Stock-cutting and packing in two dimensions is a source of problems of great practical significance. Much has been written on the subject, including several surveys, but the focus of the mathematically oriented resear...
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Stock-cutting and packing in two dimensions is a source of problems of great practical significance. Much has been written on the subject, including several surveys, but the focus of the mathematically oriented research has been largely on combinatorial optimization and worst-case analysis. Recently, substantial progress has been made in the average-case analysis of algorithms for two-dimensional packing. This paper reviews selected, illustrative results in this area of research, and discusses desirable extensions and open problems. Several cutting and packing algorithms are defined and the results of their probabilistic analysis reported. From the presentation of this material it is clear that the field is still in early stages of development; the algorithms and probability models tend to be simplistic, and estimates of performance are far more common that exact measures. In spite of these limitations, valuable and in some cases unexpected insights have emerged. [ABSTRACT FROM AUTHOR]
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