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I am trying out dlib for a problem. Given the area of house and no of trees in the locality, the price of the house is provided. We wish to predict the price of the house using krr trainer for a given area and no Of Trees

area , noOfTrees, priceOFHouse
100 , 10 , 400
100 ,50, 2000
200 , 1,200
.... lots more

I planned to use kernel ridge regression

typedef matrix<double, 2, 1> sample_type;
typedef radial_basis_kernel<sample_type> kernel_type;
krr_trainer<kernel_type> trainer;

// i took trainign data and put htose data in 2 vectors 
//  std::vector<std::vector<double> > feactureVector;
//  std::vector<double> resultVector;
populateTrainigData(feactureVector, resultVector) ; 
// so featurevector[0] is {100,10} resultvector[0] is 400 
decision_function<kernel_type>  test = trainer.train(feactureVector, resultVector);

sample_type m;
m(0, 0) = 100; // area of house is 100 
m(1, 0) = 25; // no of treess in neighbourhood is 25 

double result = test(m);

At line decision_function<kernel_type> test it gives compile error .

d:\dlib-19.15\dlib\svm\krr_trainer.h(300): error C2664: 'const dlib::matrix<double,0,1,dlib::default_memory_manager,dlib::row_major_layout> &dlib::empirical_kernel_map<dlib::radial_basis_kernel<sample_type>>::project(const dlib::matrix<T,2,1,dlib::default_memory_manager,dlib::row_major_layout> &,double &) const': cannot convert argument 1 from 'const std::vector<double,std::allocator<_Ty>>' to 'const dlib::matrix<T,2,1,dlib::default_memory_manager,dlib::row_major_layout> &'
1> 

Can someone point me in the right direction where I can solve this problem as the example on the dlib site shows only a single dimension example. I am using that as a reference guide and the error & system is strange to me.

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  • Removed ml tag, which is for the programming language ML. Jul 31, 2018 at 9:57

2 Answers 2

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It doesn't support doing that. You should instead call .train() once for each of your outputs. That is, train separate predictors for each output variable.

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  • You mean for each line in training set say 1000 lines , we will be calling train method for 1000 times . Sir how will train object ie returned ie decision maker be updated then ? Because my output is just 1 ie cost of house and features are area and no of trees
    – MAG
    Jul 31, 2018 at 11:43
  • I mean use it just like the krr_example program in dlib shows.
    – Davis King
    Jul 31, 2018 at 14:02
  • Sir , do you have a link please for above. I was initially referring to dlib.net/krr_regression_ex.cpp.html but it has single dimensional.
    – MAG
    Jul 31, 2018 at 15:15
  • That’s the one I’m talking about. Train a single dimension at a time.
    – Davis King
    Jul 31, 2018 at 15:17
  • Oh .. sir , so you means I will have decision_function<kernel_type> test1 and decision_function<kernel_type> test2 ; for the 2 features namely area and number of trees . Then I have 2 results as well ie double cost1 = test1(m1) and double cost2= test2(m2) ; how will i get the final cost ..
    – MAG
    Jul 31, 2018 at 16:03
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I think you got an error because of this line:

std::vector<std::vector<double> > feactureVector;

your features should be a vector of sample_type like this:

std::vector< sample_type > feactureVector;

like in this example: http://dlib.net/krr_regression_ex.cpp.html

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