Beyond applying machine learning predictive models to static tasks, a significant corpus of research exists that applies machine learning predictive models to streaming environments that incur concept drift. With the prevalence of streaming real-world applications that are associated with changes in the underlying data distribution, the need for applications that are capable of adapting to evolving and time-varying dynamic environments can be hardly overstated. Dynamic environments are nonstationary and change with time and the target variables to be predicted by the learning algorithm and often evolve with time, a phenomenon known as concept drift. Most work in handling concept drift focuses on updating the prediction model so that it can ...
Abstract—Learning in nonstationary environments, also known as learning concept drift, is concerned ...
AbstractConcept drift represents that the underlying data generating distribution changes over time ...
The performance of the machine learning model always decreases with the occurrence of concept drift ...
Abstract. This paper proposes a boosting-like method to train a classifier ensemble from data stream...
In recent years, the prevalence of technological advances has led to an enormous and ever-increasing...
Concept drift refers to changes in the distribution of underlying data and is an inherent property o...
Advanced analysis of data streams is quickly becoming a key area of data mining research as the numb...
While traditional supervised learning focuses on static datasets, an increasing amount of data comes...
The treatment of large data streams in the presence of concept drifts is one of the main challenges ...
For most real-world data streams, the concept about which data is obtained may shift from time to ti...
Nowadays, many sources generate unbounded data streams at high incoming rates. It is impossible to s...
This paper presents a novel ensemble learning method based on evolutionary algorithms to cope with d...
153 p.Applications that generate data in the form of fast streams from non-stationary environments, ...
This paper proposes a boosting-like method to train a classifier ensemble from data streams. It natu...
Learning in non-stationary environments is a challenging task which requires the updating of predict...
Abstract—Learning in nonstationary environments, also known as learning concept drift, is concerned ...
AbstractConcept drift represents that the underlying data generating distribution changes over time ...
The performance of the machine learning model always decreases with the occurrence of concept drift ...
Abstract. This paper proposes a boosting-like method to train a classifier ensemble from data stream...
In recent years, the prevalence of technological advances has led to an enormous and ever-increasing...
Concept drift refers to changes in the distribution of underlying data and is an inherent property o...
Advanced analysis of data streams is quickly becoming a key area of data mining research as the numb...
While traditional supervised learning focuses on static datasets, an increasing amount of data comes...
The treatment of large data streams in the presence of concept drifts is one of the main challenges ...
For most real-world data streams, the concept about which data is obtained may shift from time to ti...
Nowadays, many sources generate unbounded data streams at high incoming rates. It is impossible to s...
This paper presents a novel ensemble learning method based on evolutionary algorithms to cope with d...
153 p.Applications that generate data in the form of fast streams from non-stationary environments, ...
This paper proposes a boosting-like method to train a classifier ensemble from data streams. It natu...
Learning in non-stationary environments is a challenging task which requires the updating of predict...
Abstract—Learning in nonstationary environments, also known as learning concept drift, is concerned ...
AbstractConcept drift represents that the underlying data generating distribution changes over time ...
The performance of the machine learning model always decreases with the occurrence of concept drift ...