Stack Overflow is a community of 4.7 million programmers, just like you, helping each other.

Join them; it only takes a minute:

Sign up
Join the Stack Overflow community to:
  1. Ask programming questions
  2. Answer and help your peers
  3. Get recognized for your expertise

I currently have a lot of data that will be used to train a prediction neural network (gigabytes of weather data for major airports around the US). I have data for almost every day, but some airports have missing values in their data. For example, an airport might not have existed before 1995, so I have no data before then for that specific location. Also, some are missing whole years (one might span from 1990 to 2011, missing 2003).

What can I do to train with these missing values without misguiding my neural network? I though about filling the empty data with 0s or -1s, but I feel like this would cause the network to predict these values for some outputs.

share|improve this question

I'm not an expert, but surely this would depend on the type of neural network you have?

The whole point of neural networks is they can deal with missing information and so forth.

I agree though, setting empty data with 1's and 0's can't be a good thing.

Perhaps you could give some info on your neural network?

share|improve this answer
This network is just for my won educational purposes, but I have daily weather data (average wind speed, average/high/low temps, etc.) which I would use to predict future weather. It is a 4-layer (input, 2 hidden, output) recurrent network. The inputs are the day of the year (0 to 364) and various weather information (the data previously mentioned). The output should be the predicted weather data for the next period. – Matt Bell May 22 '11 at 21:00
Correction: there is only one hidden layer. This would either be an Elman or Jordan network. – Matt Bell May 22 '11 at 21:34

I'm using a lot NNs for forecasting and I can say you that you can simply leave that "holes" in your data. In fact, NNs are able to learn relationships inside observed data and so if you don't have a specific period it doesn't matter...if you set empty data as a constant value you will have give to your training algorithm misleading information. NNs don't need "continuous" data, in fact it's a good practise to shuffle the data sets before training in order to do the backpropagation phase on not-contiguous samples...

share|improve this answer

Well a type of neural network named autoencoder is suitable for your work. Autoencoders can be used to reconstruct the input. An autoencoder is trained to learn the underlying data manifold/distribution. However, they are mostly used for signal reconstruction tasks such as image and sound. You could however use them to fill the missing features.

There is also another technique coined as "matrix-factorization" which is used in many recommendation systems. People use matrix factorization techniques to fill huge matrices with a lot of missing values. For instance, suppose there are 1 million movies on IMDb. Almost no one has watched even 1/10 of those movies throughout her life. But she has voted for some movies. The matrix is N by M where N is the number of users and M the number of movies. Matrix factorization are among the techniques used to fill the missing values and suggest movies to the users based on their previous votes for other movies.

share|improve this answer

Your Answer


By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.