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i have a list of points

   n     x
   7     99.06
  12    100.45
  25     98.11
  42    106.92
  75    106.78
  94    102.34
 128    119.05
 145    116.54
 149    116.06
 167    111.49
 173    112.69
 195    120.25
 201    119.70
 217    107.62
 233    105.53
 239    107.86
 257    109.77
 287    115.71

This is the scatter plot and what i want to achieve the scatter plot

I want to find all linear lines that cross more then two points. what i have is the blue dots - what i want to find is the red lines.

the simple solution is to run lm on all combination and filter the top ones by adjusted R squared. but, there are a lot of combinations and it's taking a very very long time . i've tried elimination by setting a limit on the angles between the sections but it's not significant enough. plus, i ran into some problems when i had a long line including other significant segments as illustrated by 1/2 in the graph.

I would appreciate any new ideas.

share|improve this question
there are lightweight alternatives to lm that do less work and are considerably faster (the Rcpp family has several examples) – baptiste Apr 14 '13 at 21:19
up vote 1 down vote accepted

I've done it with lm and it takes me less than two seconds to find all matches. Is that too long for you? If not, here's how I did it. I create a vector of all the 816 combinations of three points in your data and loop through it. When the r-squared is above 0.9999, I plot the line.

With this criteria, I get more fits on the left of the chart and a few on the right are not present. It seems that in your chart, some fits are not optimal. You might want to check that out

data1 <- read.table(text="
2012-01-11  99.06
2012-01-19 100.45
2012-02-07  98.11
2012-03-02 106.92
2012-04-19 106.78
2012-05-16 102.34
2012-07-05 119.05
2012-07-30 116.54
2012-08-03 116.06
2012-08-29 111.49
2012-09-07 112.69
2012-10-09 120.25
2012-10-17 119.70
2012-11-12 107.62
2012-12-05 105.53
2012-12-13 107.86
2013-01-10 109.77
2013-02-25 115.71")
data1 <-zoo(data1[,2],as.Date(data1[,1]))
plot.zoo(data1, type="p", col="blue", pch=16)

my.comb <-combn(data1, 3,simplify = FALSE)

for (i in 1:length(my.comb)){
vect <- my.comb[[i]]
reg <-lm(coredata(vect)~index(vect))
if(summary(reg)$adj.r.squared>0.9999) lines(my.comb[[i]], col="red")

enter image description here

share|improve this answer
Thanks for the answer. Two seconds is fine - The way i did it took much longer. in your solution you don't offer connection of more then three points. i'm actually willing to lower the threshold for R-Squared if more points are connected on a relatively reliable line. this is why i used the Adjusted R Squared. – haki Apr 15 '13 at 5:53
In the code I provided, the lines after the plot command add lines to the chart. You could repeat that block to add lines that connect with 4 points like this: my.comb <-combn(data1, 4,simplify = FALSE) I've tried it with combinations of six points and it takes about 40 seconds. Doing it for 3,4,5,6 points in the same chart should take a minute or two. You should also experiment with changing the threshold in if(summary(reg)$adj.r.squared>0.9999) – P Lapointe Apr 15 '13 at 9:35

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