Abstract. Numerical data (e.g., DNA micro-array data, sensor data) pose a challeng-ing problem to existing frequent pattern mining methods which hardly handle them. In this framework, gradual patterns have been recently proposed to extract covariations of attributes, such as: “When X increases, Y decreases”. There exist some algorithms for mining frequent gradual patterns, but they cannot scale to real-world databases. We present in this paper GLCM, the first algorithm for mining closed frequent gradual patterns, which proposes strong complexity guarantees: the mining time is linear with the number of closed frequent gradual itemsets. Our experimental study shows that GLCM is two orders of magnitude faster than the state of the art, with a ...
Finding prevalent patterns in large amount of data has been one of the major problems in the area of...
International audienceMining frequent simultaneous attribute co-variations in numerical databases is...
International audienceThe traditional algorithms that extract the gradual patterns often face the pr...
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...
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...
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...
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...
The extraction of frequent gradual pattern is an important problem in computer science and largely s...
International audienceGradual patterns highlight complex order correlations of the form "The more/le...
International audienceGradual patterns highlight complex order correlations of the form "The more/le...
Data mining is an emerging research area, whose goal is to discover potentially useful information e...
Finding prevalent patterns in large amount of data has been one of the major problems in the area of...
International audienceMining frequent simultaneous attribute co-variations in numerical databases is...
International audienceThe traditional algorithms that extract the gradual patterns often face the pr...
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...
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...
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...
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...
The extraction of frequent gradual pattern is an important problem in computer science and largely s...
International audienceGradual patterns highlight complex order correlations of the form "The more/le...
International audienceGradual patterns highlight complex order correlations of the form "The more/le...
Data mining is an emerging research area, whose goal is to discover potentially useful information e...
Finding prevalent patterns in large amount of data has been one of the major problems in the area of...
International audienceMining frequent simultaneous attribute co-variations in numerical databases is...
International audienceThe traditional algorithms that extract the gradual patterns often face the pr...