International audienceExisting approaches for extracting gradual patterns become inefficient in terms of memory usage when applied on data sets with huge numbers of objects. This inefficiency is caused by the contiguous nature of loading binary matrices into main memory as single blocks when validating candidate gradual patterns. This paper proposes an efficient storage layout that allows these matrices to be split and loaded into/from memory in multiple smaller chunks. We show how HDF5 (Hierarchical Data Format version 5) may be used to implement this chunked layout and our experiments reveal a great improvement in memory usage efficiency especially on huge data sets
International audienceThe traditional algorithms that extract the gradual patterns often face the pr...
We explore in this paper a practicably interesting mining task to retrieve frequent itemsets with me...
Mining frequent patterns from large databases play an essential role in many data mining tasks and h...
International audienceExisting approaches for extracting gradual patterns become inefficient in term...
Methods for efficient mining of frequent patterns have been studied extensively by many researchers....
Abstract. Numerical data (e.g., DNA micro-array data, sensor data) pose a challeng-ing problem to ex...
International audienceNumerical data (e.g., DNA micro-array data, sensor data) pose a challenging pr...
International audienceNumerical data (e.g., DNA micro-array data, sensor data) pose a challenging pr...
In this study, we propose a simple and novel data structure using hyper-links, H-struct, and a new m...
As data sets have continued to grow in size, it has become more difficult to mine them efficiently. ...
The extraction of frequent gradual pattern is an important problem in computer science and largely s...
Data Mining requires versatile computational techniques for analyzing patterns among large and div...
High-utility sequential pattern mining (HUSPM) is a hot research topic in recent decades since it co...
Frequent Pattern mining is modified by Sequential Pattern Mining to consider time regularity which i...
We propose an efficient algorithm for mining frequent approximate sequential patterns under the Hamm...
International audienceThe traditional algorithms that extract the gradual patterns often face the pr...
We explore in this paper a practicably interesting mining task to retrieve frequent itemsets with me...
Mining frequent patterns from large databases play an essential role in many data mining tasks and h...
International audienceExisting approaches for extracting gradual patterns become inefficient in term...
Methods for efficient mining of frequent patterns have been studied extensively by many researchers....
Abstract. Numerical data (e.g., DNA micro-array data, sensor data) pose a challeng-ing problem to ex...
International audienceNumerical data (e.g., DNA micro-array data, sensor data) pose a challenging pr...
International audienceNumerical data (e.g., DNA micro-array data, sensor data) pose a challenging pr...
In this study, we propose a simple and novel data structure using hyper-links, H-struct, and a new m...
As data sets have continued to grow in size, it has become more difficult to mine them efficiently. ...
The extraction of frequent gradual pattern is an important problem in computer science and largely s...
Data Mining requires versatile computational techniques for analyzing patterns among large and div...
High-utility sequential pattern mining (HUSPM) is a hot research topic in recent decades since it co...
Frequent Pattern mining is modified by Sequential Pattern Mining to consider time regularity which i...
We propose an efficient algorithm for mining frequent approximate sequential patterns under the Hamm...
International audienceThe traditional algorithms that extract the gradual patterns often face the pr...
We explore in this paper a practicably interesting mining task to retrieve frequent itemsets with me...
Mining frequent patterns from large databases play an essential role in many data mining tasks and h...