Abstract—The inherent flexibilities of XML in both structure and semantics makes mining from XML data a complex task with more challenges compared to traditional association rule mining in relational databases. In this paper, we propose a new model for the effective extraction of generalized association rules form a XML document collection. We directly use frequent subtree mining techniques in the discovery process and do not ignore the tree structure of data in the final rules. The frequent subtrees based on the user provided support are split to complement subtrees to form the rules. We explain our model within multi-steps from data preparation to rule generation
The role of the eXtensible Markup Language (XML) is be- coming very important in the research elds ...
Abstract- With the growing usage of XML in the World Wide Web and elsewhere as a standard for the ex...
XML has become the standard for data representation on the Web. This expansion in reputation has pro...
The inherent flexibilities of XML in both structure and semantics makes mining from XML data a compl...
The increasing amount of very large XML datasets available to casual users is a challenging problem ...
The increasing amount of XML datasets available to casual users increases the necessity of investiga...
Compared with traditional association rule mining in the structured world (e.g. Relational Databases...
In this paper, we propose a new framework, called XLogic- Miner, to mine association rules from XML ...
With the sheer amount of data stored, presented and exchanged using XML nowadays, the ability to ext...
The role of the eXtensible Markup Language (XML) is becoming very important in the research fields f...
An XML enabled framework for representation of association rules in databases was first presented in...
XML has become the standard for data representation on the internet. This expansion in reputation ha...
An XML enabled framework for representation of association rules in databases was first presented in...
XML-enabled association rule framework [FDWC03] extends the notion of associated items to XML fragme...
Association rule extraction is a widely used exploratory technique that allows the identification of...
The role of the eXtensible Markup Language (XML) is be- coming very important in the research elds ...
Abstract- With the growing usage of XML in the World Wide Web and elsewhere as a standard for the ex...
XML has become the standard for data representation on the Web. This expansion in reputation has pro...
The inherent flexibilities of XML in both structure and semantics makes mining from XML data a compl...
The increasing amount of very large XML datasets available to casual users is a challenging problem ...
The increasing amount of XML datasets available to casual users increases the necessity of investiga...
Compared with traditional association rule mining in the structured world (e.g. Relational Databases...
In this paper, we propose a new framework, called XLogic- Miner, to mine association rules from XML ...
With the sheer amount of data stored, presented and exchanged using XML nowadays, the ability to ext...
The role of the eXtensible Markup Language (XML) is becoming very important in the research fields f...
An XML enabled framework for representation of association rules in databases was first presented in...
XML has become the standard for data representation on the internet. This expansion in reputation ha...
An XML enabled framework for representation of association rules in databases was first presented in...
XML-enabled association rule framework [FDWC03] extends the notion of associated items to XML fragme...
Association rule extraction is a widely used exploratory technique that allows the identification of...
The role of the eXtensible Markup Language (XML) is be- coming very important in the research elds ...
Abstract- With the growing usage of XML in the World Wide Web and elsewhere as a standard for the ex...
XML has become the standard for data representation on the Web. This expansion in reputation has pro...