This paper presents an incremental and scalable learning algorithm in order to mine numeric, low dimensionality, high–cardinality, time–changing data streams. Within the Supervised Learning field, our approach, named SCALLOP, provides a set of decision rules whose size is very near to the number of concepts to be extracted. Experimental results with synthetic databases of different complexity degrees show a good performance from streams of data received at a rapid rate, whose label distribution may not be stationary in time
doi:10.1214/lnms/1196285404Data mining is a process of discovering useful patterns (knowledge) hidde...
The data stream model for data mining places harsh restrictions on a learning algorithm. A model mus...
This work is detailed presentation of the main ideas behind state-of-the-art algorithms for online l...
Abstract. This paper presents an incremental and scalable learning algorithm in order to mine numeri...
This paper presents a scalable learning algorithm to classify numerical, low dimensionality, high-ca...
This paper presents a scalable learning algorithm to classify numerical, low dimensionality, high–ca...
Mining data streams is a challenging task that requires online systems based on incremental learning...
Mining data streams is a challenging task that requires online systems based on incremental learnin...
Great organizations collect open-ended and time-changing data received at a high speed. The possibil...
The data stream model for data mining places harsh restrictions on a learning algorithm. First, a mo...
Mining data streams is a challenging task that requires online systems based on incremental learning...
In this paper a novel data mining algorithm, Clustering and Classification Algorithm-Supervised (CCA...
The recent advances in hardware and software have enabled the capture of different measurements of d...
This paper presents a new learning algorithm for inducing decision trees from data streams. In thes...
Data mining (DM) is the process of finding patterns and relationships in databases.The breakthrough ...
doi:10.1214/lnms/1196285404Data mining is a process of discovering useful patterns (knowledge) hidde...
The data stream model for data mining places harsh restrictions on a learning algorithm. A model mus...
This work is detailed presentation of the main ideas behind state-of-the-art algorithms for online l...
Abstract. This paper presents an incremental and scalable learning algorithm in order to mine numeri...
This paper presents a scalable learning algorithm to classify numerical, low dimensionality, high-ca...
This paper presents a scalable learning algorithm to classify numerical, low dimensionality, high–ca...
Mining data streams is a challenging task that requires online systems based on incremental learning...
Mining data streams is a challenging task that requires online systems based on incremental learnin...
Great organizations collect open-ended and time-changing data received at a high speed. The possibil...
The data stream model for data mining places harsh restrictions on a learning algorithm. First, a mo...
Mining data streams is a challenging task that requires online systems based on incremental learning...
In this paper a novel data mining algorithm, Clustering and Classification Algorithm-Supervised (CCA...
The recent advances in hardware and software have enabled the capture of different measurements of d...
This paper presents a new learning algorithm for inducing decision trees from data streams. In thes...
Data mining (DM) is the process of finding patterns and relationships in databases.The breakthrough ...
doi:10.1214/lnms/1196285404Data mining is a process of discovering useful patterns (knowledge) hidde...
The data stream model for data mining places harsh restrictions on a learning algorithm. A model mus...
This work is detailed presentation of the main ideas behind state-of-the-art algorithms for online l...