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seen May 18 at 18:36

Mar
30
revised Strange javascript behaviour (assignments)
Added clarifying tags
Mar
30
suggested suggested edit on Strange javascript behaviour (assignments)
Mar
30
answered How to make gradient border of an image using java?
Mar
30
answered Strange javascript behaviour (assignments)
Mar
29
accepted Reverse Rectangle Packing
Mar
29
answered Reverse Rectangle Packing
Mar
29
awarded  Organizer
Mar
29
revised counter if click the button +1
Added java keyword
Mar
29
suggested suggested edit on counter if click the button +1
Mar
29
comment How can I stop the player leaving the grid?
Try "case 37: $('#player').css('left', Math.max(15, Math.min(9*50 + 15,position.left - 50)) + 'px'); break;" for "left" and similar for the other cases.
Mar
29
comment Evaluate all javascript in html to get final html document (java)
Well, after the JS is applied you don't get HTML, but a DOM tree instead. A DOM tree is basically a set of nodes with attributes, so the easiest way would be to traverse it and print the nodes.
Mar
26
awarded  Teacher
Mar
26
answered Java BufferedImage.setRGB gives grey scale on image of type 13?
May
11
answered XML Schema: Element with attributes containing only text?
Feb
20
comment Metric/density based clustering/grouping
Thank you! That last reply really helped me understanding my problem better.
Feb
18
revised Metric/density based clustering/grouping
added 4 characters in body
Feb
18
comment Metric/density based clustering/grouping
Not a duplicate. The question is actually quite different.
Feb
17
comment Metric/density based clustering/grouping
Thanks for the reply. Most points will not belong to any cluster, so clustering into k clusters of equal size does not help me (I actually found those questions you linked before). I might be able to use DBScan with my epsilon value and then split the clusters that are >= 2*k. That sounds like it could work!
Feb
16
awarded  Commentator
Feb
16
comment Metric/density based clustering/grouping
Could you specify the obvious approaches a bit? To me they are (unfortunately) not obvious. Also if the constraints are not met (no solution) the epsilon value would be increased and the query re-run (if more than k points).