Difference between revisions of "Manuals/calci/SIGNTEST"

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(Created page with "==Feature==")
 
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==Feature==
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<div style="font-size:25px">'''SIGNTEST(Array,Median,AlternateHypothesis,LogicalValue)'''</div><br/>
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*<math>Array</math> is the set of  values to find the statistic value.
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*<math>Median</math> is the median of the array of values.
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*<math>AlternateHypothesis</math> is the alternate hypothesis of the array.
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*<math>Logicalvalue</math> is either TRUE or FALSE.
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==Description==
 +
*This function gives the test statistic of the Sign test.
 +
*The Sign Test is ued to test the Hypothesis that there is no difference between two continuous distributions X and Y.
 +
*This test is one type of the Non parametric Test.
 +
*The sign test is designed to test a hypothesis about the location of a population distribution.
 +
*The Sign test does not require the assumption that the population is normally distributed.
 +
*The normality of the distribution is doubtable, then Sign test is used to find the statitic instead of one sample T-test.
 +
*The sign test uses the sign of the differences, unlike the paired t test which uses the sign and magnitude of the differences.
 +
*To perform this test, Consider the independent pairs of sample data from the populations{(x1,y1)(x2,y2).....(xn,yn)}.
 +
*From this pair,it must be omitted with no differences(xi=yi)
 +
*The Sign test data are having the following properties:
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*1.The differences of pairs are assumed to be independent.
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*2.Each pairs comes from the same continuous population.
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*3.The values <math>X_i</math> and <math>Y_i</math> represent are ordered , so the comparisons "greater than", "less than", and "equal to" are meaningful.
 +
*The test statistic is expected to follow a binomial distribution, the standard binomial test is used to calculate significance.
 +
*The sign test can also be viewed as testing the hypothesis that the median of the differences is zero.
 +
*The sign test Hypothesis is having the following steps:
 +
*'''Step1''':State Null and Alternative Hypothesis
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*Two ways to state these: One sample or sample of differences, want to test specific value for the population median M.
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*Null: H0:p=1/2is equivalent to M = M0.
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*Alternative: <math>Ha:p<1/2</math> is equivalent to <math>M>M_0</math> or <math>Ha: p>1/2</math> is equivalent to <math>M < M_0</math> or Ha:p not equal to 1/2 is equivalent to <math>M\ne M_0</math>
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*'''Step2''':Test statistic (no data conditions needed)
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*S+ = Number of observations greater than <math>M_0</math> or Number of observations with <math>x>y</math>.
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*S− = Number of observations less than <math>M_0</math> or Number of observations with <math>x<y</math>.
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*Ties are not used, so use n = S+ + S−.
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*'''Step3''': Finding the p-value
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*Remember, p-value is:
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** Probability of observing a test statistic as large as or larger than that observed
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** in the direction that supports Ha
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** if the null hypothesis is true.
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*'''Step 4''':Use tables of the binomial distribution to find the probability of observing a value of
 +
r or higher assuming p = 1/2 and <math>n = n_0</math>.
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*If the test is one-sided, this is your p-value.
 +
*'''Step5''': If the test is a two-sided test, double the probability to obtain the p-value.

Revision as of 03:43, 16 May 2014

SIGNTEST(Array,Median,AlternateHypothesis,LogicalValue)


  • is the set of values to find the statistic value.
  • is the median of the array of values.
  • is the alternate hypothesis of the array.
  • is either TRUE or FALSE.

Description

  • This function gives the test statistic of the Sign test.
  • The Sign Test is ued to test the Hypothesis that there is no difference between two continuous distributions X and Y.
  • This test is one type of the Non parametric Test.
  • The sign test is designed to test a hypothesis about the location of a population distribution.
  • The Sign test does not require the assumption that the population is normally distributed.
  • The normality of the distribution is doubtable, then Sign test is used to find the statitic instead of one sample T-test.
  • The sign test uses the sign of the differences, unlike the paired t test which uses the sign and magnitude of the differences.
  • To perform this test, Consider the independent pairs of sample data from the populations{(x1,y1)(x2,y2).....(xn,yn)}.
  • From this pair,it must be omitted with no differences(xi=yi)
  • The Sign test data are having the following properties:
  • 1.The differences of pairs are assumed to be independent.
  • 2.Each pairs comes from the same continuous population.
  • 3.The values and represent are ordered , so the comparisons "greater than", "less than", and "equal to" are meaningful.
  • The test statistic is expected to follow a binomial distribution, the standard binomial test is used to calculate significance.
  • The sign test can also be viewed as testing the hypothesis that the median of the differences is zero.
  • The sign test Hypothesis is having the following steps:
  • Step1:State Null and Alternative Hypothesis
  • Two ways to state these: One sample or sample of differences, want to test specific value for the population median M.
  • Null: H0:p=1/2is equivalent to M = M0.
  • Alternative: is equivalent to or is equivalent to or Ha:p not equal to 1/2 is equivalent to
  • Step2:Test statistic (no data conditions needed)
  • S+ = Number of observations greater than or Number of observations with .
  • S− = Number of observations less than or Number of observations with .
  • Ties are not used, so use n = S+ + S−.
  • Step3: Finding the p-value
  • Remember, p-value is:
    • Probability of observing a test statistic as large as or larger than that observed
    • in the direction that supports Ha
    • if the null hypothesis is true.
  • Step 4:Use tables of the binomial distribution to find the probability of observing a value of

r or higher assuming p = 1/2 and .

  • If the test is one-sided, this is your p-value.
  • Step5: If the test is a two-sided test, double the probability to obtain the p-value.