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I'm doing data analysis with MATLAB and I have a bunch of files with missing data here and there and somewhere even whole days or months worth of data is missing, because sensor devices have been fixed or changed or something like that.

My question is: How to decide what to do with missing data? When is it best to set missing data just equal to zero and when to use interpolation or something like that?

My professor adviced me just to set the missing values equal zero, should I proceed this way? =)


edit: My data consists of weather data: nitrogen oxyde, nitrogen dioxide, temperature, etc.. Here is a sample of my data values (-99 means error value)

5 3 0 6 2 0 0 -99 17 24 94 74 -99 -99 -99 -99 10 5 3 5 5 17 1 3 3 0 6 2 0 0 0 -99 13 25 50 35 19 8 7 3 3 4 4 6 6 7 2 3 0 1 0 3 0 0 0 -99 5 7 28 27 16 9 7 7 7 9 9 11 6 12

This is just a small sample, I have lots of this data

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closed as off topic by High Performance Mark, Marek Grzenkowicz, asgoth, Björn Kaiser, Robert Mearns Jan 10 '13 at 13:12

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Statistically speaking, this is a big question, and if we're honest with each other, it isn't really programming related. The short answer is that it depends entirely on your application. In some situations setting missing data to zero is disastrous. In others, it is the right thing to do. Your best bet is probably to go to a site like Cross-Validated, describe your application and ask the question there. Oh, and here is a good Wikipedia link on Missing Data to get you started. –  Colin T Bowers Jan 10 '13 at 10:25
If 0 is ever a valid data point in your files you should not use it as a code to represent missing data. If you do how will you distinguish between, say, a temperature of and a missing measurement ? –  High Performance Mark Jan 10 '13 at 10:25
It is completely dependent on your data and model etc. Matlab has some built in missing data imputation methods such as mathworks.com/help/bioinfo/ref/knnimpute.html but there are many many ways to impute missing data include case deletion for example which might be appropriate depending on how many records have missing fields. –  Dan Jan 10 '13 at 10:27
As @ColinTBowers has observed, this is not a programming question and is therefore off-topic. –  High Performance Mark Jan 10 '13 at 10:36

1 Answer 1

up vote 1 down vote accepted

I do not know what kind of data you are using, but I think you should consider using NaNs.

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I added a sample of my data =) hope that helps –  jjepsuomi Jan 10 '13 at 10:32
I would say that NaN sounds like the way to go here - they can be used to represent 'we don't know what should go here' as much as anything else. Bear in mind that you can only use NaNs in single and double arrays though. If using uint8/uint16, you could have a separate 'missing' logical vector to store the positions of known missing values. –  Bill Cheatham Jan 10 '13 at 18:15

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