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Calculates the values of the left tail of the F distribution.

F.DIST(Number; DegreesFreedom1; DegreesFreedom2 [; Cumulative])

Number is the value for which the F distribution is to be calculated.

degreesFreedom1 is the degrees of freedom in the numerator in the F distribution.

degreesFreedom2 is the degrees of freedom in the denominator in the F distribution.

Cumulative = 0 or False calculates the density function Cumulative = 1 or True calculates the distribution.

=F.DIST(0.8;8;12;0) yields 0.7095282499.

=F.DIST(0.8;8;12;1) yields 0.3856603563.

COM.MICROSOFT.F.DIST

Calculates the values of an F-distribution.

FDIST(Number; DegreesFreedom1; DegreesFreedom2)

Number is the value for which the F-distribution is to be calculated.

DegreesFreedom1 is the degrees of freedom in the numerator in the F-distribution.

DegreesFreedom2 is the degrees of freedom in the denominator in the F-distribution.

=FDIST(0.8;8;12) yields 0.61.

Calculates the values of the right tail of the F distribution.

F.DIST.RT(Number; DegreesFreedom1; DegreesFreedom2)

Number is the value for which the F distribution is to be calculated.

degreesFreedom1 is the degrees of freedom in the numerator in the F distribution.

degreesFreedom2 is the degrees of freedom in the denominator in the F distribution.

=F.DIST.RT(0.8;8;12) yields 0.6143396437.

COM.MICROSOFT.F.DIST.RT

Returns the inverse of the cumulative F distribution. The F distribution is used for F tests in order to set the relation between two differing data sets.

F.INV(Number; DegreesFreedom1; DegreesFreedom2)

Number is probability value for which the inverse F distribution is to be calculated.

DegreesFreedom1 is the number of degrees of freedom in the numerator of the F distribution.

DegreesFreedom2 is the number of degrees of freedom in the denominator of the F distribution.

=F.INV(0.5;5;10) yields 0.9319331609.

COM.MICROSOFT.F.INV

Returns the inverse of the F-distribution. The F-distribution is used for F-tests in order to set the relation between two differing data sets.

FINV(Number; DegreesFreedom1; DegreesFreedom2)

Number is the probability value for which the inverse F-distribution is to be calculated.

DegreesFreedom1 is the number of degrees of freedom in the numerator of the F-distribution.

DegreesFreedom2 is the number of degrees of freedom in the denominator of the F-distribution.

=FINV(0.5;5;10) yields 0.93.

Returns the inverse right tail of the F distribution.

F.INV.RT(Number; DegreesFreedom1; DegreesFreedom2)

Number is probability value for which the inverse F distribution is to be calculated.

DegreesFreedom1 is the number of degrees of freedom in the numerator of the F distribution.

DegreesFreedom2 is the number of degrees of freedom in the denominator of the F distribution.

=F.INV.RT(0.5;5;10) yields 0.9319331609.

COM.MICROSOFT.F.INV.RT

Returns the Fisher transformation for x and creates a function close to a normal distribution.

FISHER(Number)

Number is the value to be transformed.

=FISHER(0.5) yields 0.55.

Returns the inverse of the Fisher transformation for x and creates a function close to a normal distribution.

FISHERINV(Number)

Number is the value that is to undergo reverse-transformation.

=FISHERINV(0.5) yields 0.46.

Returns the result of an F test.

F.TEST(Data1; Data2)

Data1 is the first record array.

Data2 is the second record array.

=F.TEST(A1:A30;B1:B12) calculates whether the two data sets are different in their variance and returns the probability that both sets could have come from the same total population.

COM.MICROSOFT.F.TEST

Returns the result of an F-test.

FTEST(Data1; Data2)

Data1 is the first record array.

Data2 is the second record array.

=FTEST(A1:A30;B1:B12) calculates whether the two data sets are different in their variance and returns the probability that both sets could have come from the same total population.

Returns the Gamma function value. Note that GAMMAINV is not the inverse of GAMMA, but of GAMMADIST.

GAMMA(Number)

Number is the number for which the Gamma function value is to be calculated.

Returns the values of a Gamma distribution.

The inverse function is GAMMAINV or GAMMA.INV.

This function is similar to GAMMADIST and was introduced for interoperability with other office suites.

GAMMA.DIST(Number; Alpha; Beta; Cumulative)

Number is the value for which the Gamma distribution is to be calculated.

Alpha is the parameter Alpha of the Gamma distribution.

Beta is the parameter Beta of the Gamma distribution.

Cumulative = 0 or False calculates the probability density function; Cumulative = 1, True, or any other value calculates the cumulative distribution function.

=GAMMA.DIST(2;1;1;1) yields 0.86.

COM.MICROSOFT.GAMMA.DIST

Returns the values of a Gamma distribution.

The inverse function is GAMMAINV.

GAMMADIST(Number; Alpha; Beta [; C])

Number is the value for which the Gamma distribution is to be calculated.

Alpha is the parameter Alpha of the Gamma distribution.

Beta is the parameter Beta of the Gamma distribution.

C (optional) = 0 or False calculates the density function, C = 1 or True calculates the distribution.

=GAMMADIST(2;1;1;1) yields 0.86.

Returns the inverse of the Gamma cumulative distribution GAMMADIST. This function allows you to search for variables with different distribution.

This function is identical to GAMMAINV and was introduced for interoperability with other office suites.

GAMMA.INV(Number; Alpha; Beta)

Number is the probability value for which the inverse Gamma distribution is to be calculated.

Alpha is the parameter Alpha of the Gamma distribution.

Beta is the parameter Beta of the Gamma distribution.

=GAMMA.INV(0.8;1;1) yields 1.61.

COM.MICROSOFT.GAMMA.INV

Returns the inverse of the Gamma cumulative distribution GAMMADIST. This function allows you to search for variables with different distribution.

GAMMAINV(Number; Alpha; Beta)

Number is the probability value for which the inverse Gamma distribution is to be calculated.

Alpha is the parameter Alpha of the Gamma distribution.

Beta is the parameter Beta of the Gamma distribution.

=GAMMAINV(0.8;1;1) yields 1.61.

Returns the natural logarithm of the Gamma function: G(x).

GAMMALN(Number)

Number is the value for which the natural logarithm of the Gamma function is to be calculated.

=GAMMALN(2) yields 0.

Returns the natural logarithm of the Gamma function: G(x).

GAMMALN.PRECISE(Number)

Number is the value for which the natural logarithm of the Gamma function is to be calculated.

=GAMMALN.PRECISE(2) yields 0.

COM.MICROSOFT.GAMMALN.PRECISE

Returns the standard normal cumulative distribution.

It is GAUSS(x)=NORMSDIST(x)-0.5

GAUSS(Number)

Number is the value for which the value of the standard normal distribution is to be calculated.

=GAUSS(0.19) = 0.08

=GAUSS(0.0375) = 0.01

Returns the geometric mean of a sample.

GEOMEAN(Number 1 [; Number 2 [; â€¦ [; Number 255]]])

=GEOMEAN(23;46;69) = 41.79. The geometric mean value of this random sample is therefore 41.79.

Returns the harmonic mean of a data set.

HARMEAN(Number 1 [; Number 2 [; â€¦ [; Number 255]]])

=HARMEAN(23;46;69) = 37.64. The harmonic mean of this random sample is thus 37.64

Returns the hypergeometric distribution.

HYPGEOM.DIST(X; NSample; Successes; NPopulation; Cumulative)

X is the number of results achieved in the random sample.

NSample is the size of the random sample.

Successes is the number of possible results in the total population.

NPopulation is the size of the total population.

Cumulative : 0 or False calculates the probability density function. Other values or True calculates the cumulative distribution function.

=HYPGEOM.DIST(2;2;90;100;0) yields 0.8090909091. If 90 out of 100 pieces of buttered toast fall from the table and hit the floor with the buttered side first, then if 2 pieces of buttered toast are dropped from the table, the probability is 81%, that both will strike buttered side first.

=HYPGEOM.DIST(2;2;90;100;1) yields 1.

COM.MICROSOFT.HYPGEOM.DIST

Returns the hypergeometric distribution.

HYPGEOMDIST(X; NSample; Successes; NPopulation [; Cumulative])

X is the number of results achieved in the random sample.

NSample is the size of the random sample.

Successes is the number of possible results in the total population.

NPopulation is the size of the total population.

Cumulative (optional) specifies whether to calculate the probability mass function (FALSE or 0) or the cumulative distribution function (any other value). The probability mass function is the default if no value is specified for this parameter.

=HYPGEOMDIST(2;2;90;100) yields 0.81. If 90 out of 100 pieces of buttered toast fall from the table and land on the floor buttered side down, then if 2 pieces of buttered toast are dropped from the table, the probability is 81% that both will land buttered side down.

Returns the mean of a data set without the Alpha percent of data at the margins.

TRIMMEAN(Data; Alpha)

Data is the array of data in the sample.

Alpha is the percentage of the marginal data that will not be taken into consideration.

=TRIMMEAN(A1:A50; 0.1) calculates the mean value of numbers in A1:A50, excluding the 5 percent of values representing the highest values and the 5 percent of values representing the lowest values. The percentage numbers refer to the amount of the untrimmed mean value, not to the number of summands.

Calculates the probability of observing a z-statistic greater than the one computed based on a sample.

Z.TEST(Data; mu [; Sigma])

Data is the given sample, drawn from a normally distributed population.

mu is the known mean of the population.

Sigma (optional) is the known standard deviation of the population. If omitted, the standard deviation of the given sample is used.

=Z.TEST(A2:A20; 9; 2) returns the result of a z-test on a sample A2:A20 drawn from a population with known mean 9 and known standard deviation 2.

COM.MICROSOFT.Z.TEST

Calculates the probability of observing a z-statistic greater than the one computed based on a sample.

ZTEST(Data; mu [; Sigma])

Data is the given sample, drawn from a normally distributed population.

mu is the known mean of the population.

Sigma (optional) is the known standard deviation of the population. If omitted, the standard deviation of the given sample is used.

See also the Wiki page.