Increasing efficiency of one-hot encoding

I have a dataset - 50 variables and an output. There are 17 categories for this dataset. I want to do feature selection on this dataset to determine which variables are significant. I am using the fsrnca function + one-hot encoding (so adding a matrix of size no.observations*17, with 1s and 0s to deal with the categories and concatenating this maxtrix to X so X' = [X_categories X] & y remains as it is. I am wondering if there is a faster way of doing this (than this standard one-hot encoding approach) (run-time is very slow as very high dimensionality). Hope this makes sense. Thanks!

3 comentarios

Mohammad Sami
Mohammad Sami el 16 de En. de 2020
Which step is taking very long?
darova
darova el 16 de En. de 2020
And where is the code?
Athul Prakash
Athul Prakash el 28 de En. de 2020
Kindly provide your code so that others can investigate which step is slowing you down.

Iniciar sesión para comentar.

Respuestas (1)

Walter Roberson
Walter Roberson el 28 de En. de 2020
catnum = uint8(TheCategorical(:).');
numcat = max(catnum);
OH = zeros(NumberOfObservations, numcat);
OH(sub2ind(size(OH), 1:NumberOfObservations, catnum)) = 1;
Or
catnum = uint8(TheCategorical(:).');
OH = sparse(1:NumberOfObservations, catnum, 1);

Categorías

Preguntada:

el 14 de En. de 2020

Respondida:

el 28 de En. de 2020

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