Neural networks architectural problem
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I would like to use MLPs to classify participants (about 600) that will respond to a psychological test. The test has about 300 items, organized in 15 scales.
The decision to use ANNs derives from an hypothesized non linearity of the items scores patterns.
Due to the paucity of the participants I started considering to implement 15 MLPs, instead of a unique MLP for the entire test.
MLP 1~15: each MLP will receive the inputs from the items that belong to a single scale (e.g., MLP "A" will receive 20 inputs from Scale "A" items, MLP "B" from Scale "B" items and so on).
MLP 16: will receive inputs from the scales scores to capture - at least partially - those relations that I have lost by "splitting up" the 300 items.
I will train these 15 + 1 MLPs with the same dataset.
Now, does this procedure make any sense to you or I am addressing the issue the wrong way?
One last question. Could I treat the outputs of these 15 + 1 MLPs as inputs of a final ANN (would be the 17th) that will combine all the results into a single classification decision?
Many thanks to you all.
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