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Maximal Pattern Mining Using Fast CP-Tree for Knowledge Discovery

机译:使用快速CP树进行知识发现的最大模式挖掘

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摘要

The knowledge discovery from large database is useful for decision making in industry real-time problems. Given a large voluminous transaction database, the knowledge is discovered by extracting maximal pattern after some analysis. Various methods have been proposed for extracting maximal pattern including FP and CP trees. It has been noticed that time taken by these methods for mining is found to be large. This paper modifies tree construction strategy of CP-tree for mining maximal pattern and the strategy takes less time for mining. The proposed modified CP-tree is constructed in two phases. The first phase constructs the tree based on user given item order along with its corresponding item list. In the second phase, each node in the branch of the constructed tree is dynamically rearranged based on item sorted list. The maximal patterns are retrievedfrom the proposed tree using the FPmax algorithm. The proposed tree has been built to support both interactive and incremental mining. The performance is evaluated using both dense and sparse bench mark data sets such as CHESS, MUSHROOM, CONNECT-4, PUMSB, and RETAIL respectively. The performance of the modified CP-tree is encouraging compared to some of the recently proposed approaches.
机译:大型数据库中的知识发现对于行业实时问题的决策很有用。给定一个庞大的交易数据库,通过一些分析后提取最大模式即可发现知识。已经提出了用于提取最大模式的各种方法,包括FP和CP树。已经注意到,发现这些方法花费的时间很长。修改了CP树的树形构造策略,以挖掘出最大的模式,并减少了挖掘时间。提议的修改后的CP树分为两个阶段。第一阶段根据用户给定的项目顺序及其对应的项目列表构造树。在第二阶段,将根据项目排序列表动态重新排列所构造树的分支中的每个节点。使用FPmax算法从建议的树中检索最大模式。提议的树已构建为支持交互式和增量挖掘。分别使用密集和稀疏基准数据集(例如CHESS,MUSHROOM,CONNECT-4,PUMSB和RETAIL)评估性能。与最近提出的一些方法相比,修改后的CP树的性能令人鼓舞。

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