Structure of Strings

Hi!
I want to specify possible parameters for the naive bayes classifier. For this reason, I have created a structure with a field for each parameter and a matrix with possible values.
bayesPosParams.distribution = ['normal'; 'kernel'];
bayesPosParams.prior = ['empirical'; 'uniform'];
bayesPosParams.KSWidth = 'scalar';
bayesPosParams.KSSupport = ['unbounded'; 'positive'];
Unfortunately that does not work: ??? Error using ==> vertcat CAT arguments dimensions are not consistent.
All Strings need to have the same length. What would be the best possibility to specify the parameters nice and consistently?
Thanks in advance, Jay

 Risposta accettata

Andrei Bobrov
Andrei Bobrov il 11 Lug 2011
bayesPosParams.distribution = {'normal'; 'kernel'};
bayesPosParams.prior = {'empirical'; 'uniform'};
bayesPosParams.KSWidth = 'scalar';
bayesPosParams.KSSupport = {'unbounded'; 'positive'};

Più risposte (1)

Jay
Jay il 11 Lug 2011

1 voto

Hi Andrei!
Then every field would be a cell array, correct? What's the differences between this approach and using, my just discovered method, bayesPosParams.distribution = char('normal', 'kernel')?
I will want to operate on bayesPosParams with for-loops.
Thanks!

6 Commenti

Jan
Jan il 11 Lug 2011
Using CHAR creates a rectangular matrix by padding shorter strings with spaces. Then comparing a row of the matrix with STRCMP is harder, because the trailing spaces have to be considered. Therefore the cell string is more comfortable and more efficient:
CHAR: unblank(bayesPosParams.distribution(i, :))
CELLSTRING: bayesPosParams.distribution{i}
Andrei Bobrov
Andrei Bobrov il 11 Lug 2011
Thanks Jan, I full agree with Jan
Jay
Jay il 11 Lug 2011
hi, thanks a lot!
If I'd do:
for dis = bayesPosParams.distribution
then dis would become 1x1 cellarrays ( {normal} and {kernel} ) right?
How can I get dis to get the two chararrays 'normal' and 'kernel'?
Thanks again,
Jay
Andrei Bobrov
Andrei Bobrov il 12 Lug 2011
no, dis would become 2x1 cellarrays
>> dis = bayesPosParams.distribution
dis =
'normal'
'kernel'
>> dis{1} % call char array
ans =
normal
>> dis{2} % call char array
ans =
kernel
Jay
Jay il 12 Lug 2011
right, i want to test all possible combinations of parameters.
only way i could think of is to do this with four nested for-loops. Probably very slow, but don't know how to do that else.
So I would for example want to iterate over all chararray-values of bayesPosParams.distribution, namely 'normal' and 'kernel'.
How do I do that?
Something like:
for dis = bayesPosParams.distribution{}
....
but this does not seem right either...
Andrei Bobrov
Andrei Bobrov il 12 Lug 2011
dis - cell array, and may be any operation with 'dis', as with cellarrays

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