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# Copyright 2002, 2003, 2004, 2005, 2006, 2007, 2008, 2009, 2011 Kevin Ryde |
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# This file is part of Chart. |
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# |
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# Chart is free software; you can redistribute it and/or modify it under the |
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# terms of the GNU General Public License as published by the Free Software |
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# Foundation; either version 3, or (at your option) any later version. |
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# |
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# Chart is distributed in the hope that it will be useful, but WITHOUT ANY |
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# WARRANTY; without even the implied warranty of MERCHANTABILITY or FITNESS |
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# FOR A PARTICULAR PURPOSE. See the GNU General Public License for more |
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# details. |
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# |
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# You should have received a copy of the GNU General Public License along |
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# with Chart. If not, see <http://www.gnu.org/licenses/>. |
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package App::Chart::Series::Derived::EMA; |
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use 5.010; |
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use strict; |
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use warnings; |
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use Carp; |
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use POSIX (); |
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use Locale::TextDomain ('App-Chart'); |
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use base 'App::Chart::Series::Indicator'; |
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use App::Chart::Series::Calculation; |
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# In the manual it's noted that the first n days weight make up 86.5% of |
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# the total weight in an EMA. That amount is x = 1 + f + f^2 + ... + |
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# f^(n-1), and for total weight t |
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# |
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# t = x + f^n*(1 + f + f^2 + ...) |
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# |
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# t = x + f^n*t |
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# |
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# so the fraction of the total is |
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# |
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# x/t = 1 - f^n |
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# |
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# / 2 \ n |
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# = 1 - | 1 - --- | |
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# \ n+1 / |
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# |
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# / -2 \ n+1 |
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# | 1 + --- | |
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# \ n+1 / |
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# = 1 - ----------- |
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# / 2 \ |
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# | 1 - --- | |
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# \ n+1 / |
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# |
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# As n increases, the numerator approaches e^-2 from the limit (1+x/n)^n |
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# --> e^x by Euler, and the numerator approaches 1. So the result is |
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# |
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# 1 |
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# x/t --> 1 - --- = 0.8646647... |
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# e^2 |
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# |
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sub longname { __('EMA - Exponential MA') } |
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sub shortname { __('EMA') } |
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sub manual { __p('manual-node','Exponential Moving Average') } |
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use constant |
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{ priority => 12, |
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type => 'average', |
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parameter_info => [ { name => __('Days'), |
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key => 'ema_days', |
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type => 'float', |
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minimum => 1, |
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default => 20, |
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decimals => 0, |
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step => 1 } ], |
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}; |
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sub new { |
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my ($class, $parent, $N) = @_; |
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$N //= parameter_info()->[0]->{'default'}; |
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($N > 0) or croak "EMA bad N: $N"; |
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return $class->SUPER::new |
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(parent => $parent, |
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parameters => [ $N ], |
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N => $N, |
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arrays => { values => [] }, |
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array_aliases => { }); |
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} |
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# Return a procedure which calculates an exponential moving average over an |
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# accumulated window. |
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# |
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# Each call $proc->($value) enters a new value into the window, and the |
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# return is the EMA up to (and including) that $value. |
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# |
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# An EMA is in theory influenced by all preceding data, but warmup_count() |
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# below is designed to determine a warmup count. By calling $proc with |
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# warmup_count($N) many values, the next call will have an omitted weight of |
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# no more than 0.1% of the total. Omitting 0.1% should be negligable, |
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# unless past values are ridiculously bigger than recent ones. |
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# |
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sub proc { |
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my ($self_or_class, $N) = @_; |
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if ($N <= 1) { |
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return \&App::Chart::Series::Calculation::identity; |
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} |
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# $sum is v0 + v1*f + v2*f^2 + v3*f^3 + ... + vk*f^k, for as many $value's |
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# as so far entered |
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# |
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# $weight is the corresponding 1 + f + f^2 + ... + f^k. This approaches |
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# 1/(1-f), but on the first few outputs it's much smaller, so must |
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# calculate it explicitly. |
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my $f = N_to_f ($N); |
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my $alpha = N_to_alpha ($N); |
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my $sum = 0; |
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my $weight = 0; |
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return sub { |
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my ($value) = @_; |
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$sum = $sum * $f + $value * $alpha; |
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$weight = $weight * $f + $alpha; |
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return $sum / $weight; |
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}; |
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} |
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# By priming an EMA accumulator PROC above with warmup_count($N) many |
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# values, the next call will have an omitted weight of no more than 0.1% of |
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# the total. Omitting 0.1% should be negligable, unless past values are |
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# ridiculously bigger than recent ones. The implementation is fast, per |
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# ema_omitted_search() below. |
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# |
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# Knowing that log(f) approaches -2/count as count increases, the result |
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# from ema_omitted_search() is roughly log(0.001)/(-2/$N) = 3.45*$N. |
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# |
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use constant WARMUP_OMITTED_FRACTION => 0.001; |
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sub warmup_count { |
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my ($self_or_class, $N) = @_; |
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if ($N <= 1) { |
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return 0; |
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} else { |
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return ema_omitted_search (N_to_f($N), WARMUP_OMITTED_FRACTION) - 1 ; |
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} |
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} |
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# ema_omitted_search() returns the number of terms t needed in an EMA to |
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# have an omitted part <= TARGET, where target is a proportion between 0 and |
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# 1. This means |
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# |
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# Omitted(t-1) <= target |
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# f^t <= target |
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# t >= log(target) / log(f) |
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# |
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# Can have f==0 when count==1 (a degenerate EMA, which just follows the |
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# given points exactly). log(0) isn't supported on guile 1.6, hence the |
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# special case. |
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# |
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# Actually log(f) approaches -2/N as N increases, but it's easy enough to |
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# do the calculation exactly. |
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# |
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sub ema_omitted_search { |
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my ($f, $target) = @_; |
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if ($f == 0) { |
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return 0; |
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} else { |
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return POSIX::ceil (log($target) / log($f)); |
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} |
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} |
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# ema_omitted() returns the fraction (between 0 and 1) of weight omitted by |
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# stopping an EMA at the f^k term, which means the first k+1 terms. |
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# |
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# The weight, out of a total 1, in those first terms |
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# |
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# W(k) = (1-f) (1 + f + f^2 + ... + f^k) |
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# |
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# multiplying through makes the middle terms cancel, leaving |
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# |
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# W(k) = 1 - f^(k+1) |
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# |
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# The omitted part is then O = 1-W, |
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# |
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# Omitted(k) = f^(k+1) |
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# |
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sub ema_omitted { |
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my ($f, $k) = @_; |
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return $f ** ($k + 1); |
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} |
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# alpha=2/(N+1) |
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sub N_to_alpha { |
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my ($N) = @_; |
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return 2 / ($N + 1); |
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} |
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# f=1-2/(N+1), rearranged to f=(N-1)/(N+1). |
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sub N_to_f { |
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my ($N) = @_; |
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return ($N - 1) / ($N + 1); |
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} |
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# N = 2/alpha - 1 |
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sub alpha_to_N { |
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my ($alpha) = @_; |
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return 2 / $alpha - 1; |
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} |
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# convert a $N in J. Welles Wilder's reckoning to one in the standard form |
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# Wilder alpha=1/W, alpha=2/(N+1), so N=2*W-1 |
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sub N_from_Wilder_N { |
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my ($W) = @_; |
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return 2*$W - 1; |
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} |
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sub N_to_Wilder_N { |
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my ($N) = @_; |
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return ($N+1)/2; |
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} |
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219
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1; |
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__END__ |
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# =head1 NAME |
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# |
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# App::Chart::Series::Derived::EMA -- exponential moving average |
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# |
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# =head1 SYNOPSIS |
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# |
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# my $series = $parent->EMA($N); |
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# |
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# =head1 DESCRIPTION |
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# |
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# ... |
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# |
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# =head1 SEE ALSO |
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# |
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# L<App::Chart::Series>, L<App::Chart::Series::Derived::SMA> |
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# |
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# =cut |