文献计量学视角下的论文被引频次影响因素研究 ——兼评使用与被引之间关系
Release time:2019-03-12
Hits:
Indexed by:会议论文
First Author:Lv, Zhiming
Co-author:Zhao, Jun,Wang, Wei
Date of Publication:2017-01-01
Included Journals:CPCI-S
Document Type:A
Volume:2017-January
Page Number:8716-8720
Key Words:multi-objective; PSO; active learning; mutation opterator; sampling
Abstract:A multi-objective particle swarm algorithm based on the active learning (MOPSAL) approach is proposed that combines a Multi-Objective particle swarm optimization (MOPSO) with an Pareto Active Learning (PAL) approach. In MOPSAL, the candidate solution set is produced by a sampling method based on mutation operator and preselected by the PAL approach. Then, the best Pareto solution from the candidate solution set is used to guide the search of MOPSO. To validate the performance of MOPSAL, the proposed algorithm compares with the standard multi-objective particle swarm algorithm (MOPSO) and the improved non-dominated sorting genetic algorithm (NSGA-II) for five widely used benchmark problems. The results show the effectiveness of the proposed MOPSAL algorithm.
Translation or Not:no
Pre One:我国有效专利区域分布状况分析
Next One:撤销论文对所在期刊的影响研究——基于期刊引证指标的定量分析