首页 | 本学科首页   官方微博 | 高级检索  
     检索      

An Efficient Algorithm for Discovering Co-occurrence Concepts Through Pathfinder Paradigm
作者姓名:杜志典  WANG  James
作者单位:School of Computing, Clemson University, SC USA 29634
摘    要:The Pathfinder paradigm has been used in generating and analyzing graph models that support clustering similar concepts and minimum-cost paths to provide an associative network structure within a domain. The co-occurrence pathfinder network ( CPFN ) extends the traditional pathfinder paradigm so that co-occurring concepts can be calculated at each sampling time. Existing algorithms take O(n(s)) time to calculate the pathfinder network (PFN) at each sampling time for a non-completed input graph of a CPFN (r = ∞, q = n - 1), where n is the number of nodes in the input graph, r is the Minkowski exponent and q is the maximum number of links considered in finding a minimum cost path between vertices. To reduce the complexity of calculating the CPFN, we propose a greedy based algorithm, MEC(G) algorithm, which takes shortcuts to avoid unnecessary steps in the existing algorithms, to correctly calculate a CPFN (r = ∞, q= n - 1) in O(klogk) time where k is the number of edges of the input graph. Our example demonstrates the efficiency and correctness of the proposed MEC(G) algorithm, confirming our mathematic analysis on this algorithm.

关 键 词:计算机技术  计算方法  人工智能  网络
收稿时间:2006-08-20
修稿时间:2006-08-20

An Efficient Algorithm for Discovering Co-occurrence Concepts Through Pathfinder Paradigm
DU Zhi-dian,WANG James.An Efficient Algorithm for Discovering Co-occurrence Concepts Through Pathfinder Paradigm[J].Journal of Donghua University,2006,23(6):153-156,160.
Authors:DU Zhi-dian  WANG James
Institution:School of Computing, Clemson University, SC USA 29634
Abstract:The Pathfinder paradigm has been used in generating and analyzing graph models that support clustering similar concepts and minimum-cost paths to provide an associative network structure within a domain. The co-occurrence pathfinder network ( CPFN ) extends the traditional pathfinder paradigm so that co-occurring concepts can be calculated at each sampling time. Existing algorithms take O(n(s)) time to calculate the pathfinder network (PFN) at each sampling time for a non-completed input graph of a CPFN (r = ∞, q = n - 1), where n is the number of nodes in the input graph, r is the Minkowski exponent and q is the maximum number of links considered in finding a minimum cost path between vertices. To reduce the complexity of calculating the CPFN, we propose a greedy based algorithm, MEC(G) algorithm, which takes shortcuts to avoid unnecessary steps in the existing algorithms, to correctly calculate a CPFN (r = ∞, q= n - 1) in O(klogk) time where k is the number of edges of the input graph. Our example demonstrates the efficiency and correctness of the proposed MEC(G) algorithm, confirming our mathematic analysis on this algorithm.
Keywords:Pathfinder  CPFN  co-occurrence
本文献已被 CNKI 维普 万方数据 等数据库收录!
设为首页 | 免责声明 | 关于勤云 | 加入收藏

Copyright©北京勤云科技发展有限公司  京ICP备09084417号