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I'm comparing hourly data measurements recorded for 5 years (2007-2011) where the number of measurements in each year is as follows:

2007 = 8760 measurements;
2008 = 8784 measurements; <-- leap year
2009 = 8760 measurements;
2010 = 8760 measurements;
2011 = 8760 measurements;

What is the best method for comparing each time series? Is it better to add an additional 24 measurements (of nans) for february 29th for the non leap years? or, is it more efficient to interpolate the data onto the same time frame (where time is given in decimal day of year)?

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What comparison are you trying to make? The data sets don't correspond, so you probably aren't going to be comparing like with like. – walkytalky Mar 30 '12 at 9:55
up vote 2 down vote accepted

That depends entirely on the kind of data you are measuring. If it's natural-world stuff like weather data, you probably care more about matching solstice to solstice and equinox to equinox. If it's financial market data, you may want to line up calendars and possibly exclude the leap day entirely.

It's difficult to give more specific advice without more background.

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The data is for water temperature. So, Im looking at how the temperature varies from one year to the other and maybe finding the correlation, which the data needs to be the same size for this. – Emma Mar 30 '12 at 10:14
If you match up seasonal markers such as solstices and equinoxes, the data will match up. The match-up simply won't correspond exactly to calendar years. – Marcelo Cantos Mar 30 '12 at 10:16

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