The application of a top-down algorithm in neighboring class set mining

G. Fang, Cheng-Sheng Tu, Jiang Xiong, Zi-Quan Wang
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引用次数: 1

Abstract

This paper focuses on character of present frequent neighboring class set mining algorithms which is suitable for mining short frequent neighboring class set, and introduces a top-down algorithm in frequent neighboring class set mining. This algorithm is suitable for mining long frequent neighboring class set in large spatial data according to top-down strategy, and it creates digital database of neighboring class set via neighboring class bit sequence. The algorithm generates candidate frequent neighboring class set via top-down search strategy, namely, it gains k-neighboring class set as candidate frequent items by computing k-subset of (k+1)-non frequent neighboring class set. The mining algorithm computes support of candidate frequent neighboring class set by digit logical operation. The algorithm improves mining efficiency through these two methods. The result of experiment indicates that the algorithm is faster and more efficient than present algorithms when mining long frequent neighboring class set in large spatial data.
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自顶向下算法在邻类集挖掘中的应用
本文重点分析了现有频繁邻近类集挖掘算法的特点,提出了一种自顶向下的频繁邻近类集挖掘算法。该算法采用自顶向下的策略,适用于挖掘大空间数据中的长频次邻近类集,并通过邻近类位序列建立邻近类集的数字数据库。该算法通过自顶向下搜索策略生成候选频繁邻近类集,即通过计算(k+1)个非频繁邻近类集的k个子集,获得k个邻近类集作为候选频繁项。挖掘算法通过数字逻辑运算计算候选频繁相邻类集的支持度。该算法通过这两种方法提高了挖掘效率。实验结果表明,该算法在挖掘大空间数据中的长频次邻近类集时,比现有算法更快、更高效。
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