# Linear regression to predict the y-value for the trend series

I have [x,y] pairs where x value is in Unix- time values and y in float. I am needing to find the best fit line for this series. I am using the linear regression model as in this link below:

http://dracoblue.net/dev/linear-least-squares-in-javascript/159/

I am getting the values correctly. But, Since my x-data is in unix timestamp, I get really huge values. So, has any one got any suggestions on how to tone it down? I tried using seconds instead of milliseconds, by diving the x-data by 1000. But, that just makes the difference in the final y-values very negligible and I don't see a proper trendline.

Any help would be appreciated.

Thanks,S.

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POSIX time_t values (aka Unix timestamps) are already in units of seconds. –  Jim Lewis Aug 2 '11 at 19:24

Make it start at 0 : substract each occurence of a x value by what was the first x (say x0) value.

For instance, line 31 of your link : replace `x = values_x[v];` with `x = values_x[v] - values_x[0];` If values_x is ordered and ascending then it should be ok

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You mean subtract the x with the previous x values? Like x[i]=xVal[i]-xVal[i-1]? –  reg_frenzy Aug 2 '11 at 19:21
Nope, substract it with the first value ! See I edited my answer, try it and tell me –  Cystack Aug 2 '11 at 19:22
That did the track! Thanks tons =) –  reg_frenzy Aug 2 '11 at 19:30