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I've to implement the DBSCAN algorithm. Assuming to start from this pseudocode

DBSCAN(D, eps, MinPts)
   C = 0
   for each unvisited point P in dataset D
      mark P as visited
      NeighborPts = regionQuery(P, eps)
      if sizeof(NeighborPts) < MinPts
         mark P as NOISE
      else
         C = next cluster
         expandCluster(P, NeighborPts, C, eps, MinPts)

expandCluster(P, NeighborPts, C, eps, MinPts)
   add P to cluster C
   for each point P' in NeighborPts 
      if P' is not visited
         mark P' as visited
         NeighborPts' = regionQuery(P', eps)
         if sizeof(NeighborPts') >= MinPts
            NeighborPts = NeighborPts joined with NeighborPts'
      if P' is not yet member of any cluster
         add P' to cluster C

regionQuery(P, eps)
   return all points within P's eps-neighborhood

My code has to run on an Amazon EC2 Instance with Ubuntu Linux 64 bit.

The function regionQuery queries a MongoDB database to obtain all points within P's eps-neighborhood.

So, according to you, what is the best programming language to implement it to improve performances? C, PHP, Java (I don't think)?

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just curious; how is C = next cluster implemented? is there a unmentioned cluster list somewhere? –  lurscher May 27 '12 at 15:35
    
@lurscher yeah, in database –  Marco Sero May 27 '12 at 16:31
    
Note that DBSCAN is properly spelled DBSCAN, it is an abbreviation. N for example is for Noise. –  Anony-Mousse May 30 '12 at 15:33
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3 Answers

up vote 3 down vote accepted

I assume that you have a lot of points and need results fast - otherwise you can use almost anything.

It seems like map-reduce job for me

Map part would be loop "for each unvisited point" and should emit data construct containing neighbors, candidate clusters and whatever else. In case point is classified as noise it should emit nothing.

Cluster expansion shall go into reduce and possibly finalize part - also language choice would be javascript and everything would happen inside mongo

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Really great advice :) Thanks –  Marco Sero May 29 '12 at 16:51
    
In the beginning, all points are "unvisited". Sorry, this won't work with a single map-reduce step. Plus, how is the mapper to construct neighbors? –  Anony-Mousse Jun 2 '12 at 9:53
    
@Anony-Mousse After Konstantin's advice, I've realized a version of DBScan-MapReduce full working in MongoDB. When it will be ready, I'll post here ;) –  Marco Sero Jun 2 '12 at 10:43
    
Would like to see it %) –  Konstantin Pribluda Jun 2 '12 at 11:01
    
@KonstantinPribluda Sorry for delay, here it is :) –  Marco Sero Oct 5 '12 at 15:18
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I forgot to reply to my own question. I finally implemented a MapReduce version of DBSCAN algorithm. You can find it here (Hadoop).

This is the pseudo-code of how it works:

function map(P, eps, MinPts)
    if P is unvisited then
        mark P as visited
        NeighborPts = regionQuery(P, eps)
        if sizeof(NeighborPts) < MinPts then
            do nothing
        else
            mark P as clusterized
            prepare the key
            create new cluster C
            C.neighborPoints = NeighborPts
            C.points = P
            emit(key, C)

function reduce(key, clusters, eps, MinPts)
    finalC is the final cluster
    for all C in clusters do
        finalC.points = finalC.points ∪ C.points
        for all P in C.neighborPoints do
            if P′ is not visited then
                mark P′ as visited
                NeighborPts′ = regionQuery(P′,eps)
                if sizeof(NeighborPts′) ≥ MinPts then
                    NeighborPts = NeighborPts ∪ NeighborPts′
                end if
            end if
            if P′ is not yet member of any cluster then
                add P′ to cluster C
            end if
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How do you do efficient regionQuery on MapReduce? –  Anony-Mousse Oct 5 '12 at 16:26
    
@Anony-Mousse thanks geospatial indexing in MongoDB, I simply run a query –  Marco Sero Oct 6 '12 at 9:02
    
Which likely kills your performance. Sorry, but this looks like the most naive and least performant way of computing DBSCAN in MapReduce. And I'd not at all be surprised if - in particular for 2D data - any classic database with a single-host DBSCAN will kick your ass performance wise, sorry. Did you benchmark yet? –  Anony-Mousse Oct 7 '12 at 10:02
    
@Anony-Mousse there are a lot of reason why we chosen MongoDB and we implemented the system in this way. Please, enlighten me, how would you have done? –  Marco Sero Oct 7 '12 at 12:46
    
The point is: it is not MapReduce anymore when you flood your database server(s) with region queries. That does not at all scale in a MapReduce way, and the functions are neither maps, nor reduces with the MapReduce scheme. So while you are (ab-)using your MR engine, it isn't a formal MapReduce anymore (and you lose all the performance guarantees). Have a look at your CPU usages. The mapper and reducer probably are idle 99%, while the DB server is under max load. You need to use a parallel way of doing the range joins; and that cannot be a MapReduce program, because it is not linear. –  Anony-Mousse Oct 15 '12 at 10:28
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Google for "parallel DBSCAN", and you will find a number of articles discussing how to parallelize this algorithm. Usually, it will change the algorithm quite a bit, for example it will require merging clusters.

Canopy pre-clustering may be a good preprocessing step for DBSCAN, too.

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