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SOME EXTENDED KNAPSACK PROBLEMS INVOLVING JOB PARTITION BETWEEN TWO PARTIES 被引量:8
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作者 Gu Yanhong Chen Quanle 《Applied Mathematics(A Journal of Chinese Universities)》 SCIE CSCD 2007年第3期366-370,共5页
Some novel applications and pragmatic variations of knapsack problem (KP) are presented and constructed, which are formulated and developed from a model initiated in this paper on profit allocation from partition of... Some novel applications and pragmatic variations of knapsack problem (KP) are presented and constructed, which are formulated and developed from a model initiated in this paper on profit allocation from partition of jobs in terms of two-person discrete cooperation game. 展开更多
关键词 knapsack problem profit allocation job partition.
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Quantum-inspired ant algorithm for knapsack problems 被引量:3
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作者 Wang Honggang Ma Liang Zhang Huizhen Li Gaoya 《Journal of Systems Engineering and Electronics》 SCIE EI CSCD 2009年第5期1012-1016,共5页
The knapsack problem is a well-known combinatorial optimization problem which has been proved to be NP-hard. This paper proposes a new algorithm called quantum-inspired ant algorithm (QAA) to solve the knapsack prob... The knapsack problem is a well-known combinatorial optimization problem which has been proved to be NP-hard. This paper proposes a new algorithm called quantum-inspired ant algorithm (QAA) to solve the knapsack problem. QAA takes the advantage of the principles in quantum computing, such as qubit, quantum gate, and quantum superposition of states, to get more probabilistic-based status with small colonies. By updating the pheromone in the ant algorithm and rotating the quantum gate, the algorithm can finally reach the optimal solution. The detailed steps to use QAA are presented, and by solving series of test cases of classical knapsack problems, the effectiveness and generality of the new algorithm are validated. 展开更多
关键词 knapsack problem quantum computing ant algorithm quantum-inspired ant algorithm.
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A branch-and-bound algorithm for multi-dimensional quadratic 0-1 knapsack problems 被引量:2
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作者 孙娟 盛红波 孙小玲 《Journal of Shanghai University(English Edition)》 CAS 2007年第3期233-236,共4页
In this paper, a branch-and-bound method for solving multi-dimensional quadratic 0-1 knapsack problems was studied. The method was based on the Lagrangian relaxation and the surrogate constraint technique for finding ... In this paper, a branch-and-bound method for solving multi-dimensional quadratic 0-1 knapsack problems was studied. The method was based on the Lagrangian relaxation and the surrogate constraint technique for finding feasible solutions. The Lagrangian relaxations were solved with the maximum-flow algorithm and the Lagrangian bounds was determined with the outer approximation method. Computational results show the efficiency of the proposed method for multi-dimensional quadratic 0-1 knapsack problems. 展开更多
关键词 multi-dimensional quadratic 0-1 knapsack problem branch-and-bound method Lagrangian relaxation outer approximation surrogate constraint.
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An efficient algorithm for multi-dimensional nonlinear knapsack problems 被引量:1
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作者 陈娟 孙小玲 郭慧娟 《Journal of Shanghai University(English Edition)》 CAS 2006年第5期393-398,共6页
Multi-dimensional nonlinear knapsack problem is a bounded nonlinear integer programming problem that maximizes a separable nondecreasing function subject to multiple separable nondecreasing constraints. This problem i... Multi-dimensional nonlinear knapsack problem is a bounded nonlinear integer programming problem that maximizes a separable nondecreasing function subject to multiple separable nondecreasing constraints. This problem is often encountered in resource allocation, industrial planning and computer network. In this paper, a new convergent Lagrangian dual method was proposed for solving this problem. Cutting plane method was used to solve the dual problem and to compute the Lagrangian bounds of the primal problem. In order to eliminate the duality gap and thus to guarantee the convergence of the algorithm, domain cut technique was employed to remove certain integer boxes and partition the revised domain to a union of integer boxes. Extensive computational results show that the proposed method is efficient for solving large-scale multi-dimensional nonlinear knapsack problems. Our numerical results also indicate that the cutting plane method significantly outperforms the subgradient method as a dual search procedure. 展开更多
关键词 nonlinear integer programming nonlinear knapsack problem Lagrangian relaxation cutting plane subgradient method.
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A Hybrid Parallel Multi-Objective Genetic Algorithm for 0/1 Knapsack Problem 被引量:3
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作者 Sudhir B. Jagtap Subhendu Kumar Pani Ganeshchandra Shinde 《Journal of Software Engineering and Applications》 2011年第5期316-319,共4页
In this paper a hybrid parallel multi-objective genetic algorithm is proposed for solving 0/1 knapsack problem. Multi-objective problems with non-convex and discrete Pareto front can take enormous computation time to ... In this paper a hybrid parallel multi-objective genetic algorithm is proposed for solving 0/1 knapsack problem. Multi-objective problems with non-convex and discrete Pareto front can take enormous computation time to converge to the true Pareto front. Hence, the classical multi-objective genetic algorithms (MOGAs) (i.e., non- Parallel MOGAs) may fail to solve such intractable problem in a reasonable amount of time. The proposed hybrid model will combine the best attribute of island and Jakobovic master slave models. We conduct an extensive experimental study in a multi-core system by varying the different size of processors and the result is compared with basic parallel model i.e., master-slave model which is used to parallelize NSGA-II. The experimental results confirm that the hybrid model is showing a clear edge over master-slave model in terms of processing time and approximation to the true Pareto front. 展开更多
关键词 Multi-Objective Genetic Algorithm PARALLEL Processing Techniques NSGA-II 0/1 knapsack problem TRIGGER MODEL CONE Separation MODEL Island MODEL
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A Weight-Coded Evolutionary Algorithm for the Multidimensional Knapsack Problem 被引量:2
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作者 Quan Yuan Zhixin Yang 《Advances in Pure Mathematics》 2016年第10期659-675,共17页
A revised weight-coded evolutionary algorithm (RWCEA) is proposed for solving multidimensional knapsack problems. This RWCEA uses a new decoding method and incorporates a heuristic method in initialization. Computatio... A revised weight-coded evolutionary algorithm (RWCEA) is proposed for solving multidimensional knapsack problems. This RWCEA uses a new decoding method and incorporates a heuristic method in initialization. Computational results show that the RWCEA performs better than a weight-coded evolutionary algorithm pro-posed by Raidl (1999) and to some existing benchmarks, it can yield better results than the ones reported in the OR-library. 展开更多
关键词 Weight-Coding Evolutionary Algorithm Multidimensional knapsack problem (Mkp)
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SEMI-DEFINITE RELAXATION ALGORITHM OF MULTIPLE KNAPSACK PROBLEM
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作者 Chen Feng Yao EnyuDept.ofMath.,ZhejiangUniv.,Hangzhou310027,China 《Applied Mathematics(A Journal of Chinese Universities)》 SCIE CSCD 2002年第2期241-250,共10页
The multiple knapsack problem denoted by MKP (B,S,m,n) can be defined as fol- lows.A set B of n items and a set Sof m knapsacks are given such thateach item j has a profit pjand weightwj,and each knapsack i has a ca... The multiple knapsack problem denoted by MKP (B,S,m,n) can be defined as fol- lows.A set B of n items and a set Sof m knapsacks are given such thateach item j has a profit pjand weightwj,and each knapsack i has a capacity Ci.The goal is to find a subset of items of maximum profit such that they have a feasible packing in the knapsacks.MKP(B,S,m,n) is strongly NP- Complete and no polynomial- time approximation algorithm can have an approxima- tion ratio better than0 .5 .In the last ten years,semi- definite programming has been empolyed to solve some combinatorial problems successfully.This paper firstly presents a semi- definite re- laxation algorithm (MKPS) for MKP (B,S,m,n) .It is proved that MKPS have a approxima- tion ratio better than 0 .5 for a subclass of MKP (B,S,m,n) with n≤ 1 0 0 ,m≤ 5 and maxnj=1{ wj} minmi=1{ Ci} ≤ 2 3 . 展开更多
关键词 multiple knapsack problem semi- definite relaxation approximation algorithm combina- torial optimization.
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Uncertain bilevel knapsack problem and its solution
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作者 Junjie Xue Ying Wang Jiyang Xiao 《Journal of Systems Engineering and Electronics》 SCIE EI CSCD 2017年第4期717-724,共8页
This paper aims at providing an uncertain bilevel knapsack problem (UBKP) model, which is a type of BKPs involving uncertain variables. And then an uncertain solution for the UBKP is proposed by defining PE Nash equil... This paper aims at providing an uncertain bilevel knapsack problem (UBKP) model, which is a type of BKPs involving uncertain variables. And then an uncertain solution for the UBKP is proposed by defining PE Nash equilibrium and PE Stackelberg Nash equilibrium. In order to improve the computational efficiency of the uncertain solution, several operators (binary coding distance, inversion operator, explosion operator and binary back learning operator) are applied to the basic fireworks algorithm to design the binary backward fireworks algorithm (BBFWA), which has a good performance in solving the BKP. As an illustration, a case study of the UBKP model and the P-E uncertain solution is applied to an armaments transportation problem. 展开更多
关键词 UNCERTAINTY bilevel programming knapsack problem binary backward fireworks algorithm
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Gompertz PSO variants for Knapsack and Multi-Knapsack Problems
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作者 Pinkey Chauhan Millie Pant Kusum Deep 《Applied Mathematics(A Journal of Chinese Universities)》 SCIE CSCD 2021年第4期611-630,共20页
Particle Swarm Optimization,a potential swarm intelligence heuristic,has been recognized as a global optimizer for solving various continuous as well as discrete optimization problems.Encourged by the performance of G... Particle Swarm Optimization,a potential swarm intelligence heuristic,has been recognized as a global optimizer for solving various continuous as well as discrete optimization problems.Encourged by the performance of Gompertz PSO on a set of continuous problems,this works extends the application of Gompertz PSO for solving binary optimization problems.Moreover,a new chaotic variant of Gompertz PSO namely Chaotic Gompertz Binary Particle Swarm Optimization(CGBPSO)has also been proposed.The new variant is further analysed for solving binary optimization problems.The new chaotic variant embeds the notion of chaos into GBPSO in later stages of searching process to avoid stagnation phenomena.The efficiency of both the Binary PSO variants has been tested on different sets of Knapsack Problems(KPs):0-1 Knapsack Problem(0-1 KP)and Multidimensional Knapsack Problems(MKP).The concluding remarks have made on the basis of detailed analysis of results,which comprises the comparison of results for Knapsack and Multidimensional Knapsack problems obtained using BPSO,GBPSO and CGBPSO. 展开更多
关键词 Binary PSO knapsack problems Multi knapsack problems Gompertz function CHAOS
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Surrogate dual method for multi-dimensional nonlinear knapsack problems
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作者 孔珊珊 孙小玲 《Journal of Shanghai University(English Edition)》 CAS 2007年第4期340-343,共4页
Multi-dimensional nonlinear knapsack problems are often encountered in resource allocation, industrial planning and computer networks. In this paper, a surrogate dual method was proposed for solving this class of prob... Multi-dimensional nonlinear knapsack problems are often encountered in resource allocation, industrial planning and computer networks. In this paper, a surrogate dual method was proposed for solving this class of problems. Multiply constrained problem was relaxed to a singly constrained problem by using the surrogate technique. To compute tighter bounds of the primal problem, the cutting plane method was used to solve the surrogate dual problem, where the surrogate relaxation problem was solved by the 0-1 linearization method. The domain cut technique was employed to eliminate the duality gap and thus to guarantee the convergence of tile algorithm. Numerical results were reported for large-scale multi-dimensional nonlinear knapsack problems. 展开更多
关键词 nonlinear knapsack problem surrogate dual Lagrangian dual domain cut
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An Optimal Parallel Algorithm for the Knapsack Problem Based on EREW
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作者 李肯立 蒋盛益 +1 位作者 王卉 李庆华 《Journal of Southwest Jiaotong University(English Edition)》 2003年第2期131-137,共7页
A new parallel algorithm is proposed for the knapsack problem where the method of divide and conquer is adopted. Based on an EREW-SIMD machine with shared memory, the proposed algorithm utilizes O(2 n/4 ) 1-ε ... A new parallel algorithm is proposed for the knapsack problem where the method of divide and conquer is adopted. Based on an EREW-SIMD machine with shared memory, the proposed algorithm utilizes O(2 n/4 ) 1-ε processors, 0≤ ε ≤1, and O(2 n/2 ) memory to find a solution for the n -element knapsack problem in time O(2 n/4 (2 n/4 ) ε) . The cost of the proposed parallel algorithm is O(2 n/2 ) , which is an optimal method for solving the knapsack problem without memory conflicts and an improved result over the past researches. 展开更多
关键词 knapsack problem NP-COMPLETE parallel algorithm divide and conquer
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Improved Parallel Three-List Algorithm for the Knapsack Problem without Memory Conflicts
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作者 潘军 李肯立 李庆华 《Journal of Southwest Jiaotong University(English Edition)》 2006年第1期7-14,共8页
Based on the two-list algorithm and the parallel three-list algorithm, an improved parallel three-list algorithm for knapsack problem is proposed, in which the method of divide and conquer, and parallel merging withou... Based on the two-list algorithm and the parallel three-list algorithm, an improved parallel three-list algorithm for knapsack problem is proposed, in which the method of divide and conquer, and parallel merging without memory conflicts are adopted. To find a solution for the n-element knapsack problem, the proposed algorithm needs O(2^3n/8) time when O(2^3n/8) shared memory units and O(2^n/4) processors are available. The comparisons between the proposed algorithm and 10 existing algorithms show that the improved parallel three-fist algorithm is the first exclusive-read exclusive-write (EREW) parallel algorithm that can solve the knapsack instances in less than O(2^n/2) time when the available hardware resource is smaller than O(2^n/2) , and hence is an improved result over the past researches. 展开更多
关键词 knapsack problem NP-HARD Parallel algorithm Memory conflicts Hardware-time tradeoff
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On Merging Cover Inequalities for Multiple Knapsack Problems
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作者 Randal Hickman Todd Easton 《Open Journal of Optimization》 2015年第4期141-155,共15页
This paper describes methods to merge two cover inequalities and also simultaneously merge multiple cover inequalities in a multiple knapsack instance. Theoretical results provide conditions under which merged cover i... This paper describes methods to merge two cover inequalities and also simultaneously merge multiple cover inequalities in a multiple knapsack instance. Theoretical results provide conditions under which merged cover inequalities are valid. Polynomial time algorithms are created to find merged cover inequalities. A computational study demonstrates that merged inequalities improve the solution times for benchmark multiple knapsack instances by about 9% on average over CPLEX with default settings. 展开更多
关键词 Multiple knapsack problem Cutting Plane COVER INEQUALITY INEQUALITY MERGING Pseudocost INTEGER Programming
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Big Data Flow Adjustment Using Knapsack Problem
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作者 Eyman Yosef Ahmed Salama M. Elsayed Wahed 《Journal of Computer and Communications》 2018年第10期30-39,共10页
The advancements of mobile devices, public networks and the Internet of creature huge amounts of complex data, both construct & unstructured are being captured in trust to allow organizations to produce better bus... The advancements of mobile devices, public networks and the Internet of creature huge amounts of complex data, both construct & unstructured are being captured in trust to allow organizations to produce better business decisions as data is now pivotal for an organizations success. These enormous amounts of data are referred to as Big Data, which enables a competitive advantage over rivals when processed and analyzed appropriately. However Big Data Analytics has a few concerns including Management of Data, Privacy & Security, getting optimal path for transport data, and Data Representation. However, the structure of network does not completely match transportation demand, i.e., there still exist a few bottlenecks in the network. This paper presents a new approach to get the optimal path of valuable data movement through a given network based on the knapsack problem. This paper will give value for each piece of data, it depends on the importance of this data (each piece of data defined by two arguments size and value), and the approach tries to find the optimal path from source to destination, a mathematical models are developed to adjust data flows between their shortest paths based on the 0 - 1 knapsack problem. We also take out computational experience using the commercial software Gurobi and a greedy algorithm (GA), respectively. The outcome indicates that the suggest models are active and workable. This paper introduced two different algorithms to study the shortest path problems: the first algorithm studies the shortest path problems when stochastic activates and activities does not depend on weights. The second algorithm studies the shortest path problems depends on weights. 展开更多
关键词 0 - 1 knapsack problem BIG DATA BIG DATA ANALYTICS BIG DAO TA Inconsistencies
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The 0/1 Multidimensional Knapsack Problem and Its Variants: A Survey of Practical Models and Heuristic Approaches
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作者 Soukaina Laabadi Mohamed Naimi +1 位作者 Hassan El Amri Boujemaa Achchab 《American Journal of Operations Research》 2018年第5期395-439,共45页
The 0/1 Multidimensional Knapsack Problem (0/1 MKP) is an interesting NP-hard combinatorial optimization problem that can model a number of challenging applications in logistics, finance, telecommunications and other ... The 0/1 Multidimensional Knapsack Problem (0/1 MKP) is an interesting NP-hard combinatorial optimization problem that can model a number of challenging applications in logistics, finance, telecommunications and other fields. In the 0/1 MKP, a set of items is given, each with a size and value, which has to be placed into a knapsack that has a certain number of dimensions having each a limited capacity. The goal is to find a subset of items leading to the maximum total profit while respecting the capacity constraints. Even though the 0/1 MKP is well studied in the literature, we can just find a little number of recent review papers on this problem. Furthermore, the existing reviews focus particularly on some specific issues. This paper aims to give a general and comprehensive survey of the considered problem so that it can be useful for both researchers and practitioners. Indeed, we first describe the 0/1 MKP and its relevant variants. Then, we present the detailed models of some important real-world applications of this problem. Moreover, an important collection of recently published heuristics and metaheuristics is categorized and briefly reviewed. These approaches are then quantitatively compared through some indicative statistics. Finally, some synthetic remarks and research directions are highlighted in the conclusion. 展开更多
关键词 0/1 MULTIDIMENSIONAL knapsack problem SURVEY Real-World Applications HEURISTICS Metaheuristics
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An Improved Binary Wolf Pack Algorithm Based on Adaptive Step Length and Improved Update Strategy for 0-1 Knapsack Problems
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作者 Liting Guo Sanyang Liu 《国际计算机前沿大会会议论文集》 2017年第2期105-106,共2页
Binary wolf pack algorithm (BWPA) is a kind of intelligence algorithm which can solve combination optimization problems in discrete spaces.Based on BWPA, an improved binary wolf pack algorithm (AIBWPA) can be proposed... Binary wolf pack algorithm (BWPA) is a kind of intelligence algorithm which can solve combination optimization problems in discrete spaces.Based on BWPA, an improved binary wolf pack algorithm (AIBWPA) can be proposed by adopting adaptive step length and improved update strategy of wolf pack. AIBWPA is applied to 10 classic 0-1 knapsack problems and compared with BWPA, DPSO, which proves that AIBWPA has higher optimization accuracy and better computational robustness. AIBWPA makes the parameters simple, protects the population diversity and enhances the global convergence. 展开更多
关键词 BINARY WOLF PACK ALGORITHM 0-1 knapsack problem ADAPTIVE step length Update strategy
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A Novel Method for Solving Unbounded Knapsack Problem
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作者 CHEN Rung-Ching LIN Ming-Hsian 《中国管理信息化》 2009年第15期57-60,共4页
Knapsack problem is one kind of NP-Complete problem. Unbounded knapsack problems are more complex and harder than general knapsack problem. In this paper,we apply QGAs (Quantum Genetic Algorithms) to solve unbounded k... Knapsack problem is one kind of NP-Complete problem. Unbounded knapsack problems are more complex and harder than general knapsack problem. In this paper,we apply QGAs (Quantum Genetic Algorithms) to solve unbounded knapsack problem and then follow other procedures. First,present the problem into the mode of QGAs and figure out the corresponding genes types and their fitness functions. Then,find the perfect combination of limitation and largest benefit. Finally,the best solution will be found. Primary experiment indicates that our method has well results. 展开更多
关键词 背包问题 信息化建设 遗传算法 量子学
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改进动态规划算法求解同尺寸物品的装箱问题
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作者 陈燕 刘秋鹏 胡小春 《机械设计与制造》 北大核心 2024年第9期125-129,135,共6页
装箱问题是在一个容量有限的箱内尽可能多的装入各类物品。文中研究同尺寸的物品装箱问题,在一个集装箱中装入大小规格一致的小箱,使集装箱的空间利用率最大,即装入的小箱数量最多。采用分层装载思想和同质条带的布局方式设计装箱方案,... 装箱问题是在一个容量有限的箱内尽可能多的装入各类物品。文中研究同尺寸的物品装箱问题,在一个集装箱中装入大小规格一致的小箱,使集装箱的空间利用率最大,即装入的小箱数量最多。采用分层装载思想和同质条带的布局方式设计装箱方案,利用改进的动态规划算法求解层装的布局问题,使用背包算法求解同质条带内的小箱布局问题。与已有文献算法相比,文中算法的运行速度更快,得到的装箱方案更便捷,利于装箱操作,而且在一定程序上提高了装箱率。使用国际标准尺寸的集装箱和随机尺寸的物品小箱进行实验,结果表明文中算法比传统的动态规划算法有更好的求解效果,可适用于实际的集装箱物品装载。 展开更多
关键词 三维集装箱 动态规划 同尺寸物体装载 装箱问题 分层装载 背包问题
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自记忆的深度强化学习模型求解多维背包问题
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作者 盛佳浩 马良 刘勇 《小型微型计算机系统》 CSCD 北大核心 2024年第9期2137-2148,共12页
本文针对多维背包问题维度高,约束强的特点提出了自记忆的学习优化模型(self memorized learn to improve,SML2I),通过深度强化学习的学习机制选择迭代搜索过程中的算子即模型学习当前的解以及历史搜索过程中的解,判断对当前解采用提升... 本文针对多维背包问题维度高,约束强的特点提出了自记忆的学习优化模型(self memorized learn to improve,SML2I),通过深度强化学习的学习机制选择迭代搜索过程中的算子即模型学习当前的解以及历史搜索过程中的解,判断对当前解采用提升策略或者是扰动策略,在此基础上,进一步提出了哈希表与设计了2种有效的基于价值密度的扰动算子.使用哈希表记录历史搜索过程中的解,防止模型重复探索相同的解,基于价值密度的扰动策略生成的新解与之前的解决方案完全不同,因此针对扰动后的解再次采用提升策略同样有效,通过测试89个MKP数据集并与其他文献中先进的求解方法进行对比,实验结果验证了SML2I模型求解MKP问题的可行性与有效性. 展开更多
关键词 多维背包问题 深度强化学习 多哈希 邻域算子 策略梯度
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面向多子元宇宙矿工分配的多背包问题优化方案
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作者 康嘉文 吴天昊 +4 位作者 文锦柏 陈俊龙 熊泽辉 黄旭民 刘雷 《电子与信息学报》 EI CAS CSCD 北大核心 2024年第5期2177-2186,共10页
元宇宙是一种新型互联网社会生态,旨在促进用户交流、提供虚拟服务和数字资产交易。区块链作为元宇宙的底层技术,支持非同质化通证(NFT)等数字资产在元宇宙内流通。然而,随着共识节点的增加,数字资产的交易共识效率会降低。因此,该文设... 元宇宙是一种新型互联网社会生态,旨在促进用户交流、提供虚拟服务和数字资产交易。区块链作为元宇宙的底层技术,支持非同质化通证(NFT)等数字资产在元宇宙内流通。然而,随着共识节点的增加,数字资产的交易共识效率会降低。因此,该文设计了基于边缘计算和跨链技术的多子元宇宙数字资产交易管理框架,首先,利用跨链技术将多个子元宇宙连接成多子元宇宙系统;其次,将边缘设备以矿工的身份分配到各个子元宇宙中,并利用其空闲的计算资源来提高数字资产交易的效率;此外,将边缘设备分配问题建模为一个多背包问题,并设计了一套矿工选择方案。针对环境动态变化的分配问题,采用深度强化学习中的近端策略优化(DRLPPO)算法,有效解决多子元宇宙中子元宇宙的矿工分配问题。仿真结果验证了所提方法的有效性,能够以安全、高效和灵活的方式实现跨链NFT交易和子元宇宙管理。 展开更多
关键词 元宇宙 区块链 多背包问题 深度强化学习
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