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Statistics::Basic(3) |
User Contributed Perl Documentation |
Statistics::Basic(3) |
Statistics::Basic - A collection of very basic statistics modules
use Statistics::Basic qw(:all);
These actually return objects, not numbers. The objects will
interpolate as nicely formated numbers (using Number::Format). Or the actual
number will be returned when the object is used as a number.
my $median = median( 1,2,3 );
my $mean = mean( [1,2,3]); # array refs are ok too
my $variance = variance( 1,2,3 );
my $stddev = stddev( 1,2,3 );
Although passing unblessed numbers and array refs to these
functions works, it's sometimes better to pass vector objects so the objects
can reuse calculated values.
my $v1 = $mean->query_vector;
my $variance = variance( $v1 );
my $stddev = stddev( $v1 );
Here, the mean used by the variance and the variance used by the
standard deviation will not need to be recalculated. Now consider these two
calculations.
my $covariance = covariance( [1 .. 3], [1 .. 3] );
my $correlation = correlation( [1 .. 3], [1 .. 3] );
The covariance above would need to be recalculated by the
correlation when these functions are called this way. But, if we instead
built vectors first, that wouldn't happen:
# $v1 is defined above
my $v2 = vector(1,2,3);
my $cov = covariance( $v1, $v2 );
my $cor = correlation( $v1, $v2 );
Now $cor can reuse the variance calculated
in $cov.
All of the functions above return objects that interpolate or
evaluate as a single string or as a number.
Statistics::Basic::LeastSquareFit and Statistics::Basic::Mode are
different:
my $unimodal = mode(1,2,3,3);
my $multimodal = mode(1,2,3);
print "The modes are: $unimodal and $multimodal.\n";
print "The first is multimodal... " if $unimodal->is_multimodal;
print "The second is multimodal.\n" if $multimodal->is_multimodal;
In the first case, $unimodal will
interpolate as a string and function correctly as a number. However,
in the second case, trying to use $multimodal as a
number will "croak" an error -- it still
interpolates fine though.
my $lsf = leastsquarefit($v1, $v2);
This $lsf will interpolate fine, showing
"LSF( alpha: $alpha, beta: $beta
)", but it will
"croak" if you try to use the object as a
number.
my $v3 = $multimodal->query;
my ($alpha, $beta) = $lsf->query;
my $average = $mean->query;
All of the objects allow you to explicitly query, if you're not in
the mood to use overload.
my @answers = (
$mode->query,
$median->query,
$stddev->query,
);
The following shortcut functions can be used in place of calling the module's
"new()" method directly.
They all take either array refs or lists as arguments, with
the exception of the shortcuts that need two vectors to process (e.g.
Statistics::Basic::Correlation).
- vector()
- Returns a Statistics::Basic::Vector object. Arguments to
"vector()" can be any of: an array ref,
a list of numbers, or a blessed vector object. If passed a blessed vector
object, vector will just return the vector passed in.
- mean() average()
avg()
- Returns a Statistics::Basic::Mean object. You can choose to call
"mean()" as
"average()" or
"avg()". Arguments can be any of: an
array ref, a list of numbers, or a blessed vector object.
- median()
- Returns a Statistics::Basic::Median object. Arguments can be any of: an
array ref, a list of numbers, or a blessed vector object.
- mode()
- Returns a Statistics::Basic::Mode object. Arguments can be any of: an
array ref, a list of numbers, or a blessed vector object.
- variance() var()
- Returns a Statistics::Basic::Variance object. You can choose to call
"variance()" as
"var()". Arguments can be any of: an
array ref, a list of numbers, or a blessed vector object. If you will also
be calculating the mean of the same list of numbers it's recommended to do
this:
my $vec = vector(1,2,3);
my $mean = mean($vec);
my $var = variance($vec);
This would also work:
my $mean = mean(1,2,3);
my $var = variance($mean->query_vector);
This will calculate the same mean twice:
my $mean = mean(1,2,3);
my $var = variance(1,2,3);
If you really only need the variance, ignore the above and
this is fine:
my $variance = variance(1,2,3,4,5);
- stddev()
- Returns a Statistics::Basic::StdDev object. Arguments can be any of: an
array ref, a list of numbers, or a blessed vector object. Pass a vector
object to "stddev()" to avoid
recalculating the variance and mean if applicable (see
"variance()").
- covariance() cov()
- Returns a Statistics::Basic::Covariance object. Arguments to
"covariance()" or
"cov()" must be array ref or vector
objects. There must be precisely two arguments (or none, setting the
vectors to two empty ones), and they must be the same length.
- correlation() cor()
corr()
- Returns a Statistics::Basic::Correlation object. Arguments to
"correlation()" or
"cor()"/"corr()"
must be array ref or vector objects. There must be precisely two arguments
(or none, setting the vectors to two empty ones), and they must be the
same length.
- leastsquarefit() LSF()
lsf()
- Returns a Statistics::Basic::LeastSquareFit object. Arguments to
"leastsquarefit()" or
"lsf()"/"LSF()"
must be array ref or vector objects. There must be precisely two arguments
(or none, setting the vectors to two empty ones), and they must be the
same length.
- computed()
- Returns a Statistics::Basic::ComputedVector object. Argument must be a
blessed vector object. See the section on "COMPUTED VECTORS" for
more information on this.
- handle_missing_values()
handle_missing()
- Returns two Statistics::Basic::ComputedVector objects. Arguments to this
function should be two vector arguments. See the section on "MISSING
VALUES" for further information on this function.
Sometimes it will be handy to have a vector computed from another (or at least
that updates based on the first). Consider the case of outliers:
my @a = ( (1,2,3) x 7, 15 );
my @b = ( (1,2,3) x 7 );
my $v1 = vector(@a);
my $v2 = vector(@b);
my $v3 = computed($v1);
$v3->set_filter(sub {
my $m = mean($v1);
my $s = stddev($v1);
grep { abs($_-$m) <= $s } @_;
});
This filter sets $v3 to always be equal to
$v1 such that all the elements that differ from the
mean by more than a standard deviation are removed. As such,
"$v2" eq "$v3" since
15 is clearly an outlier by inspection.
print "$v1\n";
print "$v3\n";
... prints:
[1, 2, 3, 1, 2, 3, 1, 2, 3, 1, 2, 3, 1, 2, 3, 1, 2, 3, 1, 2, 3, 15]
[1, 2, 3, 1, 2, 3, 1, 2, 3, 1, 2, 3, 1, 2, 3, 1, 2, 3, 1, 2, 3]
Something I get asked about quite a lot is, "can S::B handle missing
values?" The answer used to be, "that really depends on your data
set, use grep," but I recently decided (5/29/09) that it was time to just
go ahead and add this feature.
Strictly speaking, the feature was already there. You simply need
to add a couple filters to your data. See
"t/75_filtered_missings.t" for the test
example.
This is what people usually mean when they ask if S::B can
"handle" missing data:
my $v1 = vector(1,2,3,undef,4);
my $v2 = vector(1,2,3,4, undef);
my $v3 = computed($v1);
my $v4 = computed($v2);
$v3->set_filter(sub {
my @v = $v2->query;
map {$_[$_]} grep { defined $v[$_] and defined $_[$_] } 0 .. $#_;
});
$v4->set_filter(sub {
my @v = $v1->query;
map {$_[$_]} grep { defined $v[$_] and defined $_[$_] } 0 .. $#_;
});
print "$v1 $v2\n"; # prints: [1, 2, 3, _, 4] [1, 2, 3, 4, _]
print "$v3 $v4\n"; # prints: [1, 2, 3] [1, 2, 3]
But I've made it even simpler. Since this is such a common
request, I have provided a helper function to build the filters
automatically:
my $v1 = vector(1,2,3,undef,4);
my $v2 = vector(1,2,3,4, undef);
my ($f1, $f2) = handle_missing_values($v1, $v2);
print "$f1 $f2\n"; # prints: [1, 2, 3] [1, 2, 3]
Note that in practice, you would still manipulate (insert, and
shift) $v1 and $v2,
not the computed vectors. But for correlations and the like, you
would use $f1 and $f2.
$v1->insert(5);
$v2->insert(6);
my $correlation = correlation($f1, $f2);
You can still insert on $f1 and
$f2, but it updates the input vector rather than the
computed one (which is just a filter handler).
Most of the objects have a variety of query functions that allow you to extract
the objects used within. Although, the objects are smart enough to prevent
needless duplication. That is, the following would test would pass:
use Statistics::Basic qw(:all);
my $v1 = vector(1,2,3,4,5);
my $v2 = vector($v1);
my $sd = stddev( $v1 );
my $v3 = $sd->query_vector;
my $m1 = mean( $v1 );
my $m2 = $sd->query_mean;
my $m3 = Statistics::Basic::Mean->new( $v1 );
my $v4 = $m3->query_vector;
use Scalar::Util qw(refaddr);
use Test; plan tests => 5;
ok( refaddr($v1), refaddr($v2) );
ok( refaddr($v2), refaddr($v3) );
ok( refaddr($m1), refaddr($m2) );
ok( refaddr($m2), refaddr($m3) );
ok( refaddr($v3), refaddr($v4) );
# this is t/54_* in the distribution
Also, note that the mean is only calculated once even though we've
calculated a variance and a standard deviation above.
Suppose you'd like a copy of the Statistics::Basic::Variance
object that the Statistics::Basic::StdDev object is using. All of the
objects within should be accessible with query functions as follows.
- query()
- This method exists in all of the objects.
Statistics::Basic::LeastSquareFit is the only one that returns two values
(alpha and beta) as a list. Statistics::Basic::Vector returns either the
list of elements in the vector, or reference to that array (depending on
the context). All of the other "query()"
methods return a single number, the number the module purports to
calculate.
- query_mean()
- Returns the Statistics::Basic::Mean object used by
Statistics::Basic::Variance and Statistics::Basic::StdDev.
- query_mean1()
- Returns the first Statistics::Basic::Mean object used by
Statistics::Basic::Covariance, Statistics::Basic::Correlation and
Statistics::Basic::LeastSquareFit.
- query_mean2()
- Returns the second Statistics::Basic::Mean object used by
Statistics::Basic::Covariance, and Statistics::Basic::Correlation.
- query_covariance()
- Returns the Statistics::Basic::Covariance object used by
Statistics::Basic::Correlation and Statistics::Basic::LeastSquareFit.
- query_variance()
- Returns the Statistics::Basic::Variance object used by
Statistics::Basic::StdDev.
- query_variance1()
- Returns the first Statistics::Basic::Variance object used by
Statistics::Basic::LeastSquareFit.
- query_vector()
- Returns the Statistics::Basic::Vector object used by any of the single
vector modules.
- query_vector1()
- Returns the first Statistics::Basic::Vector object used by any of the two
vector modules.
- query_vector2()
- Returns the second Statistics::Basic::Vector object used by any of the two
vector modules.
- is_multimodal()
- Statistics::Basic::Mode objects sometimes return Statistics::Basic::Vector
objects instead of numbers. When
"is_multimodal()" is true, the mode is a
vector, not a scalar.
- y_given_x()
- Statistics::Basic::LeastSquareFit is meant for finding a line of best fit.
This function can be used to find the
"y" for a given
"x" based on the calculated
$beta (slope) and $alpha
(y-offset).
- x_given_y()
- Statistics::Basic::LeastSquareFit is meant for finding a line of best fit.
This function can be used to find the
"x" for a given
"y" based on the calculated
$beta (slope) and $alpha
(y-offset).
This function can produce divide-by-zero errors since it must
divide by the slope to find the "x"
value. (The slope should rarely be zero though, that's a vertical line
and would represent very odd data points.)
These objects are all intended to be useful while processing long columns of
data, like data you'd find in a database.
- insert()
- Vectors try to stay the same size when they accept new elements, FIFO
style.
my $v1 = vector(1,2,3); # a 3 touple
$v1->insert(4); # still a 3 touple
print "$v1\n"; # prints: [2, 3, 4]
$v1->insert(7); # still a 3 touple
print "$v1\n"; # prints: [3, 4, 7]
All of the other Statistics::Basic modules have this function
too. The modules that track two vectors will need two arguments to
insert though.
my $mean = mean([1,2,3]);
$mean->insert(4);
print "mean: $mean\n"; # prints 3 ... (2+3+4)/3
my $correlation = correlation($mean->query_vector,
$mean->query_vector->copy);
print "correlation: $correlation\n"; # 1
$correlation->insert(3,4);
print "correlation: $correlation\n"; # 0.5
Also, note that the underlying vectors keep track of
recalculating automatically.
my $v = vector(1,2,3);
my $m = mean($v);
my $s = stddev($v);
The mean has not been calculated yet.
print "$s; $m\n"; # 0.82; 2
The mean has been calculated once (even though the
Statistics::Basic::StdDev uses it).
$v->insert(4); print "$s; $m\n"; 0.82; 3
$m->insert(5); print "$s; $m\n"; 0.82; 4
$s->insert(6); print "$s; $m\n"; 0.82; 5
The mean has been calculated thrice more and only thrice
more.
- append() ginsert()
- You can grow the vectors instead of sliding them (FIFO). For this, use
"append()" (or
"ginsert()", same thing).
my $v = vector(1,2,3);
my $m = mean($v);
my $s = stddev($v);
$v->append(4); print "$s; $m\n"; 1.12; 2.5
$m->append(5); print "$s; $m\n"; 1.41; 3
$s->append(6); print "$s; $m\n"; 1.71; 1.71
print "$v\n"; # [1, 2, 3, 4, 5, 6]
print "$s\n"; # 1.71
Of course, with a correlation, or a covariance, it'd look more
like this:
my $c = correlation([1,2,3], [3,4,5]);
$c->append(7,7);
print "c=$c\n"; # c=0.98
- set_vector()
- This allows you to set the vector to a known state. It takes either array
ref or vector objects.
my $v1 = vector(1,2,3);
my $v2 = $v1->copy;
$v2->set_vector([4,5,6]);
my $m = mean();
$m->set_vector([1,2,3]);
$m->set_vector($v2);
my $c = correlation();
$c->set_vector($v1,$v2);
$c->set_vector([1,2,3], [4,5,6]);
- set_size()
- This sets the size of the vector. When the vector is made bigger, the
vector is filled to the new length with leading zeros (i.e., they are the
first to be kicked out after new
"insert()"s.
my $v = vector(1,2,3);
$v->set_size(7);
print "$v\n"; # [0, 0, 0, 0, 1, 2, 3]
my $m = mean();
$m->set_size(7);
print "", $m->query_vector, "\n";
# [0, 0, 0, 0, 0, 0, 0]
my $c = correlation([3],[3]);
$c->set_size(7);
print "", $c->query_vector1, "\n";
print "", $c->query_vector2, "\n";
# [0, 0, 0, 0, 0, 0, 3]
# [0, 0, 0, 0, 0, 0, 3]
Each of the following options can be specified on package import like this.
use Statistics::Basic qw(unbias=0); # start with unbias disabled
use Statistics::Basic qw(unbias=1); # start with unbias enabled
When specified on import, each option has certain defaults.
use Statistics::Basic qw(unbias); # start with unbias enabled
use Statistics::Basic qw(nofill); # start with nofill enabled
use Statistics::Basic qw(toler); # start with toler disabled
use Statistics::Basic qw(ipres); # start with ipres=2
Additionally, with the exception of "ignore_env", they
can all be accessed via package variables of the same name in all upper
case. Example:
# code code code
$Statistics::Basic::UNBIAS = 0; # turn UNBIAS off
# code code code
$Statistics::Basic::UNBIAS = 1; # turn it back on
# code code code
{
local $Statistics::Basic::DEBUG_STATS_B = 1; # debug, this block only
}
Special caveat: "toler" can in fact be changed via the
package var (e.g.,
"$Statistics::Basic::TOLER=0.0001"). But,
for speed reasons, it must be defined before any other packages are imported
or it will not actually do anything when changed.
- unbias
- This module uses the sum(X - mean(X))/N definition of variance.
If you wish to use the unbiased,
sum(X-mean(X)/(N-1) definition, then set the
$Statistics::Basic::UNBIAS true (possibly with
"use Statistics::Basic
qw(unbias)").
This can be changed at any time with the package variable or
at compile time.
This feature was requested by "Robert
McGehee <xxxxxxxx@wso.williams.edu>".
[NOTE 2008-11-06:
<http://cpanratings.perl.org/dist/Statistics-Basic>, this can also
be called "population (n)" vs "sample
(n-1)" and is indeed fully addressed right here!]
- ipres
- "ipres" defaults to 2. It is passed to
Number::Format as the second argument to format_number() during
string interpolation (see: overload).
- toler
- When set, $Statistics::Basic::TOLER (which is not
enabled by default), instructs the stats objects to test true when
within some tolerable range, pretty much like this:
sub is_equal {
return abs($_[0]-$_[1])<$Statistics::Basic::TOLER
if defined($Statistics::Basic::TOLER)
return $_[0] == $_[1]
}
For performance reasons, this must be defined before the
import of any other Statistics::Basic modules or the modules will fail
to overload the "==" operator.
$Statistics::Basic::TOLER totally
disabled:
use Statistics::Basic qw(:all toler);
$Statistics::Basic::TOLER disabled,
but changeable:
use Statistics::Basic qw(:all toler=0);
$Statistics::Basic::TOLER = 0.000_001;
You can change the tolerance at runtime, but it must be
set (or unset) at compile time before the packages load.
- nofill
- Normally when you set the size of a vector it automatically fills with
zeros on the first-out side of the vector. You can disable the autofilling
with this option. It can be changed at any time.
- debug
- Enable debugging with "use Statistics::Basic
qw(debug)" or disable a specific level (including
0 to disable) with "use
Statistics::Basic qw(debug=2)".
This is also accessible at runtime using
$Statistics::Basic::DEBUG_STATS_B and can be
switched on and off at any time.
- ignore_env
- Normally the defaults for these options can be changed in the environment
of the program. Example:
UNBIAS=1 perl ./myprog.pl
This does the same thing as
"$Statistics::Basic::UNBIAS=1" or
"use Statistics::Basic qw(unbias)"
unless you disable the %ENV checking with this
option.
use Statistics::Basic qw(ignore_env);
You can change the defaults (assuming ignore_env is not used) from your bash
prompt. Example:
DEBUG_STATS_B=1 perl ./myprog.pl
- $ENV{DEBUG_STATS_B}
- Sets the default value of "debug".
- $ENV{UNBIAS}
- Sets the default value of "unbias".
- $ENV{NOFILL}
- Sets the default value of "nofill".
- $ENV{IPRES}
- Sets the default value of "ipres".
- $ENV{TOLER}
- Sets the default value of "toler".
All of the objects are true in numeric context. All of the objects print useful
strings when evaluated as a string. Most of the objects evaluate usefully as
numbers, although Statistics::Basic::Vector objects,
Statistics::Basic::ComputedVector objects, and
Statistics::Basic::LeastSquareFit objects do not -- they instead raise an
error.
I've been asked a couple times now why I don't link to Statistics::Descriptive
in my see also section. As a rule, I only link to packages there that I think
are related or that I actually used in the package construction. I've never
personally used Descriptive, but it surely seems to do quite a lot more. In a
sense, this package really doesn't do statistics, not like a scientist would
think about it anyway. So I always figured people could find their own way to
Descriptive anyway.
The one thing this package does do, that I don't think Descriptive
does (correct me if I'm wrong) is time difference computations. If there are
say, 200 things in the mean object, then after inserting (using this
package) there'll still be 200 things, allowing the computation of a moving
average, moving stddev, moving correlation, etc. You might argue that this
is rarely needed, but it is really the only time I need to compute these
things.
while( $data = $fetch_sth->fetchrow_arrayref ) {
$mean->insert($data);
$moving_avg_sth->execute(0 + $mean);
}
Since I opened the topic I'd also like to mention that I find this
package easier to use. That is a matter of taste and since I wrote this, you
might say I'm a little biased. Your mileage may vary.
Paul Miller "<jettero@cpan.org>"
I am using this software in my own projects... If you find bugs,
please please please let me know. :) Actually, let me know if you find it
handy at all. Half the fun of releasing this stuff is knowing that people
use it.
Copyright 2012 Paul Miller -- Licensed under the LGPL version 2.
perl(1), Number::Format, overload, Statistics::Basic::Vector,
Statistics::Basic::ComputedVector, Statistics::Basic::_OneVectorBase,
Statistics::Basic::Mean, Statistics::Basic::Median, Statistics::Basic::Mode,
Statistics::Basic::Variance, Statistics::Basic::StdDev,
Statistics::Basic::_TwoVectorBase, Statistics::Basic::Correlation,
Statistics::Basic::Covariance, Statistics::Basic::LeastSquareFit
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