Creating the PortfolioMAD Object
To create a fully specified MAD portfolio optimization problem, instantiate the
                PortfolioMAD object using PortfolioMAD. For information on the workflow when using
                PortfolioMAD objects, see PortfolioMAD Object Workflow.
Syntax
Use PortfolioMAD to create an instance of
                an object of the PortfolioMAD class. You can use the PortfolioMAD object in several ways.
                To set up a portfolio optimization problem in a PortfolioMAD
                object, the simplest syntax
                is:
p = PortfolioMAD;
PortfolioMAD object, p, such
                that all object properties are empty. The PortfolioMAD object also accepts
                collections of argument name-value pair arguments for properties and their values.
                The PortfolioMAD object accepts inputs
                for public properties with the general
                syntax:
	p = PortfolioMAD('property1', value1, 'property2', value2, ... );If a PortfolioMAD object already exists, the syntax permits the
                first (and only the first argument) of PortfolioMAD to be an existing object
                with subsequent argument name-value pair arguments for properties to be added or
                modified. For example, given an existing PortfolioMAD object in
                    p, the general syntax
                is:
p = PortfolioMAD(p, 'property1', value1, 'property2', value2, ... );
Input argument names are not case-sensitive, but must be completely specified. In
                addition, several properties can be specified with alternative argument names (see
                    Shortcuts for Property Names). The PortfolioMAD object tries to detect
                problem dimensions from the inputs and, once set, subsequent inputs can undergo
                various scalar or matrix expansion operations that simplify the overall process to
                formulate a problem. In addition, a PortfolioMAD object is a
                value object so that, given portfolio p, the following code
                creates two objects, p and q, that are
                distinct:
q = PortfolioMAD(p, ...)
PortfolioMAD Problem Sufficiency
A MAD portfolio optimization problem is completely specified with the
                    PortfolioMAD object if the following three conditions are
                met: 
- You must specify a collection of asset returns or prices known as scenarios such that all scenarios are finite asset returns or prices. These scenarios are meant to be samples from the underlying probability distribution of asset returns. This condition can be satisfied by the - setScenariosfunction or with several canned scenario simulation functions.
- The set of feasible portfolios must be a nonempty compact set, where a compact set is closed and bounded. You can satisfy this condition using an extensive collection of properties that define different types of constraints to form a set of feasible portfolios. Since such sets must be bounded, either explicit or implicit constraints can be imposed and several tools, such as the - estimateBoundsfunction, provide ways to ensure that your problem is properly formulated.- Although the general sufficient conditions for MAD portfolio optimization go beyond these conditions, the - PortfolioMADobject handles all these additional conditions.
PortfolioMAD Function Examples
If you create a PortfolioMAD object, p, with
                no input arguments, you can display it using
                disp:
p = PortfolioMAD; disp(p)
  PortfolioMAD with properties:
                       BuyCost: []
                      SellCost: []
                  RiskFreeRate: []
                      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: []The approaches listed provide a way to set up a portfolio optimization problem
                with the PortfolioMAD object. The custom set
                functions offer additional ways to set and modify collections of properties in the
                    PortfolioMAD object.
Using the PortfolioMAD Function for a Single-Step Setup
You can use the PortfolioMAD object to directly
                    set up a “standard” portfolio optimization problem. Given
                    scenarios of asset returns in the variable AssetScenarios,
                    this problem is completely specified as
                    follows:
m = [ 0.05; 0.1; 0.12; 0.18 ];
C = [ 0.0064 0.00408 0.00192 0; 
    0.00408 0.0289 0.0204 0.0119;
    0.00192 0.0204 0.0576 0.0336;
    0 0.0119 0.0336 0.1225 ];
m = m/12;
C = C/12;
AssetScenarios = mvnrnd(m, C, 20000);
p = PortfolioMAD('Scenarios', AssetScenarios, ...
'LowerBound', 0, 'LowerBudget', 1, 'UpperBudget', 1)
 PortfolioMAD with properties:
                       BuyCost: []
                      SellCost: []
                  RiskFreeRate: []
                      Turnover: []
                   BuyTurnover: []
                  SellTurnover: []
                  NumScenarios: 20000
                          Name: []
                     NumAssets: 4
                     AssetList: []
                      InitPort: []
                   AInequality: []
                   bInequality: []
                     AEquality: []
                     bEquality: []
                    LowerBound: [4×1 double]
                    UpperBound: []
                   LowerBudget: 1
                   UpperBudget: 1
                   GroupMatrix: []
                    LowerGroup: []
                    UpperGroup: []
                        GroupA: []
                        GroupB: []
                    LowerRatio: []
                    UpperRatio: []
                  MinNumAssets: []
                  MaxNumAssets: []
    ConditionalBudgetThreshold: []
        ConditionalUpperBudget: []
                     BoundType: []
LowerBound property value undergoes
                    scalar expansion since AssetScenarios provides the dimensions
                    of the problem.You can use dot notation with the function plotFrontier.
p.plotFrontier

Using the PortfolioMAD Function with a Sequence of Steps
An alternative way to accomplish the same task of setting up a
                    “standard” MAD portfolio optimization problem, given
                        AssetScenarios variable is:
m = [ 0.05; 0.1; 0.12; 0.18 ]; C = [ 0.0064 0.00408 0.00192 0; 0.00408 0.0289 0.0204 0.0119; 0.00192 0.0204 0.0576 0.0336; 0 0.0119 0.0336 0.1225 ]; m = m/12; C = C/12; AssetScenarios = mvnrnd(m, C, 20000); p = PortfolioMAD; p = setScenarios(p, AssetScenarios); p = PortfolioMAD(p, 'LowerBound', 0); p = PortfolioMAD(p, 'LowerBudget', 1, 'UpperBudget', 1); plotFrontier(p);

This way works because the calls to the PortfolioMAD object are in this
                    particular order. In this case, the call to initialize
                        AssetScenarios provides the dimensions for the problem.
                    If you were to do this step last, you would have to explicitly dimension the
                        LowerBound property as follows:
m = [ 0.05; 0.1; 0.12; 0.18 ]; C = [ 0.0064 0.00408 0.00192 0; 0.00408 0.0289 0.0204 0.0119; 0.00192 0.0204 0.0576 0.0336; 0 0.0119 0.0336 0.1225 ]; m = m/12; C = C/12; AssetScenarios = mvnrnd(m, C, 20000); p = PortfolioMAD; p = PortfolioMAD(p, 'LowerBound', zeros(size(m))); p = PortfolioMAD(p, 'LowerBudget', 1, 'UpperBudget', 1); p = setScenarios(p, AssetScenarios);
Note
If you did not specify the size of LowerBound but,
                            instead, input a scalar argument, the PortfolioMAD object
                            assumes that you are defining a single-asset problem and produces an
                            error at the call to set asset scenarios with four assets. 
Shortcuts for Property Names
The PortfolioMAD object has shorter
                    argument names that replace longer argument names associated with specific
                    properties of the PortfolioMAD object. For example, rather
                    than enter 'AInequality', the PortfolioMAD object accepts the
                    case-insensitive name 'ai' to set the
                        AInequality property in a PortfolioMAD
                    object. Every shorter argument name corresponds with a single property in the
                        PortfolioMAD object. The one
                    exception is the alternative argument name 'budget', which
                    signifies both the LowerBudget and
                        UpperBudget properties. When 'budget'
                    is used, then the LowerBudget and
                        UpperBudget properties are set to the same value to form
                    an equality budget constraint. 
Shortcuts for Property Names
| Shortcut Argument Name | Equivalent Argument / Property Name | 
|---|---|
| 
 | 
 | 
| 
 | 
 | 
| 
 | 
 | 
| 
 | 
 | 
| 
 | 
 | 
| 
 | 
 | 
| 
 | 
 | 
| 
 | 
 | 
| 
 | 
 | 
| 
 | 
 | 
| 
 | 
 | 
| 
 | 
 | 
For example, this call to PortfolioMAD uses these shortcuts
                    for
                    properties:
m = [ 0.05; 0.1; 0.12; 0.18 ]; C = [ 0.0064 0.00408 0.00192 0; 0.00408 0.0289 0.0204 0.0119; 0.00192 0.0204 0.0576 0.0336; 0 0.0119 0.0336 0.1225 ]; m = m/12; C = C/12; AssetScenarios = mvnrnd(m, C, 20000); p = PortfolioMAD('scenario', AssetScenarios, 'lb', 0, 'budget', 1); plotFrontier(p);
Direct Setting of Portfolio Object Properties
Although not recommended, you can set properties directly using dot notation, however no error-checking is done on your inputs:
m = [ 0.05; 0.1; 0.12; 0.18 ];
C = [ 0.0064 0.00408 0.00192 0; 
    0.00408 0.0289 0.0204 0.0119;
    0.00192 0.0204 0.0576 0.0336;
    0 0.0119 0.0336 0.1225 ];
m = m/12;
C = C/12;
AssetScenarios = mvnrnd(m, C, 20000);
p = PortfolioMAD;
p = setScenarios(p, AssetScenarios);
p.LowerBudget = 1;
p.UpperBudget = 1;
p.LowerBound = zeros(size(m));
plotFrontier(p);
Note
Scenarios cannot be assigned directly using dot notation to a
                                PortfolioMAD object. Scenarios must always be set
                            through either the PortfolioMAD object, the
                                setScenarios function,
                            or any of the scenario simulation functions.