# Selecting data based on the distance from a query point in Matlab

I have a data-set that has four columns [X Y Z C]. I would like to find all the C values that are in a given sphere centered at [X, Y, Z] with a radius r. What is the best approach to address this problem? Should I use the clusterdata command?

-

Here is one solution that uses naively euclidean distance:

say `V = [X Y Z C]` is your dataset, `Center = [x,y,z]` is the center of the sphere, then

``````dist = bsxfun(@minus,V(:,1:3),Center);  % // finds the distance vectors
% // between the points and the center
dist = sum(dist.^2,2); % // evaluate the squares of the euclidean distances (scalars)
idx = (dist < r^2);    % // Find the indexes of the matching points
``````

The good `C` values are

`````` good = V(idx,4);  % // here I kept just the C column
``````
-
This worked! Thanks Acorbe. –  Cerberus Dec 12 '12 at 21:51

This is not "cluster analysis": You do not attempt to discover structure in your data.

Instead, what you are doing, is commonly called a "range query" or "radius query". In classic database terms, a `SELECT`, with a distance selector.

You probably want to define your sphere using euclidean distance. For computational purposes, it actually is beneficial to instead of squared Euclidean, by simply taking the square of your radius.

I don't use matlab, but there must be tons of examples of how to compute the distance of each instance in a data set from a query point, and then selecting those objects where the distance is small enough.

I don't know if there is any good index structures package for Matlab. But in general, at 3D, this can be well accelerated with index structures. Computing all distances is `O(n)`, but with an index structure only `O(log n)`.

-