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. 2014 Dec 10;3:722. doi: 10.1186/2193-1801-3-722

Construction of the membership surface of imprecise vector

Dhruba Das 1, Hemanta K Baruah 2,
PMCID: PMC4447727  PMID: 26034696

Abstract

In this article, a method has been developed to construct the membership surface of imprecise vector based on Randomness-Impreciseness Consistency Principle. The Randomness-Impreciseness Consistency Principle leads to define a normal law of impreciseness using two different laws of randomness. The Dubois-Prade left and right reference functions of an imprecise number are distribution function and complementary distribution function respectively. In this article, based on the Randomness-Impreciseness Consistency Principle we have successfully obtained the membership surface of imprecise vector and demonstrated with the help of numerical examples.

Keywords: Membership function, Imprecise vector, Dubois-Prade left and right reference functions, Distribution function, Density function

1. Introduction

Dubois and Prade (Kaufmann and Gupta 1984) have defined a fuzzy number X = [a, b, c] with membership function

graphic file with name 40064_2014_1585_Equa_HTML.gif

L(x) being a continuous non-decreasing function in the interval [a, b], and R(x) being a continuous non-increasing function in the interval [b, c], with L(a) = R(c) = 0 and L(b) = R(b) = 1. Dubois and Prade named L(x) as left reference function and R(x) as right reference function of the concerned fuzzy number. A continuous non-decreasing function of this type is also called a distribution function with reference to a Lebesgue-Stieltjes measure (De Barra 1987).

In this article, on the simple assumption that the Dubois-Prade left reference function is a distribution function, and similarly the Dubois-Prade right reference function is a complementary distribution function, we are going to demonstrate the method of obtaining the membership surface of an imprecise vector. Here the term imprecise is used instead of fuzzy because, in the Zadehian theory of fuzzy sets there are two flaws (Baruah 2011a, Baruah 2012). First, it had been accepted that the fuzzy sets do not in any way conform to the classical measure theoretic formalisms. Secondly, it had been agreed upon that given a fuzzy set neither its intersection with its complement is the null set, nor its union with the complement is the universal set. The Zadehian definition of complement of a fuzzy set is defective (Baruah 1999). In the Zadehian definition of complementation, fuzzy membership function and fuzzy membership value have been taken to be the same, and that is where the defect lies. Indeed fuzzy membership function and fuzzy membership value are two different things for the complement of a normal fuzzy set (Baruah 2011a). Instead of saying (Baruah 2011b; Baruah 2011c) that the mathematics of fuzziness has been incorrectly explained, Baruah has started the whole process anew, introducing the theory of imprecise sets, which might initially look similar to the theory of fuzzy sets.

2. The mathematical explanation of imprecise vector

Baruah (2011b) has successfully shown the construction of a normal imprecise number with the help of the operation of superimposition of real intervals. Das et al. (2013) has shown the construction of normal imprecise number using data from earthquake waveform and has studied the pattern of the membership curve of the waveform. In this article, instead of superimposing real intervals, it will be discussed about how to obtain the membership surface of a two dimensional imprecise vector if we superimpose some plates in the two dimensional plane. In Figure 1 two plates are superimposed restricting the condition that the intersection of the two plates is not void.

Figure 1.

Figure 1

Superimposition of two plates.

We can easily visualize in Figure 1, that the probability of the shaded area is 1 and the probability for the unshaded area of the plates will be ½. But if the number of superimposition is large then it will be very difficult to obtain the probabilities by simply observing the imposition of the plates. So, in that situation a different technique can be used to obtain the probabilities when the number of operation of superimposition is very large. At first, it is discussed, about the operation of superimposition in the two dimensional case when the variable X is imprecise but Y is not imprecise.

The operation of superimposition

The operation of superimposition of two real intervals [(a1, 0), (b1, 0)] and [(a2, 0), (b2, 0)] as

graphic file with name 40064_2014_1585_Equb_HTML.gif

where (a(1), 0) = min[(a1, 0), (a2, 0)] , (a(2), 0) = max[(a1, 0), (a2, 0)] , (b(1), 0) = min[(b1, 0), (b2, 0)] and (b(2), 0) = max[(b1, 0), (b2, 0)]. Here we have assumed without any loss of generality that [(a1, 0), (b1, 0)] ∩ [(a2, 0), (b2, 0)] is not void or in other words that max[(ai, 0)] ≤ min[(bi, 0)], i = 1, 2.

For the three intervals Inline graphic and Inline graphic all with elements with a constant level of partial presence equal to 1/3 everywhere (See Figures 2, 3 and 4), we shall have

Figure 2.

Figure 2

Superimposition of Inline graphic and Inline graphic .

Figure 3.

Figure 3

Cumulative and complementary cumulative distribution functions.

Figure 4.

Figure 4

Discrete Dubois- Prade left and right reference functions.

graphic file with name 40064_2014_1585_Equc_HTML.gif

where, for example Inline graphic represents the interval [(y(1), 0), (y(2), 0)] with level of partial presence 2/3 for all elements in the entire interval, (x(1), 0), (x(2), 0), (x(3), 0) be the values of (x1, 0), (x2, 0), (x3, 0) arranged in increasing order of magnitude, and similarly (y(1), 0), (y(2), 0), (y(3), 0) be the values of (y1, 0), (y2, 0), (y3, 0) arranged in increasing order of magnitude again. We here presumed that [(x1, 0), (y1, 0)] ∩ [(x2, 0), (y2, 0)] ∩ [(x3, 0), (y3, 0)] is not void. It can be seen that for n imprecise intervals Inline graphic, all with membership value are equal to Inline graphic everywhere, we shall have

graphic file with name 40064_2014_1585_Equd_HTML.gif

where for example Inline graphic represents the uniformly imprecise interval [(b(1), 0), (b(2), 0)] with membership Inline graphic in the entire interval, (a(1), 0), (a(2), 0), …, (a(n), 0) be the values of (a1, 0), (a2, 0), …, (an, 0) arranged in increasing order of magnitude and (b(1), 0), (b(2), 0), …, (b(n), 0) be the values of (b1, 0), (b2, 0), …, (bn, 0) arranged in increasing order of magnitude. Thus for the imprecise intervals Inline graphic all with uniform membership Inline graphic, the values of membership of the superimposed imprecise intervals are Inline graphic and Inline graphic. These values of membership considered in two halves as

graphic file with name 40064_2014_1585_Eque_HTML.gif

and

graphic file with name 40064_2014_1585_Equf_HTML.gif

would suggest that they can define an empirical distribution and a complementary empirical distribution on (x11, 0), (x12, 0), …, (x1n, 0) and (x21, 0), (x22, 0), …, (x2n, 0) respectively. In other words, for realizations of the values of (x(11), 0), (x(12), 0), …, (x(1n), 0) are in increasing order and of (x(21), 0), (x(22), 0), …, (x(2n), 0) again are in increasing order, we can see that if we define

graphic file with name 40064_2014_1585_Equg_HTML.gif
graphic file with name 40064_2014_1585_Equh_HTML.gif

then the Glivenko – Cantelli Lemma on Order Statistics assures that

graphic file with name 40064_2014_1585_Equi_HTML.gif

where ∏1[(a, 0), (x1, 0)], (a, 0) ≤ (x1, 0) ≤ (b, 0) and ψ2(x2, 0), (b, 0) ≤ (x2, 0) ≤ (c, 0) ψ2(x2, 0), (b, 0) ≤ (x2, 0) ≤ (c, 0) are two probability distributions. Thus

graphic file with name 40064_2014_1585_Equj_HTML.gif

where

graphic file with name 40064_2014_1585_Equk_HTML.gif

Thus, if φ1(x, 0) and (1 - φ2(x, 0)) are two independent probability distribution functions defined in [(α, 0), (β, 0)] and [(β, 0), (γ, 0)] respectively, then the membership surface of a normal imprecise vector N = [(α, 0), (β, 0), (γ, 0)] can be expressed as

graphic file with name 40064_2014_1585_Equl_HTML.gif

or

graphic file with name 40064_2014_1585_Equm_HTML.gif

Here, in the case of two dimensions we have considered that the value of y is zero. But instead of zero if we consider any precise value of y, then in the above membership surface only the value of y will be changed.

Similarly, we can also show that, the membership surface of a normal imprecise vector N = [(0, α), (0, β), (0, γ)] can be expressed as

graphic file with name 40064_2014_1585_Equn_HTML.gif
graphic file with name 40064_2014_1585_Equo_HTML.gif

Here, we have also considered the value of x is zero. But instead of zero if we consider any precise value of x, then in the above membership surface only the value of x will be changed.

Now, we are going to discuss about the method how to obtain the membership surface of the vector (X, Y), where the variables x and y both are imprecise.

Consider an imprecise vector (X, Y), where X and Y are imprecise represented by X = [a, b, c] and Y = [p, q, r] respectively. Assume that X and Y are independently distributed. Let the membership function of X and Y be μX|Y(x, y) and μY|X(x, y) as mentioned below

graphic file with name 40064_2014_1585_Equp_HTML.gif

and

graphic file with name 40064_2014_1585_Equq_HTML.gif

Then the membership surface of the imprecise vector (X, Y) can be obtained as follows

graphic file with name 40064_2014_1585_Equr_HTML.gif

For a three dimensional imprecise vector (X, Y, Z), where the membership functions of X, Y and Z are as mentioned below:

graphic file with name 40064_2014_1585_Equs_HTML.gif
graphic file with name 40064_2014_1585_Equt_HTML.gif
graphic file with name 40064_2014_1585_Equu_HTML.gif

Then the membership surface of the imprecise vector (X, Y, Z) will be as shown below:

graphic file with name 40064_2014_1585_Equv_HTML.gif

3. Numerical Examples

Example 1. Let (X, Y) be an imprecise vector, where both X and Y are imprecise with imprecise membership functions

graphic file with name 40064_2014_1585_Equw_HTML.gif

and

graphic file with name 40064_2014_1585_Equx_HTML.gif

According to Randomness- Impreciseness Consistency Principle the left reference functions L(x) = x - 1; 1 ≤ x ≤ 2, 3 ≤ y ≤ 6 and Inline graphic, are distribution functions and the right reference functions Inline graphic and R(y) = 6 - y; 5 ≤ y ≤ 6, 1 ≤ x ≤ 4 are complementary distribution functions.

Now, according to our standpoint the membership surface μX,Y(x, y) of the imprecise vector (X, Y) can be obtained as follows

graphic file with name 40064_2014_1585_Equy_HTML.gif

The figures of the membership surfaces of L(x)L(y), L(x)R(y), R(x)L(y) and R(x)R(y) are given in Figures 5, 6, 7 and 8 respectively. The membership surface of the imprecise vector (X, Y) is shown in Figure 9.

Figure 5.

Figure 5

Membership surface of L(x)L(y) .

Figure 6.

Figure 6

Membership surface of L(x)R(y) .

Figure 7.

Figure 7

Membership surface of R(x)L(y) .

Figure 8.

Figure 8

Membership surface of R(x)R(y) .

Figure 9.

Figure 9

Membership surface of μ X,Y ( x,y ) .

Now, to get the surface section of the membership surface if we cut the membership surface of the imprecise vector, which is in the two dimensions is nothing but the membership function of a subnormal imprecise number. If we cut the membership surface through the point on which the presence level is one, which is in the two dimensions is nothing but the membership function of a normal imprecise number.

Example 2. Let (X, Y, Z) be an imprecise vector, where X, Y and Z are imprecise with imprecise membership functions

graphic file with name 40064_2014_1585_Equz_HTML.gif
graphic file with name 40064_2014_1585_Equaa_HTML.gif

and

graphic file with name 40064_2014_1585_Equab_HTML.gif

Now the membership surface μX,Y,Z(x, y, z) of the imprecise vector (X, Y, Z) can be obtained as follows

graphic file with name 40064_2014_1585_Equac_HTML.gif

4. Conclusion

In this article, the method has been shown successfully how to obtain the membership surface of the imprecise vector based on the Randomness- Impreciseness Consistency Principle. Here nothing has been done heuristically. The theory has been successfully developed and demonstrated with the help of numerical examples. Here the method of construction of the membership surface has been studied only for two and three dimensional vectors, but with the help of this method one can easily obtain the membership surface of n-dimensional vector too.

Footnotes

Competing interests

The authors declare that they have no competing interests.

Authors’ contribution

HKB has given the idea about the construction of the membership surface of imprecise vector and based on his idea DD has developed the theory. Both authors read and approved the final manuscript.

Contributor Information

Dhruba Das, Email: dhrubadas16@gmail.com.

Hemanta K Baruah, Email: hemanta_bh@yahoo.com.

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