# calculate distance of multi type data points

I want to classify a data set via KNN method in Matlab but I have problem in calculating the distance of data points which have different data types.

Each point in my data set has various features with numeric and string types something like `X{Size,Lenght,Age,Coating,PipeType,Location}` The first three features have numeric and second three have string (one or two words) values.

If I map string features to the binary codes for example for Coating values include `{Concrete encased,Gunite,Tar Coating,Poliken Coating}` if I consider two bits `{00,01,10,11}` Is it logical if I calculate the distance of X and Y like this:

``````X:{Size,Lenght,Age,Coating,PipeType,Location}
Y:{Size,Lenght,Age,Coating,PipeType,Location}

Distance= Euclidean Distance (X,Y) on {Size,Lenght,Age}
+ Hamming Distance (X,Y) on {Coating}
+ Hamming Distance (X,Y) on {PipeType}
+ Hamming Distance (X,Y) on {Location}
``````

or

``````Distance= Euclidean Distance (X,Y) on {Size,Lenght,Age}
+ {1 if a x and y have similar coating values and 0 otherwise}
+ ...
``````

I really appreciate your suggestions. Suggested articles and documents in this area would be useful as well.

Thanks Mahsa

-

So, you can convert `'Coating'` feature into a binary vector of length 4:
``````coating_vec( ii ) == 1 iff instance_coating == Coating_type{ii}
That is, for an instance with coating value "Tar" (the third possible Coating value) the binary feature vector for coating would be `[0 0 1 0]`.
Doing the same for `PipeType` and `Location`, you'll endup with a feature vector of length `3 + 4 + numPossible(PipeType) + numPossible(Location)`. Taking the Euslidean distance between these combined feature vectors should do the trick for you.