Next-fit is an online algorithm for bin packing. Its input is a list of items of different sizes. Its output is a packing - a partition of the items into bins of fixed capacity, such that the sum of sizes of items in each bin is at most the capacity. Ideally, we would like to use as few bins as possible, but minimizing the number of bins is an NP-hard problem. The next-fit algorithm uses the following heuristic:

  • It keeps a current bin, which is initially empty.
  • When an item arrives, it checks whether the item fits into the current bin.
    • If it fits, it is placed inside it.
    • Otherwise, the current bin is closed, a new bin is opened and the coming item is placed inside this new bin.

Next-Fit is a bounded space algorithm - it requires only one partially-filled bin to be open at any time. The algorithm was studied by David S. Johnson in his doctoral thesis[1] in 1973.

Run time edit

The running time of NextFit can be bounded by  , where   is the number of items in the list.[2]

Approximation ratio edit

Denote by NF(L) the number of bins used by NextFit, and by OPT(L) the optimal number of bins possible for the list L.

Upper bound edit

Then, for each list  ,  . The intuition to the proof s the following. The number of bins used by this algorithm is no more than twice the optimal number of bins. In other words, it is impossible for 2 bins to be at most half full because such a possibility implies that at some point, exactly one bin was at most half full and a new one was opened to accommodate an item of size at most  . But since the first one has at least a space of  , the algorithm will not open a new bin for any item whose size is at most  . Only after the bin fills with more than   or if an item with a size larger than   arrives, the algorithm may open a new bin. Thus if we have   bins, at least   bins are more than half full. Therefore,  . Because   is a lower bound of the optimum value  , we get that   and therefore  .[3]: 74 

Lower bound edit

For each  , there exists a list   such that   and  .

The family of lists for which it holds that   is given by   with  . The optimal solution for this list has   bins containing two items with size   and one bin with   items with size   (i.e.,   bins total), while the solution generated by NF has   bins with one item of size   and one item with size  .

Bounded item size edit

If the maximum size of an item is  , then the asymptotic approximation ratio ratio   satisfies:

  •   for all  ;
  •   for all  .

Other properties edit

Next-Fit packs a list and its inverse into the same number of bins.[4]

Next-k-Fit (NkF) edit

Next-k-Fit is a variant of Next-Fit, but instead of keeping only one bin open, the algorithm keeps the last   bins open and chooses the first bin in which the item fits.

For  , NkF delivers results that are improved compared to the results of NF, however, increasing   to constant values larger than   improves the algorithm no further in its worst-case behavior. If algorithm   is an AlmostAnyFit-algorithm and   then  .[1]

See also edit

  • Next-fit-decreasing (NFD) is the offline variant of Next-Fit: it accepts all input items, orders them by descending size, and calls Next-Fit. Its asymptotic approximation ratio is much better: less than 1.7, instead of 2.

References edit

  1. ^ a b Johnson, David S (1973). "Near-optimal bin packing algorithms" (PDF). Massachusetts Institute of Technology.
  2. ^ Suri, Subhash. "Bin Packing". UCSB Computer Science. Retrieved 7 October 2021.
  3. ^ Vazirani, Vijay V. (2003), Approximation Algorithms, Berlin: Springer, ISBN 3-540-65367-8
  4. ^ Fisher, David C. (1988-12-01). "Next-fit packs a list and its reverse into the same number of bins". Operations Research Letters. 7 (6): 291–293. doi:10.1016/0167-6377(88)90060-0. ISSN 0167-6377.