[3], page 276 f.) I£ we then — for each value of 6 — multiply these
probabilities by the costs in figure 2, we obtain the expected conditional
risk for the case of a — 30 96 — see the dashed lines in figure 8. The
next step in our procedure is to take the revised probabilities for certain
states of nature, figure 7, and compute the expected weighted risk. This
is equal to the area under the dotted lines in figure 8. These lines are
thus the product of the values of the dashed lines and the line in figure
7.
The described procedure is repeated for all values of all), giving the
result of figure 10. It can be seen that an a = 85 % gives the lowest ex-
pected weighted risk.
8. Compute the Critical Value of the standard error
. If the null hypothesis is correct, f 52/692 has a distribution which
may be represented by the Chi?-distribution, see [3], p. 276. Thus we
get the critical value, C, equal to V (o Chi? =
1—a
V (25 Chi2,5/100) — 4.6 um12).
9. Compute the standard error. Decide
From our measurements we compute an expected value of the standard
error of unight weight of the instrument. This figure represents the error
population. If it is smaller than 4.6 um we decide to accept the accuracy
of the instrument. According to figure 10 the expected cost of this deci-
sion is 60 kronor.
11) In figure 9 is given an other example. There « is equal to 5 96. It can be
observed that the power of the test, i. e. the area under the right hand fully drawn
curve in figure 8 and 9, is very important for the expected effects of the possible
errors of our decision. The effects of the number of degrees of freedom on the
expected loss is also of the greatest importance, but in the way we have choosen to
handle the decision process here, this number of degrees of freedom is fixed at
this stage of the procedure.
The level of significance is equal to the hight of the right hand end of the left
hand fully drawn curve in figure 8 and 9.
12) If we had chosen the alternativ hypothesis as null hypothesis we would
have got our optimal « equal to 15 96 instead of 85 96, and the critical value 4.6
um. The expected weighted cost function would have been the mirror of figure 10.
This choice of which hypothesis to test is arbitrary, if the above method of deter-
mination of best level of significance is used.
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