File:Random-data-plus-trend-r2.png

Random-data-plus-trend-r2.png(601 × 447 像素,檔案大細:9 KB ,MIME類型:image/png

Image of random data plus trend, with best-fit line and different smoothings

The data is 1000 points (plotted in black), with an increasing trend of 1-in-100, with random normal noise of standard deviation 10 superimposed. The red-line is the same data but averaged every 10 points. The blue line is averaged every 100 points.

For the three series, the least squares fit line is virtually the same, with a slope of 0.01, as expected.

The r2 fit for the raw data is 0.08; for the 10-pt-filtered, 0.57; for 100-pt-filtered, 0.97.

Ignoring autocorrelation, a confidence limit for the slope of the fit line is [0.0082, 0.0127] for the raw data (which include 0.01, as it should). For the 10-pt-filtered the limits are slightly narrower at [0.0084, 0.0125] and for the 100pt-filtering the limits are again slightly narrower.

So what does that all mean?

  • for the raw data, the simple trend line explains almost none of the variance of the time series (only 8%).
  • for the 100-pt filtering, the trend line explains almost all of the data (97%).
  • nonetheless, the trend lines are almost identical as are the confidence levels.

The time series are, of course, very closely related: the same except for the filtering. This shows that a low r2 value should not be interpreted as evidence of lack of trend.

Source code

Source in IDL. pp_regress and reg_explain not given.

n=1000

data=10*randomn(seed,n)+indgen(n)/100.
y=indgen(n)
y1=y(indgen(n/10)*10+5)
y2=y(indgen(n/100)*100+5*10)

ret=pp_regress(y,data)
print,reg_explain(ret)

data1=reform(data,10,n/10)
data1=avg(data1,0)

ret1=pp_regress(y1,data1)
print,reg_explain(ret1)

data2=reform(data,100,n/100)
data2=avg(data2,0)

ret2=pp_regress(y2,data2)
print,reg_explain(ret2)

plot,y,data,yr=[-20,30]
pp_regress_plot,ret,th=3

oplot,y1,data1,col=2,th=3
oplot,y2,data2,col=3,th=3


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This licensing tag was added to this file as part of the GFDL licensing update.

Transferred from en.wikipedia to Commons by Maksim.

The original description page was here. All following user names refer to en.wikipedia.
date/time username edit summary
21:25, 20 December 2004 en:User:Quadell (tagged)
22:13, 14 August 2004 en:User:Danakil (fmt)
21:17, 14 August 2004 en:User:William M. Connolley (Add code.)
14:05, 12 August 2004 en:User:William M. Connolley (I bumped up the SD to make the point obvious.)
14:00, 12 August 2004 en:User:William M. Connolley (Comments)
13:50, 12 August 2004 en:User:William M. Connolley (...partial before reload)
13:32, 12 August 2004 en:User:William M. Connolley (Image of random data plus trend, with best-fit line and different smoothings)

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現時2006年3月20號 (一) 19:19響2006年3月20號 (一) 19:19嘅縮圖版本601 × 447(9 KB)MaksimLa bildo estas kopiita de wikipedia:en. La originala priskribo estas: '''Image of random data plus trend, with best-fit line and different smoothings''' {{GFDL}} The data is 1000 points, with a trend of 1-in-100, with random normal noise of SD 10 super

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