X-Git-Url: https://pintos-os.org/cgi-bin/gitweb.cgi?a=blobdiff_plain;ds=sidebyside;f=doc%2Fstatistics.texi;h=a9adb2afc6462a1c272bc33352ebff9b6f43999e;hb=612b51515e356bc4dd625a3fb18d0a4f827a1e2c;hp=85217cd636fef532832114c5182e1aac4d30fee9;hpb=e8fd8bbc19102dd21c25433d9c410ccb174931db;p=pspp diff --git a/doc/statistics.texi b/doc/statistics.texi index 85217cd636..a9adb2afc6 100644 --- a/doc/statistics.texi +++ b/doc/statistics.texi @@ -411,8 +411,9 @@ large quantity of output. @display GRAPH - /HISTOGRAM = @var{var} - /SCATTERPLOT [(BIVARIATE)] = @var{var1} WITH @var{var2} [BY @var{var3}] + /HISTOGRAM [(NORMAL)]= @var{var} + /SCATTERPLOT [(BIVARIATE)] = @var{var1} WITH @var{var2} [BY @var{var3}] + /BAR = @{@var{summary-function}(@var{var1}) | @var{count-function}@} BY @var{var2} [BY @var{var3}] [ /MISSING=@{LISTWISE, VARIABLE@} [@{EXCLUDE, INCLUDE@}] ] [@{NOREPORT,REPORT@}] @@ -441,6 +442,8 @@ this plot it is possible to analyze gender differences for @var{height} vs.@: @v The subcommand @subcmd{HISTOGRAM} produces a histogram. Only one variable is allowed for the histogram plot. +The keyword @subcmd{NORMAL} may be specified in parentheses, to indicate that the ideal normal curve +should be superimposed over the histogram. For an alternative method to produce histograms @pxref{EXAMINE}. The following example produces a histogram plot for the variable @var{weight}. @@ -449,6 +452,57 @@ GRAPH /HISTOGRAM = @var{weight}. @end example +@cindex bar chart +The subcommand @subcmd{BAR} produces a bar chart. +This subcommand requires that a @var{count-function} be specified (with no arguments) or a @var{summary-function} with a variable @var{var1} in parentheses. +Following the summary or count function, the keyword @subcmd{BY} should be specified and then a catagorical variable, @var{var2}. +The values of the variable @var{var2} determine the labels of the bars to be plotted. +Optionally a second categorical variable @var{var3} may be specified in which case a clustered (grouped) bar chart is produced. + +Valid count functions are +@table @subcmd +@item COUNT +The weighted counts of the cases in each category. +@item PCT +The weighted counts of the cases in each category expressed as a percentage of the total weights of the cases. +@item CUFREQ +The cumulative weighted counts of the cases in each category. +@item CUPCT +The cumulative weighted counts of the cases in each category expressed as a percentage of the total weights of the cases. +@end table + +The summary function is applied to @var{var1} across all cases in each category. +The recognised summary functions are: +@table @subcmd +@item SUM +The sum. +@item MEAN +The arithmetic mean. +@item MAXIMUM +The maximum value. +@item MINIMUM +The minimum value. +@end table + +The following examples assume a dataset which is the results of a survey. +Each respondent has indicated annual income, their sex and city of residence. +One could create a bar chart showing how the mean income varies between of residents of different cities, thus: +@example +GRAPH /BAR = MEAN(@var{income}) BY @var{city}. +@end example + +This can be extended to also indicate how income in each city differs between the sexes. +@example +GRAPH /BAR = MEAN(@var{income}) BY @var{city} BY @var{sex}. +@end example + +One might also want to see how many respondents there are from each city. This can be achieved as follows: +@example +GRAPH /BAR = COUNT BY @var{city}. +@end example + +Bar charts can also be produced using the @ref{FREQUENCIES} and @ref{CROSSTABS} commands. + @node CORRELATIONS @section CORRELATIONS