using 2D data as input for a neural network

have data that i'd like to use as input for a pattern recognition neural net project
the data comes as a series of tables, each of which needs to be input all at once, rather than one row or one col at a time
so, I figure it needs to be "spooled" out to one long array, and the net will need at least that many input neurons
so, two questions:
1) does it matter how it gets spooled out? say, column by column, row by row, or either as long as I'm consistent?
2) the tables are different sizes, should I just pad the smaller ones out with zeros? nulls?
thanks

 Accepted Answer

0. An input layer node is not a neuron. Only hidden and output layer nodes are neurons.
1. Use the colon operator matrix(:) to convert matrices to a single column.
2. No need to pad with zeros or nulls. Just stack the converted matrices ([a(:);b(:);...;z(:)]
Hope this helps.
Thank you for formally accepting my answer
Greg

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Asked:

on 23 Apr 2016

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on 25 Apr 2016

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