public, although some properties and
functions are hidden. See PortfolioCVaR
for the properties and
functions of a PortfolioCVaR
object. The
PortfolioCVaR
object is a value object where every instance
of the object is a distinct version of the object. Since the
PortfolioCVaR
object is also a MATLAB® object, it inherits the default functions associated with MATLAB objects.
Working with PortfolioCVaR Objects
The PortfolioCVaR
object and its functions are an interface for
conditional value-at-risk portfolio optimization. So, almost everything you do with
the PortfolioCVaR
object can be done using the functions. The
basic workflow is:
Design your portfolio problem.
Use
PortfolioCVaR
to create thePortfolioCVaR
object or use the various set functions to set up your portfolio problem.Use estimate functions to solve your portfolio problem.
In addition, functions are available to help you view intermediate
results and to diagnose your computations. Since MATLAB features are part of a PortfolioCVaR
object, you
can save and load objects from your workspace and create and manipulate arrays of
objects. After settling on a problem, which, in the case of CVaR portfolio
optimization, means that you have either scenarios, data, or moments for asset
returns, a probability level, and a collection of constraints on your portfolios,
use PortfolioCVaR
to set the properties
for the PortfolioCVaR
object.
PortfolioCVaR
lets you create an
object from scratch or update an existing object. Since the
PortfolioCVaR
object is a value object, it is easy to create
a basic object, then use functions to build upon the basic object to create new
versions of the basic object. This is useful to compare a basic problem with
alternatives derived from the basic problem. For details, see Creating the PortfolioCVaR Object.
Setting and Getting Properties
You can set properties of a PortfolioCVaR
object using either
the PortfolioCVaR
object or various
set
functions.
Note
Although you can also set properties directly, it is not recommended since error-checking is not performed when you set a property directly.
The PortfolioCVaR
object supports setting
properties with name-value pair arguments such that each argument name is a property
and each value is the value to assign to that property. For example, to set the
LowerBound
, Budget
, and
ProbabilityLevel
properties in an existing
PortfolioCVaR
object p
, use the
syntax:
p = PortfolioCVaR(p,'LowerBound', 0, 'Budget', 1, 'ProbabilityLevel', 0.95);
In addition to the PortfolioCVaR
object, which lets you
set individual properties one at a time, groups of properties are set in a
PortfolioCVaR
object with various “set” and
“add” functions. For example, to set up an average turnover
constraint, use the setTurnover
function to specify the
bound on portfolio turnover and the initial portfolio. To get individual properties
from a PortfolioCVaR
object, obtain properties directly or use an
assortment of “get” functions that obtain groups of properties from a
PortfolioCVaR
object. The PortfolioCVaR
object and
set
functions have several useful features:
The
PortfolioCVaR
object andset
functions try to determine the dimensions of your problem with either explicit or implicit inputs.The
PortfolioCVaR
object andset
functions try to resolve ambiguities with default choices.The
PortfolioCVaR
object andset
functions perform scalar expansion on arrays when possible.The CVaR functions try to diagnose and warn about problems.
Displaying PortfolioCVaR Objects
The PortfolioCVaR
object uses the default display functions
provided by MATLAB, where display
and disp
display
a PortfolioCVaR
object and its properties with or without the
object variable name.
Saving and Loading PortfolioCVaR Objects
Save and load PortfolioCVaR
objects using the MATLAB
save
and load
commands.
Estimating Efficient Portfolios and Frontiers
Estimating efficient portfolios and efficient frontiers is the primary purpose of the CVaR portfolio optimization tools. An efficient portfolio are the portfolios that satisfy the criteria of minimum risk for a given level of return and maximum return for a given level of risk. A collection of “estimate” and “plot” functions provide ways to explore the efficient frontier. The “estimate” functions obtain either efficient portfolios or risk and return proxies to form efficient frontiers. At the portfolio level, a collection of functions estimates efficient portfolios on the efficient frontier with functions to obtain efficient portfolios:
At the endpoints of the efficient frontier
That attain targeted values for return proxies
That attain targeted values for risk proxies
Along the entire efficient frontier
These functions also provide purchases and sales needed to shift from an initial or current portfolio to each efficient portfolio. At the efficient frontier level, a collection of functions plot the efficient frontier and estimate either risk or return proxies for efficient portfolios on the efficient frontier. You can use the resultant efficient portfolios or risk and return proxies in subsequent analyses.
Arrays of PortfolioCVaR Objects
Although all functions associated with a PortfolioCVaR
object
are designed to work on a scalar PortfolioCVaR
object, the array
capabilities of MATLAB enables you to set up and work with arrays of
PortfolioCVaR
objects. The easiest way to do this is with the
repmat
function. For example, to
create a 3-by-2 array of PortfolioCVaR
objects:
p = repmat(PortfolioCVaR, 3, 2); disp(p)
3×2 PortfolioCVaR array with properties: BuyCost SellCost RiskFreeRate ProbabilityLevel Turnover BuyTurnover SellTurnover NumScenarios Name NumAssets AssetList InitPort AInequality bInequality AEquality bEquality LowerBound UpperBound LowerBudget UpperBudget GroupMatrix LowerGroup UpperGroup GroupA GroupB LowerRatio UpperRatio MinNumAssets MaxNumAssets ConditionalBudgetThreshold ConditionalUpperBudget BoundType
PortfolioCVaR
objects, you can work on individual PortfolioCVaR
objects in the
array by indexing. For
example:p(i,j) = PortfolioCVaR(p(i,j), ... );
PortfolioCVaR
for the
(i
,j
) element of a matrix of
PortfolioCVaR
objects in the variable
p
.If you set up an array of PortfolioCVaR
objects, you can access
properties of a particular PortfolioCVaR
object in the array by
indexing so that you can set the lower and upper bounds lb
and
ub
for the
(i
,j
,k
) element of a
3-D array of PortfolioCVaR
objects
with
p(i,j,k) = setBounds(p(i,j,k), lb, ub);
[lb, ub] = getBounds(p(i,j,k));
PortfolioCVaR
object functions work on only one PortfolioCVaR
object at a
time.Subclassing PortfolioCVaR Objects
You can subclass the PortfolioCVaR
object to override existing
functions or to add new properties or functions. To do so, create a derived class
from the PortfolioCVaR
class. This gives you all the properties
and functions of the PortfolioCVaR
class along with any new
features that you choose to add to your subclassed object. The
PortfolioCVaR
class is derived from an abstract class called
AbstractPortfolio
. Because of this, you can also create a
derived class from AbstractPortfolio
that implements an entirely
different form of portfolio optimization using properties and functions of the
AbstractPortfolio
class.
Conventions for Representation of Data
The CVaR portfolio optimization tools follow these conventions regarding the representation of different quantities associated with portfolio optimization:
Asset returns or prices for scenarios are in matrix form with samples for a given asset going down the rows and assets going across the columns. In the case of prices, the earliest dates must be at the top of the matrix, with increasing dates going down.
Portfolios are in vector or matrix form with weights for a given portfolio going down the rows and distinct portfolios going across the columns.
Constraints on portfolios are formed in such a way that a portfolio is a column vector.
Portfolio risks and returns are either scalars or column vectors (for multiple portfolio risks and returns).
See Also
Related Examples
- Creating the PortfolioCVaR Object
- Working with CVaR Portfolio Constraints Using Defaults
- Hedging Using CVaR Portfolio Optimization
- Compute Maximum Reward-to-Risk Ratio for CVaR Portfolio