Lecture
Lecture questions:
1. Pairwise object matching
2. Double pairwise matching
of objects
3. Ranking in the method
pairwise matching
1. Pairwise object matching
Expert assessment in pairwise comparison of
viewed objects carried out if the number of objects
even. The preference of the expert is expressed by
Preferred object numbers in the appropriate column
mapping tables as shown for example for six
objects in the table. ten.
Table 10
Results of pairwise comparison of objects by an expert
Object number ->
amount
expertise
one
2
3
four
five
6
preferences
i-th object, Ni
one
X
one
one
one
five
one
four
2
X
2
2
five
2
3
3
X
3
five
3
2
four
X
five
four
one
five
X
five
five
6
X
0
The maximum possible number of preferences for any of
considered objects, obtained from one of the experts,
equals N
m 1, where t is the number of evaluated objects.
max
Frequency of these preferences f i is as private from de
N
N
i
i
N i on N max, i.e.
F
i
N
max
m
one
Using the data table. 10, we get N max = 6 - 1 = 5, and
Tots of preferences given by an expert are equal to:
four
3
2
F
one
0.8
;
F
2
0.6;
F
3
0.4;
five
five
five
one
five
0
F
0.2;
F
1;
F
0
four
five
6
five
five
five
The total number of judgments of one expert, associated
with the number of objects of expertise t, are found from the ratio
(
1)
C
mm
2
6
(6 1)
With six objects of expertise
C
15
2
Indicator of object i determined by one expert
or weight compared with other objects are calculated
according to the formula:
n
Q
i,
j
i1
g
,
i
n
m
Q
i,
j
i
1, j
1
where n is the number of experts;
t - the number of indicators evaluated;
Qi, j is the weight coefficient of the jth index in ranks (points), which
I gave the i- th expert.
Transformed to view:
, n
F
i
Qi
m
,
i
1, j
1
C
where n is the number of experts in the group;
i
F
- frequency of preference of objects;
C - the number of possible judgments of one expert
Let the number of experts in a group be five and their estimates
about f i . are summarized in table. eleven.
Table 11
Frequency of object preferences given by experts
Object Preference Frequencies
Expert numbers
F1
F2
F3
F4
F5
F6
one
0.8
0.6
0.4
0.2
1.0
0
2
0.7
0.7
0.4
0.3
0.9
0.1
3
0.8
0.5
0.5
0.3
1.0
0.1
four
0.9
0.5
0.6
0.2
0.8
0
five
0.8
0.5
0.5
0.2
0.9
0
Total F ij
4.0
2.8
2.4
1.2
4.5
0.2
In this case, the results of the examination by definition
performance indicators are as follows:
four
2.8
2.4
Q
0.27
;
Q
0.18;
Q
0.16;
one
2
3
15
15
15
one,
2
4.5
0.2
Q
0.08;
Q
0.3;
Q
0.01
four
five
6
15
15
15
Find the sum of the weight values:
m
Q
0.270.180,160,080.30,011.0
i
i
1
This result indicates that the indicators are estimated
experts are fairly accurate. Therefore, it is obvious that the
bevy ranked number of objects considered by their
teli has the form:
№ 6 <№ 4 <№ 3 <№ 2 <№ 1 <№ 5.
2. Double pairwise mapping of objects
If the sum of the weights is significantly different
from 1, in order to increase the reliability of the assessment,
second object mapping using free
part of the pairwise mapping table. In this case, the repeated
delivery is done in a chaotic manner. In this case
each pair of objects is mapped twice. Such a complete or
double mapping of objects significantly reduces the chance
Significant errors of expert estimates. Consequently, the double
The treatment is more reliable than once.
Let, after double comparison and establishment of
respects obtained the results of evaluations of one expert
put in table. 12.
Table 12
Results of double pairwise comparison of objects by an expert
Object number ->
amount
expertise
one
2
3
four
five
6
preferences
i-th object, Ni
one
X
one
one
one
five
one
7
2
one
X
2
2
five
2
6
3
3
2
X
3
five
3
3
four
one
2
four
X
five
four
3.5
five
five
five
five
four
X
five
eight
6
one
2
3
0
five
X
0.5
Note. If the objects being mapped are the same, the inter-
then it is denoted by the number 0, but both objects are given by
0.5 preference.
Possible greatest number of preferences one
object equals
N
2 ( m 1),
and the frequency of preference
max
N
N
i
i
F
where N i is the number of preferences of the i th object
i
N
2 ( m
one)
max
that, N max - the greatest number of preferences.
According to table 12 we find that when N max = 10
7
6
3
F
0.7;
F
0.6;
F
0.3;
one
2
3
ten
ten
ten
3.5
eight
0.5
F
0.35
;
F
0.8
;
F
0.05
four
five
6
ten
ten
ten
Indicators of the estimated objects are found by the formula:
, n
F
i
Qi
m
where n is the number of experts in the group
Provided that in the case of double pairing
The number of possible judgments of one expert is equal to
C = t (t - 1). In our example, C = 6 (6 - 1) = thirty.
Therefore, the "average" indicators of the evaluated objects
these are:
The results obtained are given
estimates of actual, real pairwise comparisons
considered objects.
The sum of all indicators is:
m
Q
i
23, 23
, 2
,
, 12
, 27
0,002
0.922
i
1
Ranked number of objects compiled by estimates
first expert, such:
Q6
If, for example, the remaining four experts gave ratings
the same as listed in table. 11, then in the table. 13 will be changed
compared with the table. 11, only the first line.
Table 13
Object Preference Frequency
Object Preference Frequencies
Expert numbers
F1
F2
F3
F4
F5
F6
one
0.7
0.6
0.3
0.35
0.8
0.05
2
0.7
0.7
0.4
0.3
0.9
0.1
3
0.8
0.5
0.5
0.3
1.0
0.1
four
0.9
0.5
0.6
0.2
0.8
0
five
0.8
0.5
0.5
0.2
0.9
0
Total F ij
3.9
2.8
2.3
1.35
4.4
0.25
The final result of the examination of all experts, calculated
formula based:
, n
F
i
m
,
Qi
i
1, j
1
C
where n is the number of experts in the group
In this example it will be like this:
3.9
2.8
2.3
Q
0.26
;
Q
0.19;
Q
0.15;
one
2
3
15
15
15
1.35
4.4
0.25
Q
0.09
;
Q
0.29
;
Q
0.02
four
five
6
15
15
15
The sum of all indicators of weight or significance (quality
equal to:
m
Q
i
0.260,190,150,090,290,021
i
1
Consequently, the ranked number according to the examination
has the form:
Q6
Thus, they receive the results of the examination in case of double
Mr. pairwise comparison of evaluated objects.
3. Ranking in the pair-wise comparison method
As can be seen from the above example, the method of
method is constantly implemented in the process of applying the method
pairwise matching
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Qualimetry reliability and quality
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