Why does layerNormalizationLayer in Deep Learning Toolbox include T dimension into the batch?

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Hello,
While implementing a ViT transformer in Matlab, I found at that the layerNormalizationLayer does include the T dimension in the statistics calculated for each sample in the batch. This is problematics when implementing a transformer, since tokens correspond to the T dimension and reference implementations calculate the statistics separately for each token.
Thx

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John Smith
John Smith il 24 Mar 2023
It seems Mathworks have listened and changed the behavior of layerNormalizationLayer in R2023a.:
Starting in R2023a, by default, the layer normalizes sequence data over the channel and spatial dimensions. In previous versions, the software normalizes over all dimensions except for the batch dimension (the spatial, time, and channel dimensions). Normalization over the channel and spatial dimensions is usually better suited for this type of data. To reproduce the previous behavior, set OperationDimension to "batch-excluded".

Più risposte (1)

Matt J
Matt J il 13 Mar 2023
Perhaps you can fold your T dimension into the C dimension and use a groupNormalizationLayer instead, with the groups defined so that different T belong to different groups.
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John Smith
John Smith il 15 Mar 2023
Perhaps lamenting would cause someone from Mathworks to take notice and add the capability to the code base. Sigh ...

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