combining text and numeric matrices

My dataset has 6 predictors (all ordinal text values e.g. good, better, best) and 1 response (ordinal numeric value e.g. 1,2,3) column. When I’m trying to combine these into 7 columns for further classification study, I’m shown the following error ’ Error using horzcat Dimensions of matrices being concatenated are not consistent. ’ Any suggestion?

10 comentarios

Birdman
Birdman el 7 de Feb. de 2018
Editada: Birdman el 7 de Feb. de 2018
Can you share your data in a mat file and your code ?
Walter Roberson
Walter Roberson el 7 de Feb. de 2018
When you talk about ordinal do you mean you are using categorical variables?
Hasnain Ali
Hasnain Ali el 8 de Feb. de 2018
Editada: Hasnain Ali el 8 de Feb. de 2018
The matrix looks like the pic attached. I can convert the categorical variables(which are ordinal as well) into numerical values, but I find assigning an arbitrary numeric value to the text values, unjustified. At the same time, I find logistic regression wouldn't classify the matrix in its original form.
Walter Roberson
Walter Roberson el 8 de Feb. de 2018
Editada: Walter Roberson el 8 de Feb. de 2018
But it appears you would have to convert the inputs to numeric, but not the response variable
Hasnain Ali
Hasnain Ali el 8 de Feb. de 2018
Editada: Hasnain Ali el 8 de Feb. de 2018
Walter Roberson,
It isn't working. Logistic regression app in Matlab wouldn't even identify matrix (XYO) on which I wish to employ logistic regression. I did exactly what you told.
First converted predictor text to numeric value(e.g. 1,2,3). Then,
XY=[Predictor1 Predictor2 Predictor3];
XY=num2cell(XY);
XYO=[XY Outcome];
Walter Roberson
Walter Roberson el 8 de Feb. de 2018
If you use the mnrfit() routine then you would not convert XY to cell, and you would pass in the outcomes as the second parameter rather than building a single XYO matrix.
Hasnain Ali
Hasnain Ali el 8 de Feb. de 2018
I did even this. It still won't accept response variable as cell value (text entries). It displays the following error.
Error using mnrfit (line 142) Inputs must be floats, namely single or double.
Walter Roberson
Walter Roberson el 8 de Feb. de 2018
The R2017b documentation says that the Y may be categorical.
Hasnain Ali
Hasnain Ali el 9 de Feb. de 2018
Oh! I have R2015b version. Walter Roberson, is there any other method you'd know of?
Walter Roberson
Walter Roberson el 9 de Feb. de 2018
Response values, specified as a column vector or a matrix. Y can be one of the following:
  • An n-by-k matrix, where Y(i,j) is the number of outcomes of the multinomial category j for the predictor combinations given by X(i,:). In this case, the number of observations are made at each predictor combination.
  • An n-by-1 column vector of scalar integers from 1 to k indicating the value of the response for each observation. In this case, all sample sizes are 1.
  • An n-by-1 categorical array indicating the nominal or ordinal value of the response for each observation. In this case, all sample sizes are 1.

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Respuestas (1)

Kai Domhardt
Kai Domhardt el 7 de Feb. de 2018
I am going to assume, that your predictors matrix is of type 'm x 6 Cell'.
temp = randi(3,10,6);
predictors = cell(10,6);
predictors(temp==1) = {'good'};
predictors(temp==2) = {'better'};
predictors(temp==3) = {'best'};
response = randi(3,10,1);
This results in:
predictors =
{'good' } {'good' } ...
{'better'} {'best' } ...
... ...
and
response =
1
2
...
When you want to combine them you, need to convert your numerical array 'response' into an cell array to match the type of 'predictors':
combined = [predictors, num2cell(response)];

1 comentario

Hasnain Ali
Hasnain Ali el 8 de Feb. de 2018
Hey Kai Domhardt! Thank you. This is helpful.
However, I'm not able to perform logistic regression over the dataset. Can logistic regression be performed on ' combined' matrix that you've just generated?

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el 7 de Feb. de 2018

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el 9 de Feb. de 2018

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