Conditional Fuzzy Mean and Fuzzy Variance
The conditional B_fuzzy_mean of the takeover price with fuzzy event A as given works out as:
(1/0.54) x (100 x 0.8 x 0.7 x 0.3 + 85 x 0.4 x 1 x 0.5 + 60 x 0.7 x
0.5 x 0.2) = 70.37
and the conditional B_fuzzy_variance of the takeover price with fuzzy event A, as given, amounts to
1301.76, which is over five times as large as when you did not take the analyst’s fuzzy event as given.
Linear Regression a la Possibilities
When you see the definitions of fuzzy means and fuzzy variances, you may think that regression analysis can
also be dealt with in the realm of fuzzy logic. In this section we discuss what approach is being taken in this
regard.
First, recall what regression analysis usually means. You have a set of x− values and a corresponding set of y
values, constituting a number of sample observations on variables X and Y. In determining a linear regression
of Y on X, you are taking Y as the dependent variable, and X as the independent variable, and the linear
regression of Y on X is a linear equation expressing Y in terms of X. This equation gives you the line ‘closest’
to the sample points (the scatter diagram) in some sense. You determine the coefficients in the equation as
those values that minimize the sum of squares of deviations of the actual y values from the y values from the
line. Once the coefficients are determined, you can use the equation to estimate the value of Y for any given
value of X. People use regression equations for forecasting.
Sometimes you want to consider more than one independent variable, because you feel that there are more
than one variable which collectively can explain the variations in the value of the dependent variable. This is
your multiple regression model. Choosing your independent variables is where you show your modeling
expertise when you want to explain what happens to Y, as X varies.
In any case, you realize that it is an optimization problem as well, since the minimization of the sum of
squares of deviations is involved. Calculus is used to do this for Linear Regression. Use of calculus methods
requires certain continuity properties. When such properties are not present, then some other method has to be
used for the optimization problem.
The problem can be formulated as a linear programming problem, and techniques for solving linear
programming problems can be used. You take this route for solving a linear regression problem with fuzzy
logic.
In a previous section, you learned about possibility distributions. The linear regression problem with fuzzy
logic is referred to as a linear possibility regression problem. The model, following the description of it by
Tarano, Asai, and Sugeno, depends upon a reference function L, and fuzzy numbers in the form of ordered
pairs (a, b). We will present fuzzy numbers in the next section and then return to continue our discussion of
C++ Neural Networks and Fuzzy Logic:Preface
Conditional Fuzzy Mean and Fuzzy Variance
395
the linear possibility regression model.
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C++ Neural Networks and Fuzzy Logic:Preface
Conditional Fuzzy Mean and Fuzzy Variance
396
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