Provided by: tcllib_1.15-dfsg-2_all bug

NAME

       math::statistics - Basic statistical functions and procedures

SYNOPSIS

       package require Tcl  8.4

       package require math::statistics  0.8

       ::math::statistics::mean data

       ::math::statistics::min data

       ::math::statistics::max data

       ::math::statistics::number data

       ::math::statistics::stdev data

       ::math::statistics::var data

       ::math::statistics::pstdev data

       ::math::statistics::pvar data

       ::math::statistics::median data

       ::math::statistics::basic-stats data

       ::math::statistics::histogram limits values

       ::math::statistics::corr data1 data2

       ::math::statistics::interval-mean-stdev data confidence

       ::math::statistics::t-test-mean data est_mean est_stdev confidence

       ::math::statistics::test-normal data confidence

       ::math::statistics::lillieforsFit data

       ::math::statistics::quantiles data confidence

       ::math::statistics::quantiles limits counts confidence

       ::math::statistics::autocorr data

       ::math::statistics::crosscorr data1 data2

       ::math::statistics::mean-histogram-limits mean stdev number

       ::math::statistics::minmax-histogram-limits min max number

       ::math::statistics::linear-model xdata ydata intercept

       ::math::statistics::linear-residuals xdata ydata intercept

       ::math::statistics::test-2x2 n11 n21 n12 n22

       ::math::statistics::print-2x2 n11 n21 n12 n22

       ::math::statistics::control-xbar data ?nsamples?

       ::math::statistics::control-Rchart data ?nsamples?

       ::math::statistics::test-xbar control data

       ::math::statistics::test-Rchart control data

       ::math::statistics::tstat dof ?alpha?

       ::math::statistics::mv-wls wt1 weights_and_values

       ::math::statistics::mv-ols values

       ::math::statistics::pdf-normal mean stdev value

       ::math::statistics::pdf-exponential mean value

       ::math::statistics::pdf-uniform xmin xmax value

       ::math::statistics::pdf-gamma alpha beta value

       ::math::statistics::pdf-poisson mu k

       ::math::statistics::pdf-chisquare df value

       ::math::statistics::pdf-student-t df value

       ::math::statistics::pdf-beta a b value

       ::math::statistics::cdf-normal mean stdev value

       ::math::statistics::cdf-exponential mean value

       ::math::statistics::cdf-uniform xmin xmax value

       ::math::statistics::cdf-students-t degrees value

       ::math::statistics::cdf-gamma alpha beta value

       ::math::statistics::cdf-poisson mu k

       ::math::statistics::cdf-beta a b value

       ::math::statistics::random-normal mean stdev number

       ::math::statistics::random-exponential mean number

       ::math::statistics::random-uniform xmin xmax number

       ::math::statistics::random-gamma alpha beta number

       ::math::statistics::random-chisquare df number

       ::math::statistics::random-student-t df number

       ::math::statistics::random-beta a b number

       ::math::statistics::histogram-uniform xmin xmax limits number

       ::math::statistics::incompleteGamma x p ?tol?

       ::math::statistics::incompleteBeta a b x ?tol?

       ::math::statistics::filter varname data expression

       ::math::statistics::map varname data expression

       ::math::statistics::samplescount varname list expression

       ::math::statistics::subdivide

       ::math::statistics::test-Kruskal-Wallis confidence args

       ::math::statistics::analyse-Kruskal-Wallis args

       ::math::statistics::group-rank args

       ::math::statistics::test-Wilcoxon sample_a sample_b

       ::math::statistics::spearman-rank sample_a sample_b

       ::math::statistics::spearman-rank-extended sample_a sample_b

       ::math::statistics::plot-scale canvas xmin xmax ymin ymax

       ::math::statistics::plot-xydata canvas xdata ydata tag

       ::math::statistics::plot-xyline canvas xdata ydata tag

       ::math::statistics::plot-tdata canvas tdata tag

       ::math::statistics::plot-tline canvas tdata tag

       ::math::statistics::plot-histogram canvas counts limits tag

_________________________________________________________________

DESCRIPTION

       The  math::statistics package contains functions and procedures for basic statistical data
       analysis, such as:

       •      Descriptive statistical parameters (mean, minimum, maximum, standard deviation)

       •      Estimates of the distribution in the form of histograms and quantiles

       •      Basic testing of hypotheses

       •      Probability and cumulative density functions

       It is meant to help in  developing  data  analysis  applications  or  doing  ad  hoc  data
       analysis,  it  is  not in itself a full application, nor is it intended to rival with full
       (non-)commercial statistical packages.

       The purpose of this document is to describe the implemented procedures  and  provide  some
       examples of their usage. As there is ample literature on the algorithms involved, we refer
       to relevant text books for more explanations.  The package contains a fairly large  number
       of  public  procedures.  They  can  be  distinguished  in  three sets: general procedures,
       procedures that deal with specific statistical distributions, list procedures to select or
       transform  data  and  simple  plotting procedures (these require Tk).  Note: The data that
       need to be analyzed are always contained in a simple list. Missing values are  represented
       as empty list elements.

GENERAL PROCEDURES

       The general statistical procedures are:

       ::math::statistics::mean data
              Determine the mean value of the given list of data.

              list data
                     - List of data

       ::math::statistics::min data
              Determine the minimum value of the given list of data.

              list data
                     - List of data

       ::math::statistics::max data
              Determine the maximum value of the given list of data.

              list data
                     - List of data

       ::math::statistics::number data
              Determine the number of non-missing data in the given list

              list data
                     - List of data

       ::math::statistics::stdev data
              Determine the sample standard deviation of the data in the given list

              list data
                     - List of data

       ::math::statistics::var data
              Determine the sample variance of the data in the given list

              list data
                     - List of data

       ::math::statistics::pstdev data
              Determine the population standard deviation of the data in the given list

              list data
                     - List of data

       ::math::statistics::pvar data
              Determine the population variance of the data in the given list

              list data
                     - List of data

       ::math::statistics::median data
              Determine the median of the data in the given list (Note that this requires sorting
              the data, which may be a costly operation)

              list data
                     - List of data

       ::math::statistics::basic-stats data
              Determine a list of all the descriptive parameters: mean, minimum, maximum,  number
              of  data, sample standard deviation, sample variance, population standard deviation
              and population variance.

              (This routine is called whenever either or all of the basic statistical  parameters
              are  required.  Hence  all  calculations  are  done  and  the  relevant  values are
              returned.)

              list data
                     - List of data

       ::math::statistics::histogram limits values
              Determine histogram information  for  the  given  list  of  data.  Returns  a  list
              consisting  of  the  number  of  values  that  fall into each interval.  (The first
              interval consists of all values lower than  the  first  limit,  the  last  interval
              consists  of  all  values  greater than the last limit.  There is one more interval
              than there are limits.)

              list limits
                     - List of upper limits  (in  ascending  order)  for  the  intervals  of  the
                     histogram.

              list values
                     - List of data

       ::math::statistics::corr data1 data2
              Determine the correlation coefficient between two sets of data.

              list data1
                     - First list of data

              list data2
                     - Second list of data

       ::math::statistics::interval-mean-stdev data confidence
              Return  the  interval  containing  the  mean  value and one containing the standard
              deviation with a certain level of confidence (assuming a normal distribution)

              list data
                     - List of raw data values (small sample)

              float confidence
                     - Confidence level (0.95 or 0.99 for instance)

       ::math::statistics::t-test-mean data est_mean est_stdev confidence
              Test whether the mean value of a sample is in accordance with the estimated  normal
              distribution with a certain level of confidence.  Returns 1 if the test succeeds or
              0 if the mean is unlikely to fit the given distribution.

              list data
                     - List of raw data values (small sample)

              float est_mean
                     - Estimated mean of the distribution

              float est_stdev
                     - Estimated stdev of the distribution

              float confidence
                     - Confidence level (0.95 or 0.99 for instance)

       ::math::statistics::test-normal data confidence
              Test whether the given data follow a normal distribution with a  certain  level  of
              confidence.   Returns  1  if  the data are normally distributed within the level of
              confidence, returns 0 if not. The underlying test is the Lilliefors test.

              list data
                     - List of raw data values

              float confidence
                     - Confidence level (one of 0.80, 0.90, 0.95 or 0.99)

       ::math::statistics::lillieforsFit data
              Returns the goodness of fit to a normal distribution according to  Lilliefors.  The
              higher  the  number,  the more likely the data are indeed normally distributed. The
              test requires at least five data points.

              list data
                     - List of raw data values

       ::math::statistics::quantiles data confidence
              Return the quantiles for a given set of data

              list data
                     - List of raw data values

              float confidence
                     - Confidence level (0.95 or 0.99 for instance)

       ::math::statistics::quantiles limits counts confidence
              Return the quantiles based on histogram information (alternative to the  call  with
              two arguments)

              list limits
                     - List of upper limits from histogram

              list counts
                     - List of counts for for each interval in histogram

              float confidence
                     -  Confidence level (0.95 or 0.99 for instance)

       ::math::statistics::autocorr data
              Return  the  autocorrelation  function  as  a list of values (assuming equidistance
              between samples, about 1/2 of the number of raw data)

              The correlation is determined in such a way that the first value is  always  1  and
              all  others  are  equal  to  or  smaller than 1. The number of values involved will
              diminish as the "time" (the index in the list of returned values) increases

              list data
                     - Raw data for which the autocorrelation must be determined

       ::math::statistics::crosscorr data1 data2
              Return the cross-correlation function as a list of  values  (assuming  equidistance
              between samples, about 1/2 of the number of raw data)

              The  correlation  is determined in such a way that the values can never exceed 1 in
              magnitude. The number of values involved will diminish as the "time" (the index  in
              the list of returned values) increases.

              list data1
                     - First list of data

              list data2
                     - Second list of data

       ::math::statistics::mean-histogram-limits mean stdev number
              Determine  reasonable  limits  based on mean and standard deviation for a histogram
              Convenience function - the result is suitable for the histogram function.

              float mean
                     - Mean of the data

              float stdev
                     - Standard deviation

              int number
                     - Number of limits to generate (defaults to 8)

       ::math::statistics::minmax-histogram-limits min max number
              Determine reasonable limits based on a minimum and maximum for a histogram

              Convenience function - the result is suitable for the histogram function.

              float min
                     - Expected minimum

              float max
                     - Expected maximum

              int number
                     - Number of limits to generate (defaults to 8)

       ::math::statistics::linear-model xdata ydata intercept
              Determine the coefficients for a linear regression between two series of data  (the
              model: Y = A + B*X). Returns a list of parameters describing the fit

              list xdata
                     - List of independent data

              list ydata
                     - List of dependent data to be fitted

              boolean intercept
                     - (Optional) compute the intercept (1, default) or fit to a line through the
                     origin (0)

                     The result consists of the following list:

                     •      (Estimate of) Intercept A

                     •      (Estimate of) Slope B

                     •      Standard deviation of Y relative to fit

                     •      Correlation coefficient R2

                     •      Number of degrees of freedom df

                     •      Standard error of the intercept A

                     •      Significance level of A

                     •      Standard error of the slope B

                     •      Significance level of B

       ::math::statistics::linear-residuals xdata ydata intercept
              Determine the difference between actual data and predicted from the linear model.

              Returns a list of the differences between the actual data and the predicted values.

              list xdata
                     - List of independent data

              list ydata
                     - List of dependent data to be fitted

              boolean intercept
                     - (Optional) compute the intercept (1, default) or fit to a line through the
                     origin (0)

       ::math::statistics::test-2x2 n11 n21 n12 n22
              Determine  if  two  set  of  samples,  each  from  a  binomial distribution, differ
              significantly or not (implying a different parameter).

              Returns  the  "chi-square"  value,  which  can  be  used  to  the   determine   the
              significance.

              int n11
                     - Number of outcomes with the first value from the first sample.

              int n21
                     - Number of outcomes with the first value from the second sample.

              int n12
                     - Number of outcomes with the second value from the first sample.

              int n22
                     - Number of outcomes with the second value from the second sample.

       ::math::statistics::print-2x2 n11 n21 n12 n22
              Determine  if  two  set  of  samples,  each  from  a  binomial distribution, differ
              significantly or not (implying a different parameter).

              Returns a short report, useful in an interactive session.

              int n11
                     - Number of outcomes with the first value from the first sample.

              int n21
                     - Number of outcomes with the first value from the second sample.

              int n12
                     - Number of outcomes with the second value from the first sample.

              int n22
                     - Number of outcomes with the second value from the second sample.

       ::math::statistics::control-xbar data ?nsamples?
              Determine the control limits for  an  xbar  chart.  The  number  of  data  in  each
              subsample defaults to 4. At least 20 subsamples are required.

              Returns  the  mean,  the  lower  limit,  the upper limit and the number of data per
              subsample.

              list data
                     - List of observed data

              int nsamples
                     - Number of data per subsample

       ::math::statistics::control-Rchart data ?nsamples?
              Determine the control limits for an R chart. The number of data in  each  subsample
              (nsamples) defaults to 4. At least 20 subsamples are required.

              Returns the mean range, the lower limit, the upper limit and the number of data per
              subsample.

              list data
                     - List of observed data

              int nsamples
                     - Number of data per subsample

       ::math::statistics::test-xbar control data
              Determine if the data exceed the control limits for the xbar chart.

              Returns a list of subsamples (their indices) that indeed violate the limits.

              list control
                     - Control limits as returned by the "control-xbar" procedure

              list data
                     - List of observed data

       ::math::statistics::test-Rchart control data
              Determine if the data exceed the control limits for the R chart.

              Returns a list of subsamples (their indices) that indeed violate the limits.

              list control
                     - Control limits as returned by the "control-Rchart" procedure

              list data
                     - List of observed data

MULTIVARIATE LINEAR REGRESSION

       Besides the linear regression with a single independent variable, the  statistics  package
       provides  two procedures for doing ordinary least squares (OLS) and weighted least squares
       (WLS) linear regression with several variables. They were written by Eric Kemp-Benedict.

       In addition to these two, it provides a procedure (tstat) for calculating the value of the
       t-statistic for the specified number of degrees of freedom that is required to demonstrate
       a given level of significance.

       Note: These procedures depend on the math::linearalgebra package.

       Description of the procedures

       ::math::statistics::tstat dof ?alpha?
              Returns the value of the t-distribution t* satisfying
              P(t*)  =  1 - alpha/2
              P(-t*) =  alpha/2

              for the number of degrees of freedom dof.

              Given a sample of normally-distributed data x, with an estimate xbar for  the  mean
              and sbar for the standard deviation, the alpha confidence interval for the estimate
              of the mean can be calculated as
              ( xbar - t* sbar , xbar + t* sbar)

              The return values from this procedure can be compared to an  estimated  t-statistic
              to  determine whether the estimated value of a parameter is significantly different
              from zero at the given confidence level.

              int dof
                     Number of degrees of freedom

              float alpha
                     Confidence level of the t-distribution. Defaults to 0.05.

       ::math::statistics::mv-wls wt1 weights_and_values
              Carries out a  weighted  least  squares  linear  regression  for  the  data  points
              provided, with weights assigned to each point.

              The linear model is of the form
              y = b0 + b1 * x1 + b2 * x2 ... + bN * xN + error

              and each point satisfies
              yi = b0 + b1 * xi1 + b2 * xi2 + ... + bN * xiN + Residual_i

       The procedure returns a list with the following elements:

              •      The r-squared statistic

              •      The adjusted r-squared statistic

              •      A list containing the estimated coefficients b1, ... bN, b0 (The constant b0
                     comes last in the list.)

              •      A list containing the standard errors of the coefficients

              •      A list containing the 95% confidence bounds of the coefficients,  with  each
                     set of bounds returned as a list with two values

              Arguments:

              list weights_and_values
                     A list consisting of: the weight for the first observation, the data for the
                     first observation (as a sublist), the weight for the second observation  (as
                     a  sublist)  and  so  on. The sublists of data are organised as lists of the
                     value of the dependent variable y and the independent variables  x1,  x2  to
                     xN.

       ::math::statistics::mv-ols values
              Carries  out  an  ordinary  least  squares  linear  regression  for the data points
              provided.

              This procedure simply calls ::mvlinreg::wls  with  the  weights  set  to  1.0,  and
              returns the same information.

       Example of the use:
              # Store the value of the unicode value for the "+/-" character
              set pm "\u00B1"
              # Provide some data
              set data {{  -.67  14.18  60.03 -7.5  }
              { 36.97  15.52  34.24 14.61 }
              {-29.57  21.85  83.36 -7.   }
              {-16.9   11.79  51.67 -6.56 }
              { 14.09  16.24  36.97 -12.84}
              { 31.52  20.93  45.99 -25.4 }
              { 24.05  20.69  50.27  17.27}
              { 22.23  16.91  45.07  -4.3 }
              { 40.79  20.49  38.92  -.73 }
              {-10.35  17.24  58.77  18.78}}
              # Call the ols routine
              set results [::math::statistics::mv-ols $data]
              # Pretty-print the results
              puts "R-squared: [lindex $results 0]"
              puts "Adj R-squared: [lindex $results 1]"
              puts "Coefficients $pm s.e. -- \[95% confidence interval\]:"
              foreach val [lindex $results 2] se [lindex $results 3] bounds [lindex $results 4] {
              set lb [lindex $bounds 0]
              set ub [lindex $bounds 1]
              puts "   $val $pm $se -- \[$lb to $ub\]"
              }

STATISTICAL DISTRIBUTIONS

       In the literature a large number of probability distributions can be found. The statistics
       package supports:

       •      The normal or Gaussian distribution

       •      The uniform distribution - equal probability for all data within a given interval

       •      The exponential  distribution  -  useful  as  a  model  for  certain  extreme-value
              distributions.

       •      The gamma distribution - based on the incomplete Gamma integral

       •      The chi-square distribution

       •      The student's T distribution

       •      The Poisson distribution

       •      PM - binomial,F.

       In principle for each distribution one has procedures for:

       •      The probability density (pdf-*)

       •      The cumulative density (cdf-*)

       •      Quantiles for the given distribution (quantiles-*)

       •      Histograms for the given distribution (histogram-*)

       •      List of random values with the given distribution (random-*)

       The following procedures have been implemented:

       ::math::statistics::pdf-normal mean stdev value
              Return  the  probability of a given value for a normal distribution with given mean
              and standard deviation.

              float mean
                     - Mean value of the distribution

              float stdev
                     - Standard deviation of the distribution

              float value
                     - Value for which the probability is required

       ::math::statistics::pdf-exponential mean value
              Return the probability of a given value for an exponential distribution with  given
              mean.

              float mean
                     - Mean value of the distribution

              float value
                     - Value for which the probability is required

       ::math::statistics::pdf-uniform xmin xmax value
              Return  the  probability  of  a  given  value for a uniform distribution with given
              extremes.

              float xmin
                     - Minimum value of the distribution

              float xmin
                     - Maximum value of the distribution

              float value
                     - Value for which the probability is required

       ::math::statistics::pdf-gamma alpha beta value
              Return the probability of a given value for a Gamma distribution with  given  shape
              and rate parameters

              float alpha
                     - Shape parameter

              float beta
                     - Rate parameter

              float value
                     - Value for which the probability is required

       ::math::statistics::pdf-poisson mu k
              Return  the  probability  of a given number of occurrences in the same interval (k)
              for a Poisson distribution with given mean (mu)

              float mu
                     - Mean number of occurrences

              int k  - Number of occurences

       ::math::statistics::pdf-chisquare df value
              Return the probability of a given value for a chi square  distribution  with  given
              degrees of freedom

              float df
                     - Degrees of freedom

              float value
                     - Value for which the probability is required

       ::math::statistics::pdf-student-t df value
              Return  the  probability of a given value for a Student's t distribution with given
              degrees of freedom

              float df
                     - Degrees of freedom

              float value
                     - Value for which the probability is required

       ::math::statistics::pdf-beta a b value
              Return the probability of a given value for a Beta distribution  with  given  shape
              parameters

              float a
                     - First shape parameter

              float b
                     - First shape parameter

              float value
                     - Value for which the probability is required

       ::math::statistics::cdf-normal mean stdev value
              Return  the  cumulative probability of a given value for a normal distribution with
              given mean and standard deviation, that is the probability for  values  up  to  the
              given one.

              float mean
                     - Mean value of the distribution

              float stdev
                     - Standard deviation of the distribution

              float value
                     - Value for which the probability is required

       ::math::statistics::cdf-exponential mean value
              Return  the cumulative probability of a given value for an exponential distribution
              with given mean.

              float mean
                     - Mean value of the distribution

              float value
                     - Value for which the probability is required

       ::math::statistics::cdf-uniform xmin xmax value
              Return the cumulative probability of a given value for a uniform distribution  with
              given extremes.

              float xmin
                     - Minimum value of the distribution

              float xmin
                     - Maximum value of the distribution

              float value
                     - Value for which the probability is required

       ::math::statistics::cdf-students-t degrees value
              Return  the  cumulative probability of a given value for a Student's t distribution
              with given number of degrees.

              int degrees
                     - Number of degrees of freedom

              float value
                     - Value for which the probability is required

       ::math::statistics::cdf-gamma alpha beta value
              Return the cumulative probability of a given value for a  Gamma  distribution  with
              given shape and rate parameters

              float alpha
                     - Shape parameter

              float beta
                     - Rate parameter

              float value
                     - Value for which the cumulative probability is required

       ::math::statistics::cdf-poisson mu k
              Return  the  cumulative  probability  of  a given number of occurrences in the same
              interval (k) for a Poisson distribution with given mean (mu)

              float mu
                     - Mean number of occurrences

              int k  - Number of occurences

       ::math::statistics::cdf-beta a b value
              Return the cumulative probability of a given value for  a  Beta  distribution  with
              given shape parameters

              float a
                     - First shape parameter

              float b
                     - First shape parameter

              float value
                     - Value for which the probability is required

       ::math::statistics::random-normal mean stdev number
              Return a list of "number" random values satisfying a normal distribution with given
              mean and standard deviation.

              float mean
                     - Mean value of the distribution

              float stdev
                     - Standard deviation of the distribution

              int number
                     - Number of values to be returned

       ::math::statistics::random-exponential mean number
              Return a list of "number" random values satisfying an exponential distribution with
              given mean.

              float mean
                     - Mean value of the distribution

              int number
                     - Number of values to be returned

       ::math::statistics::random-uniform xmin xmax number
              Return  a  list  of  "number"  random values satisfying a uniform distribution with
              given extremes.

              float xmin
                     - Minimum value of the distribution

              float xmax
                     - Maximum value of the distribution

              int number
                     - Number of values to be returned

       ::math::statistics::random-gamma alpha beta number
              Return a list of "number" random values satisfying a Gamma distribution with  given
              shape and rate parameters

              float alpha
                     - Shape parameter

              float beta
                     - Rate parameter

              int number
                     - Number of values to be returned

       ::math::statistics::random-chisquare df number
              Return  a  list of "number" random values satisfying a chi square distribution with
              given degrees of freedom

              float df
                     - Degrees of freedom

              int number
                     - Number of values to be returned

       ::math::statistics::random-student-t df number
              Return a list of "number" random values satisfying a Student's t distribution  with
              given degrees of freedom

              float df
                     - Degrees of freedom

              int number
                     - Number of values to be returned

       ::math::statistics::random-beta a b number
              Return  a  list of "number" random values satisfying a Beta distribution with given
              shape parameters

              float a
                     - First shape parameter

              float b
                     - Second shape parameter

              int number
                     - Number of values to be returned

       ::math::statistics::histogram-uniform xmin xmax limits number
              Return the expected histogram for a uniform distribution.

              float xmin
                     - Minimum value of the distribution

              float xmax
                     - Maximum value of the distribution

              list limits
                     - Upper limits for the buckets in the histogram

              int number
                     - Total number of "observations" in the histogram

       ::math::statistics::incompleteGamma x p ?tol?
              Evaluate the incomplete Gamma integral
              1       / x               p-1
              P(p,x) =  --------   |   dt exp(-t) * t
              Gamma(p)  / 0

              float x
                     - Value of x (limit of the integral)

              float p
                     - Value of p in the integrand

              float tol
                     - Required tolerance (default: 1.0e-9)

       ::math::statistics::incompleteBeta a b x ?tol?
              Evaluate the incomplete Beta integral

              float a
                     - First shape parameter

              float b
                     - Second shape parameter

              float x
                     - Value of x (limit of the integral)

              float tol
                     - Required tolerance (default: 1.0e-9)

       TO DO: more function descriptions to be added

DATA MANIPULATION

       The data manipulation procedures act on lists or lists of lists:

       ::math::statistics::filter varname data expression
              Return a list consisting of the data for which the logical expression is true (this
              command works analogously to the command foreach).

              string varname
                     - Name of the variable used in the expression

              list data
                     - List of data

              string expression
                     - Logical expression using the variable name

       ::math::statistics::map varname data expression
              Return a list consisting of the data that are transformed via the expression.

              string varname
                     - Name of the variable used in the expression

              list data
                     - List of data

              string expression
                     - Expression to be used to transform (map) the data

       ::math::statistics::samplescount varname list expression
              Return  a  list  consisting of the counts of all data in the sublists of the "list"
              argument for which the expression is true.

              string varname
                     - Name of the variable used in the expression

              list data
                     - List of sublists, each containing the data

              string expression
                     - Logical expression to test the data (defaults to "true").

       ::math::statistics::subdivide
              Routine PM - not implemented yet

       ::math::statistics::test-Kruskal-Wallis confidence args
              Check if the population medians of two or  more  groups  are  equal  with  a  given
              confidence level, using the Kruskal-Wallis test.

              float confidence
                     - Confidence level to be used (0-1)

              list args
                     - Two or more lists of data

       ::math::statistics::analyse-Kruskal-Wallis args
              Compute  the  statistical  parameters  for  the  Kruskal-Wallis  test.  Returns the
              Kruskal-Wallis statistic and the probability that that value would  occur  assuming
              the medians of the populations are equal.

              list args
                     - Two or more lists of data

       ::math::statistics::group-rank args
              Rank  the  groups  of  data  with  respect  to  the  complete  set.  Returns a list
              consisting of the group ID, the value and the rank (possibly a rational number,  in
              case of ties) for each data item.

              list args
                     - Two or more lists of data

       ::math::statistics::test-Wilcoxon sample_a sample_b
              Compute  the  Wilcoxon  test  statistic  to  determine if two samples have the same
              median or not. (The statistic can be regarded as standard  normal,  if  the  sample
              sizes are both larger than 10. Returns the value of this statistic.

              list sample_a
                     - List of data comprising the first sample

              list sample_b
                     - List of data comprising the second sample

       ::math::statistics::spearman-rank sample_a sample_b
              Return  the Spearman rank correlation as an alternative to the ordinary (Pearson's)
              correlation coefficient. The two samples should have the same number of data.

              list sample_a
                     - First list of data

              list sample_b
                     - Second list of data

       ::math::statistics::spearman-rank-extended sample_a sample_b
              Return the Spearman rank correlation as an alternative to the ordinary  (Pearson's)
              correlation coefficient as well as additional data. The two samples should have the
              same number of data.  The procedure returns the correlation coefficient, the number
              of  data  pairs  used  and the z-score, an approximately standard normal statistic,
              indicating the significance of the correlation.

              list sample_a
                     - First list of data

              list sample_b
                     - Second list of data

PLOT PROCEDURES

       The following simple plotting procedures are available:

       ::math::statistics::plot-scale canvas xmin xmax ymin ymax
              Set the scale for a plot in  the  given  canvas.  All  plot  routines  expect  this
              function to be called first. There is no automatic scaling provided.

              widget canvas
                     - Canvas widget to use

              float xmin
                     - Minimum x value

              float xmax
                     - Maximum x value

              float ymin
                     - Minimum y value

              float ymax
                     - Maximum y value

       ::math::statistics::plot-xydata canvas xdata ydata tag
              Create a simple XY plot in the given canvas - the data are shown as a collection of
              dots. The tag can be used to manipulate the appearance.

              widget canvas
                     - Canvas widget to use

              float xdata
                     - Series of independent data

              float ydata
                     - Series of dependent data

              string tag
                     - Tag to give to the plotted data (defaults to xyplot)

       ::math::statistics::plot-xyline canvas xdata ydata tag
              Create a simple XY plot in the given canvas - the data are shown as a line  through
              the data points. The tag can be used to manipulate the appearance.

              widget canvas
                     - Canvas widget to use

              list xdata
                     - Series of independent data

              list ydata
                     - Series of dependent data

              string tag
                     - Tag to give to the plotted data (defaults to xyplot)

       ::math::statistics::plot-tdata canvas tdata tag
              Create a simple XY plot in the given canvas - the data are shown as a collection of
              dots. The horizontal coordinate is equal to the index.  The  tag  can  be  used  to
              manipulate   the   appearance.    This   type   of  presentation  is  suitable  for
              autocorrelation  functions  for  instance  or  for  inspecting  the  time-dependent
              behaviour.

              widget canvas
                     - Canvas widget to use

              list tdata
                     - Series of dependent data

              string tag
                     - Tag to give to the plotted data (defaults to xyplot)

       ::math::statistics::plot-tline canvas tdata tag
              Create  a  simple  XY  plot in the given canvas - the data are shown as a line. See
              plot-tdata for an explanation.

              widget canvas
                     - Canvas widget to use

              list tdata
                     - Series of dependent data

              string tag
                     - Tag to give to the plotted data (defaults to xyplot)

       ::math::statistics::plot-histogram canvas counts limits tag
              Create a simple histogram in the given canvas

              widget canvas
                     - Canvas widget to use

              list counts
                     - Series of bucket counts

              list limits
                     - Series of upper limits for the buckets

              string tag
                     - Tag to give to the plotted data (defaults to xyplot)

THINGS TO DO

       The following procedures are yet to be implemented:

       •      F-test-stdev

       •      interval-mean-stdev

       •      histogram-normal

       •      histogram-exponential

       •      test-histogram

       •      test-corr

       •      quantiles-*

       •      fourier-coeffs

       •      fourier-residuals

       •      onepar-function-fit

       •      onepar-function-residuals

       •      plot-linear-model

       •      subdivide

EXAMPLES

       The code below is a small example of how you can examine a set of data:

              # Simple example:
              # - Generate data (as a cheap way of getting some)
              # - Perform statistical analysis to describe the data
              #
              package require math::statistics
              #
              # Two auxiliary procs
              #
              proc pause {time} {
              set wait 0
              after [expr {$time*1000}] {set ::wait 1}
              vwait wait
              }
              proc print-histogram {counts limits} {
              foreach count $counts limit $limits {
              if { $limit != {} } {
              puts [format "<%12.4g\t%d" $limit $count]
              set prev_limit $limit
              } else {
              puts [format ">%12.4g\t%d" $prev_limit $count]
              }
              }
              }
              #
              # Our source of arbitrary data
              #
              proc generateData { data1 data2 } {
              upvar 1 $data1 _data1
              upvar 1 $data2 _data2
              set d1 0.0
              set d2 0.0
              for { set i 0 } { $i < 100 } { incr i } {
              set d1 [expr {10.0-2.0*cos(2.0*3.1415926*$i/24.0)+3.5*rand()}]
              set d2 [expr {0.7*$d2+0.3*$d1+0.7*rand()}]
              lappend _data1 $d1
              lappend _data2 $d2
              }
              return {}
              }
              #
              # The analysis session
              #
              package require Tk
              console show
              canvas .plot1
              canvas .plot2
              pack   .plot1 .plot2 -fill both -side top
              generateData data1 data2
              puts "Basic statistics:"
              set b1 [::math::statistics::basic-stats $data1]
              set b2 [::math::statistics::basic-stats $data2]
              foreach label {mean min max number stdev var} v1 $b1 v2 $b2 {
              puts "$label\t$v1\t$v2"
              }
              puts "Plot the data as function of \"time\" and against each other"
              ::math::statistics::plot-scale .plot1  0 100  0 20
              ::math::statistics::plot-scale .plot2  0 20   0 20
              ::math::statistics::plot-tline .plot1 $data1
              ::math::statistics::plot-tline .plot1 $data2
              ::math::statistics::plot-xydata .plot2 $data1 $data2
              puts "Correlation coefficient:"
              puts [::math::statistics::corr $data1 $data2]
              pause 2
              puts "Plot histograms"
              ::math::statistics::plot-scale .plot2  0 20 0 100
              set limits         [::math::statistics::minmax-histogram-limits 7 16]
              set histogram_data [::math::statistics::histogram $limits $data1]
              ::math::statistics::plot-histogram .plot2 $histogram_data $limits
              puts "First series:"
              print-histogram $histogram_data $limits
              pause 2
              set limits         [::math::statistics::minmax-histogram-limits 0 15 10]
              set histogram_data [::math::statistics::histogram $limits $data2]
              ::math::statistics::plot-histogram .plot2 $histogram_data $limits d2
              puts "Second series:"
              print-histogram $histogram_data $limits
              puts "Autocorrelation function:"
              set  autoc [::math::statistics::autocorr $data1]
              puts [::math::statistics::map $autoc {[format "%.2f" $x]}]
              puts "Cross-correlation function:"
              set  crossc [::math::statistics::crosscorr $data1 $data2]
              puts [::math::statistics::map $crossc {[format "%.2f" $x]}]
              ::math::statistics::plot-scale .plot1  0 100 -1  4
              ::math::statistics::plot-tline .plot1  $autoc "autoc"
              ::math::statistics::plot-tline .plot1  $crossc "crossc"
              puts "Quantiles: 0.1, 0.2, 0.5, 0.8, 0.9"
              puts "First:  [::math::statistics::quantiles $data1 {0.1 0.2 0.5 0.8 0.9}]"
              puts "Second: [::math::statistics::quantiles $data2 {0.1 0.2 0.5 0.8 0.9}]"
       If you run this example, then the following should be clear:

       •      There is a strong correlation between two time series, as displayed by the raw data
              and especially by the correlation functions.

       •      Both time series show a significant periodic component

       •      The  histograms  are not very useful in identifying the nature of the time series -
              they do not show the periodic nature.

BUGS, IDEAS, FEEDBACK

       This document, and the package it describes,  will  undoubtedly  contain  bugs  and  other
       problems.  Please report such in the category math :: statistics of the Tcllib SF Trackers
       [http://sourceforge.net/tracker/?group_id=12883].   Please  also  report  any  ideas   for
       enhancements you may have for either package and/or documentation.

KEYWORDS

       data analysis, mathematics, statistics

CATEGORY

       Mathematics