I am working on a Time Series Forecasting problem using LSTM. The input contains several features, so I am using a Multivariate LSTM. The problem is that there are some missing values, for example:

    Feature 1     Feature 2  ...  Feature n
 1    2               4             nan
 2    5               8             10
 3    8               8              5
 4    nan             7              7
 5    6              nan            12

Instead of interpolating the missing values, that can introduce bias in the results, because sometimes there are a lot of consecutive timestamps with missing values on the same feature, I would like to know if there is a way to let the LSTM learn with the missing values, for example, using a masking layer or something like that? Can someone explain to me what will be the best approach to deal with this problem? I am using Tensorflow and Keras.


As suggested by François Chollet (creator of Keras) in his book, one way to handle missing values is to replace them with zero:

In general, with neural networks, it’s safe to input missing values as 0, with the condition that 0 isn’t already a meaningful value. The network will learn from exposure to the data that the value 0 means missing data and will start ignoring the value. Note that if you’re expecting missing values in the test data, but the network was trained on data without any missing values, the network won’t have learned to ignore missing values! In this situation, you should artificially generate training samples with missing entries: copy some training samples several times, and drop some of the features that you expect are likely to be missing in the test data.

So you can assign zero to NaN elements, considering that zero is not used in your data (you can normalize the data to a range, say [1,2], and then assign zero to NaN elements; or alternatively, you can normalize all the values to be in range [0,1] and then use -1 instead of zero to replace NaN elements.)

Another alternative way is to use a Masking layer in Keras. You give it a mask value, say 0, and it would drop any timestep (i.e. row) where all its features are equal to the mask value. However, all the following layers should support masking and you also need to pre-process your data and assign the mask value to all the features of a timestep which includes one or more NaN features. Example from Keras doc:

Consider a Numpy data array x of shape (samples, timesteps,features), to be fed to an LSTM layer. You want to mask timestep #3 and #5 because you lack data for these timesteps. You can:

  • set x[:, 3, :] = 0. and x[:, 5, :] = 0.

  • insert a Masking layer with mask_value=0. before the LSTM layer:

model = Sequential()
model.add(Masking(mask_value=0., input_shape=(timesteps, features)))

Update (May 2021): According to an updated suggestion from François Cholle, it might be better to use a more meaningful or informative value (instead of using zero) for masking missing values. This value could be computed (e.g. mean, median, etc.) or predicted from the data itself.

  • Thanks for your answer. Regarding the masking solution, can you also comment on the afterwards padding procedure ? I assume, after masking nan value one need to inform them by padding ? and if so, how one can inform the lstm for example. – user702846 Jan 17 '20 at 13:06
  • I have posted my question. stats.stackexchange.com/questions/445254/… – user702846 Jan 17 '20 at 14:39
  • 1
    In the newest edition of that book, Chollet does not advise anymore to use an arbitrary value (like 0). Instead, he suggests imputing a more meaningful one (e.g. mean, median, or based on a prediction). – nocibambi May 21 at 13:56
  • 1
    @nocibambi Thanks a lot for the update. I just added it to the answer. – today May 23 at 3:22

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