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I am trying to write the DBSCAN algorithm to cluster a set of points, but the results I am getting are really bad. This could be because of the data, but it's not just that. I am getting clusters of size < minPoints which should not happen.

What am I doing wrong? I have gone through the code many times, and I cannot figure out what the problem is.

I referred the algorithm given on the DBSCAN Wikipedia page.

private static int[] dbScan(String[] points, int epsilon, int minPts) {
    int cluster = 0;
    // visited stores if point has been visited
    boolean[] visited = new boolean[points.length];
    // pointsCluster stores which cluster a point has been assigned to
    int[] pointsCluster = new int[points.length];
    for(int iii = 0; iii < points.length; iii++) {
        // if point iii is already visited, do nothing  
        if(visited[iii]) continue;                      
        visited[iii] = true;    // mark point iii as visited
        // get points in neighborhood of point iii
        HashSet<Integer> neighbors = epsilonNeighbors(points, iii, epsilon);    
        if(neighbors.size() < minPts) {
            // if number of neighbors < minPts, mark point iii as noise
            pointsCluster[iii] = -1;
        } else {
            ++cluster;                      // else, start new cluster
            expandCluster(points, iii, neighbors, pointsCluster, visited, cluster, epsilon, minPts);
    return pointsCluster;

 * Expands a cluster if a point is not a noise point
 * and has > minPts in its epsilon neighborhood
private static void expandCluster(String[] points, int seedPoint, HashSet<Integer> neighbors,
        int[] pointsCluster, boolean[] visited, int cluster, int epsilon, int minPts) {

    pointsCluster[seedPoint] = cluster;     //assign cluster to seed point
    // create queue to process neighbors
    Queue<Integer> seeds = new LinkedList<Integer>();
    while(!seeds.isEmpty()) {
        int currentPoint = (Integer) seeds.poll();
        if(!visited[currentPoint]) {
            visited[currentPoint] = true;       // mark neighbor as visited
            // get neighbors of this currentPoint
            HashSet<Integer> currentNeighbors = epsilonNeighbors(points, currentPoint, epsilon);
            // if currentPoint has >= minPts in neighborhood, add those points to the queue
            if(currentNeighbors.size() >= minPts) {
        // if currentPoint has not been assigned a cluster, assign it to the current cluster
        if(pointsCluster[currentPoint] == 0) pointsCluster[currentPoint] = cluster;

 * Returns a HashSet containing the indexes of points which are
 * in the epsilon neighborhood of the point at index == currentPoint
private static HashSet<Integer> epsilonNeighbors(String[] points, int currentPoint, int epsilon) {
    HashSet<Integer> neighbors = new HashSet<Integer>();
    String protein = points[currentPoint];
    for(int iii = 0; iii < points.length; iii++) {
        int score = similarity(points[iii], points[jjj]);
        if(score >= epsilon) neighbors.add(iii);
    return neighbors;
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Also consider looking at the original publications, instead of Wikipedia! –  Anony-Mousse Apr 4 '13 at 13:38

1 Answer 1

When your results are bad, it might be because your data is bad (for density based clustering), or because your parameters are bad.

In fact, DBSCAN can produce clusters smaller than minPts, if they touch each other. They can then "steal" border points from one another.

How about using e.g. ELKI to verify your algorithm output?

share|improve this answer
Wow, you're right. I didn't think about clusters "stealing" border points. Thanks a lot. So, from the looks of it, the algorithm looks fine, right? –  Bonz0 Apr 4 '13 at 17:41
I didn't check it in detail. And your epsilonNeighbors references the undefined variable jjj. Also note that Java collections perform really bad with primitive types. You really might want to try ELKI, because it's really really fast. –  Anony-Mousse Apr 4 '13 at 18:17
Yes, that jjj is supposed to be currentPoint. Will look into ELKI. Thanks for your help. –  Bonz0 Apr 5 '13 at 8:13

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