This paper presents a scalable learning algorithm to classify numerical, low dimensionality, high-cardinality, time-changing data streams. Our approach, named SCALLOP, provides a set of decision rules on demand which improves its simplicity and helpfulness for the user. SCALLOP updates the knowledge model every time a new example is read, adding interesting rules and removing out-of-date rules. As the model is dynamic, it maintains the tendency of data. Experimental results with synthetic data streams show a good performance with respect to running time, accuracy and simplicity of the model
This paper presents a new learning algorithm for inducing decision trees from data streams. In thes...
Mining data streams is a core element of Big Data Analytics. It represents the velocity of large dat...
The data stream model for data mining places harsh restrictions on a learning algorithm. A model mus...
This paper presents a scalable learning algorithm to classify numerical, low dimensionality, high–ca...
This paper presents an incremental and scalable learning algorithm in order to mine numeric, low dim...
Mining data streams is a challenging task that requires online systems based on incremental learnin...
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 learning...
Great organizations collect open-ended and time-changing data received at a high speed. The possibil...
The advances in computing software, hardware, connected devices and wireless communication infrastr...
Advances in hardware and software in the past decade allow to capture, record and process fast data ...
This work is detailed presentation of the main ideas behind state-of-the-art algorithms for online l...
This paper introduces a new and expressive algorithm for inducing descriptive rule-sets from streami...
The recent advances in hardware and software have enabled the capture of different measurements of d...
The data stream model for data mining places harsh restrictions on a learning algorithm. First, a mo...
This paper presents a new learning algorithm for inducing decision trees from data streams. In thes...
Mining data streams is a core element of Big Data Analytics. It represents the velocity of large dat...
The data stream model for data mining places harsh restrictions on a learning algorithm. A model mus...
This paper presents a scalable learning algorithm to classify numerical, low dimensionality, high–ca...
This paper presents an incremental and scalable learning algorithm in order to mine numeric, low dim...
Mining data streams is a challenging task that requires online systems based on incremental learnin...
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 learning...
Great organizations collect open-ended and time-changing data received at a high speed. The possibil...
The advances in computing software, hardware, connected devices and wireless communication infrastr...
Advances in hardware and software in the past decade allow to capture, record and process fast data ...
This work is detailed presentation of the main ideas behind state-of-the-art algorithms for online l...
This paper introduces a new and expressive algorithm for inducing descriptive rule-sets from streami...
The recent advances in hardware and software have enabled the capture of different measurements of d...
The data stream model for data mining places harsh restrictions on a learning algorithm. First, a mo...
This paper presents a new learning algorithm for inducing decision trees from data streams. In thes...
Mining data streams is a core element of Big Data Analytics. It represents the velocity of large dat...
The data stream model for data mining places harsh restrictions on a learning algorithm. A model mus...