Frequent tree patterns have many practical applications in different domains such as XML mining, web usage analysis, etc. In this paper, we present OInduced, a novel and efficient algorithm for finding frequent ordered induced tree patterns. OInduced uses a breadth-first candidate generation method and improves it by means of an indexing scheme. We also introduce frequency counting using tree encoding. For this purpose, we present two novel tree encodings, m-coding and cmcoding, and show how they can restrict nodes of input trees and compute frequencies of generated candidates. We perform extensive experiments on both real and synthetic datasets to show efficiency and scalability of OInduced.status: publishe
International audienceFrequent pattern mining is an important data mining task with a broad range of...
Mining frequent patterns in database has emerged as an important task in knowledge discovery and dat...
Mining frequent patterns has been studied popularly in data mining research. All of previous studies...
Frequent tree patterns have many practical applications in different domains such as XML mining, web...
Mining frequent tree patterns has many applications in different areas such as XML data, bioinformat...
With the wide applications of tree structured data, such as XML databases, research of mining freque...
Mining frequent trees is very useful in domains like bioinformatics, Web mining, mining semistructur...
Tree structures are used extensively in domains such as computational biology, pattern recognition, ...
The most commonly adopted approach to find valuable information from trees data is to extract freque...
Due to the inherent flexibilities in both structure and semantics, XML association rules mining face...
Employing Data mining techniques for structured data is particularly challenging, because it is comm...
Employing Data mining techniques for structured data is particularly challenging, because it is comm...
Employing Data mining techniques for structured data is particularly challenging, because it is comm...
In this paper, we review our data mining algorithms for discovering frequent substructures in a larg...
International audienceFrequent pattern mining is an important data mining task with a broad range of...
International audienceFrequent pattern mining is an important data mining task with a broad range of...
Mining frequent patterns in database has emerged as an important task in knowledge discovery and dat...
Mining frequent patterns has been studied popularly in data mining research. All of previous studies...
Frequent tree patterns have many practical applications in different domains such as XML mining, web...
Mining frequent tree patterns has many applications in different areas such as XML data, bioinformat...
With the wide applications of tree structured data, such as XML databases, research of mining freque...
Mining frequent trees is very useful in domains like bioinformatics, Web mining, mining semistructur...
Tree structures are used extensively in domains such as computational biology, pattern recognition, ...
The most commonly adopted approach to find valuable information from trees data is to extract freque...
Due to the inherent flexibilities in both structure and semantics, XML association rules mining face...
Employing Data mining techniques for structured data is particularly challenging, because it is comm...
Employing Data mining techniques for structured data is particularly challenging, because it is comm...
Employing Data mining techniques for structured data is particularly challenging, because it is comm...
In this paper, we review our data mining algorithms for discovering frequent substructures in a larg...
International audienceFrequent pattern mining is an important data mining task with a broad range of...
International audienceFrequent pattern mining is an important data mining task with a broad range of...
Mining frequent patterns in database has emerged as an important task in knowledge discovery and dat...
Mining frequent patterns has been studied popularly in data mining research. All of previous studies...