An Improved Binary Quadratic Interpolation Optimization for 0-1 Knapsack Problems

Sara Salem
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Abstract

This paper presents a new binary optimization technique for solving the 0–1 knapsack problem. This algorithm is based on converting the continuous search space of the recently proposed quadratic interpolation optimization (QIO) into discrete search space using various V-shaped and S-shaped transfer functions; this algorithm is abbreviated as BQIO. To further improve its performance, it is effectively integrated with a uniform crossover operator and a swap operator to explore the discrete binary search space more effectively. This improved variant is called BIQIO. Both BQIO and BIQIO are assessed using 20 well-known knapsack instances and compared to four recently published metaheuristic algorithms to reveal their effectiveness. The comparison among algorithms is based on three performance metrics: the mean fitness value, Friedman mean rank and computational cost. The first two metrics are used to observe the accuracy of the results, while the last metric is employed to show the efficiency of each algorithm. The results of this comparison reveal the superiority of BIQIO over the classical BQIO and four rival optimizers.
0-1背包问题的改进二元二次插值优化
提出了求解0-1背包问题的一种新的二元优化方法。该算法利用v型和s型传递函数将最近提出的二次插值优化(QIO)的连续搜索空间转化为离散搜索空间;该算法缩写为BQIO。为了进一步提高其性能,将其有效地与统一交叉算子和交换算子相结合,以更有效地探索离散二进制搜索空间。这种改进的变体称为BIQIO。BQIO和BIQIO都使用20个众所周知的背包实例进行评估,并与最近发表的四种元启发式算法进行比较,以揭示其有效性。算法之间的比较基于三个性能指标:平均适应度值、弗里德曼平均秩和计算成本。前两个指标用于观察结果的准确性,最后一个指标用于显示每个算法的效率。这个比较的结果揭示了BIQIO优于经典的BQIO和四个竞争对手的优化器。
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