I'm using the clustering module in python's scikit learn, and I'd like to use a Normalized Euclidean Distance. There is no built-in distance for this (that i know of) Here's a list.

So, I want to implement my own Normalized Euclidean Distance using a callable. The function is part of my `distance`

module and is called `distance.normalized_euclidean_distance`

. It takes three inputs: `X`

,`Y`

, and `SD`

.

However, Normalized Euclidean Distance requires standard deviation for the population sample. But, the pairwise distance in scipy only allows two inputs: `X`

and `Y`

.

How do I allow it to take an additional argument?

I tried putting it in as a `**kwarg`

, but that didn't seem to work:

```
cluster = DBSCAN(eps=1.0, min_samples=1,metric = distance.normalized_euclidean, SD = stdv)
```

where `distance.normalized_euclidean`

is the function that I wrote that takes in two arrays, `X`

and `Y`

and computes the normalized euclidean distance between them.

...but this throws an error:

```
TypeError: __init__() got an unexpected keyword argument 'SD'
```

What is the way to use additional keyword arguments?

Here it says `Any further parameters are passed directly to the distance function.`

, which made me think that this would be acceptable.

`stdv`

, but this seems like a dangerous solution. – Candic3 Aug 7 '15 at 5:09`distance.normalized_euclidean`

? – yangjie Aug 7 '15 at 5:33`SD`

used? Isn't it also an argument of`distance.normalized_euclidean`

? – yangjie Aug 7 '15 at 6:43`distance.normalized_euclidean`

. – Candic3 Aug 7 '15 at 16:43