Data stream classification algorithms for nonstationary environments frequently assume the availability of class labels, instantly or with some lag after the classification. However, certain applications, mainly those related to sensors and robotics, involve high costs to obtain new labels during the classification phase. Such a scenario in which the actual labels of processed data are never available is called extreme verification latency. Extreme verification latency requires new classification methods capable of adapting to possible changes over time without external supervision. This paper presents a fast, simple, intuitive and accurate algorithm to classify nonstationary data streams in an extreme verification latency scenario, namely ...
Nowadays, overwhelming volumes of sequential data are very common in scientific and business applica...
One of the more challenging real-world problems in computational intelligence is to learn from non-s...
YesData streams have arisen as a relevant research topic during the past decade. They are real‐time,...
Data stream classification algorithms for nonstationary environments frequently assume the availabil...
The majority of evolving data streams classification algorithms assume that the actual labels of the...
Existing Data Stream Mining algorithms assume the availability of labelled and balanced data streams...
Existing Data Stream Mining algorithms assume the availability of labelled and balanced data streams...
One of the more challenging real-world problems in computational intelligence is to learn from non-s...
The file attached to this record is the author's final peer reviewed version.Ensemble techniques are...
In contrast to traditional machine learning algorithms, where all data are available in batch mode, ...
Analysing data in real-time is a natural and necessary progression from traditional data mining. How...
© 2019 Milad ChenaghlouData stream clustering and anomaly detection have grown in importance with th...
Due to recent advances in data collection techniques, massive amounts of data are being collected at...
Data stream classification is an important problem in the field of machine learning. Due to the non-...
Data stream classification is the process of learning supervised models from continuous labelled exa...
Nowadays, overwhelming volumes of sequential data are very common in scientific and business applica...
One of the more challenging real-world problems in computational intelligence is to learn from non-s...
YesData streams have arisen as a relevant research topic during the past decade. They are real‐time,...
Data stream classification algorithms for nonstationary environments frequently assume the availabil...
The majority of evolving data streams classification algorithms assume that the actual labels of the...
Existing Data Stream Mining algorithms assume the availability of labelled and balanced data streams...
Existing Data Stream Mining algorithms assume the availability of labelled and balanced data streams...
One of the more challenging real-world problems in computational intelligence is to learn from non-s...
The file attached to this record is the author's final peer reviewed version.Ensemble techniques are...
In contrast to traditional machine learning algorithms, where all data are available in batch mode, ...
Analysing data in real-time is a natural and necessary progression from traditional data mining. How...
© 2019 Milad ChenaghlouData stream clustering and anomaly detection have grown in importance with th...
Due to recent advances in data collection techniques, massive amounts of data are being collected at...
Data stream classification is an important problem in the field of machine learning. Due to the non-...
Data stream classification is the process of learning supervised models from continuous labelled exa...
Nowadays, overwhelming volumes of sequential data are very common in scientific and business applica...
One of the more challenging real-world problems in computational intelligence is to learn from non-s...
YesData streams have arisen as a relevant research topic during the past decade. They are real‐time,...