The Nested Partition (NP) method is efficient in large-scale optimization problems. The most promising region is identified and partitioned iteratively. To guarantee the global convergence, a backtracking mechanism is introduced. Nevertheless, if inappropriate partitioning rules are used, lots of backtracking occur reducing largely the algorithm efficiency. A new partition-based random search method is developed in this paper. In the proposed method, all generated regions are stored for further partitioning and each region has a partition speed related to its posterior probability of being the most promising region. Promising regions have higher partition speeds while non-promising regions are partitioned slowly. The numerical results show tha...
Various heuristic optimization methods have been developed in artificial intelligence. These methods...
A modified version of a common global optimization method named controlled random search is presente...
In this paper we present a new algorithm for the k- partitioning problem which achieves an improved...
The Nested Partition (NP) method is efficient in large-scale optimization problems. The most promisin...
DoctorNested partitions (NP) method is a new type of random search method for global optimization pr...
Practical optimization problems are often too complex to be formulated exactly. Knowing multiple goo...
We consider a combination of state space partitioning and random search methods for solving determin...
There is increasing need to solve large-scale complex optimization problems in a wide variety of sci...
In this paper several probabilistic search techniques are developed for global optimization under th...
Conventional random search techniques take a lot of time to reach optimum-like solutions. Thus, rand...
A simple modification is introduced to a recently developed global optimization algorithm, the Adapt...
The paper studies the optimal sequential sampling policy of the partitioned random search (PRS) and ...
Abstract We have recently developed a global optimization methodology for solving combinatorial prob...
This report summarizes research on algorithms for finding particularly good solutions to instances o...
Can stochastic search algorithms outperform existing deterministic heuristics for the NP-hard proble...
Various heuristic optimization methods have been developed in artificial intelligence. These methods...
A modified version of a common global optimization method named controlled random search is presente...
In this paper we present a new algorithm for the k- partitioning problem which achieves an improved...
The Nested Partition (NP) method is efficient in large-scale optimization problems. The most promisin...
DoctorNested partitions (NP) method is a new type of random search method for global optimization pr...
Practical optimization problems are often too complex to be formulated exactly. Knowing multiple goo...
We consider a combination of state space partitioning and random search methods for solving determin...
There is increasing need to solve large-scale complex optimization problems in a wide variety of sci...
In this paper several probabilistic search techniques are developed for global optimization under th...
Conventional random search techniques take a lot of time to reach optimum-like solutions. Thus, rand...
A simple modification is introduced to a recently developed global optimization algorithm, the Adapt...
The paper studies the optimal sequential sampling policy of the partitioned random search (PRS) and ...
Abstract We have recently developed a global optimization methodology for solving combinatorial prob...
This report summarizes research on algorithms for finding particularly good solutions to instances o...
Can stochastic search algorithms outperform existing deterministic heuristics for the NP-hard proble...
Various heuristic optimization methods have been developed in artificial intelligence. These methods...
A modified version of a common global optimization method named controlled random search is presente...
In this paper we present a new algorithm for the k- partitioning problem which achieves an improved...