Abstract — Various types of online learning algorithms have been developed so far to handle concept drift in data streams. We perform more detailed evaluation of these algorithms through new performance metrics- prequential accuracy, kappa statistic, CPU evaluation time, model cost, and memory usage. Experimental evaluation using various artificial and real-world datasets prove that the various concept drifting algorithms provide highly accurate results in classifying new data instances even in a resource constrained environment, irrespective of size of dataset, type of drift or presence of noise in the dataset. We also present empirically the impact of various features- size of ensemble, period value, threshold value, multiplicative factor...
The big data paradigm has posed new challenges for the Machine Learning algorithms, such as analysin...
Data stream classification task needs to address challenges of enormous volume, continuous rapid flo...
This paper addresses the task of learning classifiers from streams of labelled data. In this case we...
Due to potentially large number of applications of real-time data stream mining in scientific and bu...
Data streams are transmitted at high speeds with huge volume and may contain critical information ne...
This dissertation documents a study of the performance characteristics of algorithms designed to mit...
153 p.Applications that generate data in the form of fast streams from non-stationary environments, ...
The dynamicity of real-world systems poses a significant challenge to deployed predictive machine le...
Concept drift primarily refers to an online supervised learning scenario when the relation between ...
The detection of concept drift allows to point out when a data stream changes its behavior over time...
Machine learning applications in streaming data often grapple with dynamic changes in data distribut...
Concept drift in data streams can cause significant performance degradation of existing classificati...
Advanced analysis of data streams is quickly becoming a key area of data mining research as the numb...
Most classification methods are based on the assumption that the data conforms to a stationary distr...
This paper proposes a boosting-like method to train a classifier ensemble from data streams. It natu...
The big data paradigm has posed new challenges for the Machine Learning algorithms, such as analysin...
Data stream classification task needs to address challenges of enormous volume, continuous rapid flo...
This paper addresses the task of learning classifiers from streams of labelled data. In this case we...
Due to potentially large number of applications of real-time data stream mining in scientific and bu...
Data streams are transmitted at high speeds with huge volume and may contain critical information ne...
This dissertation documents a study of the performance characteristics of algorithms designed to mit...
153 p.Applications that generate data in the form of fast streams from non-stationary environments, ...
The dynamicity of real-world systems poses a significant challenge to deployed predictive machine le...
Concept drift primarily refers to an online supervised learning scenario when the relation between ...
The detection of concept drift allows to point out when a data stream changes its behavior over time...
Machine learning applications in streaming data often grapple with dynamic changes in data distribut...
Concept drift in data streams can cause significant performance degradation of existing classificati...
Advanced analysis of data streams is quickly becoming a key area of data mining research as the numb...
Most classification methods are based on the assumption that the data conforms to a stationary distr...
This paper proposes a boosting-like method to train a classifier ensemble from data streams. It natu...
The big data paradigm has posed new challenges for the Machine Learning algorithms, such as analysin...
Data stream classification task needs to address challenges of enormous volume, continuous rapid flo...
This paper addresses the task of learning classifiers from streams of labelled data. In this case we...