# Algorithm to find optimal groups

A device contains an array of locations, some of which contain values that we want to read periodically.

Our list of locations that we want to read periodically also specifies how often we want to read them. It is permitted to read a value more frequently than specified, but not less frequently.

A single read operation can read a contiguous sequence of locations from the array, so it is possible to return a group of multiple values from one read operation. The maximum number of contiguous locations that can be read in a single operation is M.

The goal is to group locations so as to minimize the time-averaged number of read operations. In the event that there is more than one way to do this, the tie-breaker is to minimize the time-averaged number of locations read.

(Bonus points are awarded if the algorithm to do this allows incremental changes to the list of locations - i.e. adding or removing one location to/from the list doesn't require the groupings to be recalculated from scratch!)

I'll try to clarify this with some examples where M=6.

The following diagram shows the array of locations. The numbers represent the desired read period for that location.

``````| 1 | 1 |   |   | 1 |   |   |   |   |   | 5 |   | 2 |
\-------------------/                   \-----------/
group A                               group B
``````

In this first example group A is read every second and group B every 2 seconds. Note that the location that should be read every 5 seconds is actually read every 2 seconds - which is fine.

``````| 1 |   |   |   |   | 1 | 1 |   | 1 |
\-----------------------/\----------/
group A            group B         (non-optimal!)
``````

This example shows a failure of my initial simple-minded algorithm, which was to fill up the first group until full and then start another. The following grouping is more optimal because although the number of group reads per second is the same, the number of locations read in those groups is smaller:

``````| 1 |   |   |   |   | 1 | 1 |   | 1 |
\---/               \---------------/
group A                  group B            (optimal)
``````

Finally, an example where three groups is better than two:

``````| 5 |   |   |   |   | 1 | 1 |   |   |   |   | 5 |
\-----------------------/\----------------------/
group A                  group B    (non-optimal)
``````

This solution requires two group reads per second. A better solution is as follows:

``````| 5 |   |   |   |   | 1 | 1 |   |   |   |   | 5 |
\---/               \-------/               \---/
group A              group B               group C
``````

This requires two reads every 5 seconds (groups A and C) plus one every second (group B): 1.4 group reads per second.

Edit: (There is an even better solution to this example if you allow reads to be non-periodic. On the 1st second, read both groups of the first solution. On seconds 2, 3, 4 and 5 read group B of the second solution. Repeat. This results in 1.2 group reads per second. But I'm going to disallow this because it would make the code responsible for scheduling the reads much more complicated.)

I looked up clustering algorithms but this isn't a clustering problem. I also found Algorithm to allocate a list of numbers to N groups under certain condition, which pointed to the 'Bin packing' problem, but I don't think this is it either.

By the way, sorry for the vague title. I can't think of a concise description, or even relevant search keywords!

New examples added 28 September 2010:

This is like the previous example, but all items updating at the same rate. Now two groups is better than three:

``````| 1 |   |   |   |   | 1 | 1 |   |   |   |   | 1 |
\-----------------------/\----------------------/
group A                  group B          (optimal)
``````

I've started trying to see how iterative improvements might be implemented. Suppose a grouping algorithm came up with:

``````| 1 |   |   |   |   | 1 | 1 |   |   |   |   | 1 | 1 |   |   |   |   | 1 |
\---/               \-------/               \-------/               \---/
group A              group B                 group C               group D  (non-optimal)
\-----------------------/\----------------------/\----------------------/
group A                  group B                  group C           (optimal)
``````

This can be improved to three adjacent groups each of 6. Rex suggested (comment below) that I could try combining triplets into pairs. But in this case I would have to combine a quartet into a triplet, because there is no legal intermediate arrangement in which A+B+C (or B+C+D) can be rearranged into a pair leaving D as it is.

I originally thought that this was an indication that in the general case there is no guarantee that a new valid solution can be created from an existing valid solution by making a local modification. This would have meant that algorithms such as simulated annealing, genetic algorithms, etc, could be used to try to refine a suboptimal solution.

But Rex pointed out (comment below) that you can always split an existing group into two. Despite the fact that this always increases the cost function, all that means is that the solution needs to get out of its local minimum in order to reach the global minimum.

-
I was going to say you can always group adjacent items with the same timing (group B in your last example) but that may not be true is corner cases where M comes into play. It does point to a strategy of building progressively larger groups with sensible rules. How large is your problem size? –  phkahler Sep 14 '10 at 13:38
This sounds like it could be an NP-Complete or at least an NP-Hard problem in the theoretically optimal case. You might try reposting it at the CS Theory Stack Exchange. –  David Hollman Sep 14 '10 at 13:40
@phkahler: In my particular case, M is around 100, the array size can be anything from 1 to 30000 or so but typically a few hundred, and the number of locations wanted anything from 1 to 100 or so. –  Ian Goldby Sep 14 '10 at 14:40
I did suspect it might be an NP-Hard problem. If so, a nearly-optimal solution would be OK as long as there are no pathological cases that make it fail badly. I'll try CS Theory Stack Exchange if I don't get a good answer here within a few days. –  Ian Goldby Sep 14 '10 at 14:44
Hi, sorry for nitpicking, but the solution for your first example is not optimal (that's how I read the rules at least). In that case reading the entrire array would be optimal because that's only 1 read per second. –  jdv-Jan de Vaan Sep 14 '10 at 19:57

This problem has the same property of instability on addition of new items that similar NP-complete problems do, so I assume it is one also. Since I suspect that you want something that works reasonably well instead of a proof of why it's hard, I'll focus on an algorithm to give an approximate solution.

I would solve this problem by converting this into a graph where bins were valued at 1/N if they had to be read N times per second, and blur the graph with a width of M (e.g. 6), peaked at the original. (For 6, I might use weighting (1/6 1/5 1/4 1/3 1/2 1 1/2 1/3 1/4 1/5 1/6).) Then throw bins at all the local maxima (sort pairs by distance apart and cover close pairs of maxima first if you can). Now you'll have most of your most important values covered. Then catch any missing groups by extending the existing reads, or by adding new reads if necessary. Depending on the structure you may want to add some refinement by shifting locations between reads, but if you're lucky that won't even be necessary.

Since this is essentially a local algorithm, if you keep track of the blurred graph, you can fairly easily add new items and re-do the peak-covering locally (and the refinement locally).

Just to see how this would work on your data, the two-group case would look like (multiplying by 60 so I don't have to keep track of fractional weights)

`````` 60 30 20 15 12 10 00 00 00   <- contribution from left-most location
10 12 15 20 30 60 30 20 15   <- second
00 10 12 15 20 30 60 30 20   <- third
00 00 00 10 12 15 20 30 60   <- rightmost
--------------------------
70 42 47 50 74 B5 B0 80 95   (using "B" to represent 11)
^^             ^^       ^^   Local maxima
-------------  -------
dist=6        dist=4
|===========|  <- Hit closely-spaced peaks first
|==|                          <- Then remaining
``````

So we're done, and the solution is optimal.

For the three group example, weighting "5" as "1/5" and multiplying everything by 300 so again there are no fractions,

``````060 030 020 015 012 010 000 000 000 000 000 000   <- from 5 on left
050 060 075 100 150 300 150 100 075 060 050 000   <- 1 on left
000 050 060 075 100 150 300 150 100 075 060 050   <- on right
000 000 000 000 000 000 010 012 015 020 030 060   <- 5 on right
-----------------------------------------------
110 140 155 190 262 460 460 262 190 155 140 110
|=======|                      <- only one peak, grab it
===                                         ===   <- missed some, so pick them back up
``````
-
OK, I'm back on this now. Unfortunately, the above algorithm fails in the latter example if all items update at the same rate - you get the same three groups, whereas you should get only two. I'm trying to see if I can tweak the algorithm to correct this, but it seems fundamentally difficult to get it to prefer a bigger group in order to satisfy what is essentially a non-local criterion (mininizing number of groups). –  Ian Goldby Sep 27 '10 at 13:15
You could repeatedly try to convert triples to pairs until no triples are improved if rewritten as pairs. –  Rex Kerr Sep 27 '10 at 16:31
I've added a bit more to the original question. I should perhaps explain why I am so concerned about this. I expect that in most practical cases the number of groups in the optimal case will be small: just one, two or three maybe. Adding just one extra group therefore is a very large additional cost, relatively speaking. Makes me wonder if a brute-force attack might be the answer… –  Ian Goldby Sep 28 '10 at 9:32
I think the point about there being no legal partial modifications of a solution is key. What other NP-Complete/Hard problems are there with this property, and how are they solved? –  Ian Goldby Sep 28 '10 at 10:11
@Ian - The property that any local change can propagate to the entire rest of the solution is something that all NP-type problems have. There are two ways to go: (1) exhaustive search (cleverly, of course; e.g. if there is a stretch of 0 that is too wide to be spanned by a single read, you split the problem into two subproblems), and (2) approximate heuristics that work reasonably well on average but necessarily fail in specific problematic cases. My solution was of type (2). –  Rex Kerr Sep 28 '10 at 13:56