Abstract Real-world data streams pose a unique challenge to the implementation of machine learning (ML) models and data analysis. A notable problem that has been introduced by the growth of Internet of Things (IoT) deployments across the smart city ecosystem is that the statistical properties of data streams can change over time, resulting in poor prediction performance and ineffective decisions. While concept drift detection methods aim to patch this problem, emerging communication and sensing technologies are generating a massive amount of data, requiring distributed environments to perform computation tasks across smart city administrative domains. In this article, we implement and test a number of state-of-the-art active concept drift ...
Data collected over time often exhibit changes in distribution, or concept drift, caused by changes ...
The dynamicity of real-world systems poses a significant challenge to deployed predictive machine le...
The detection of concept drift allows to point out when a data stream changes its behavior over time...
Real-world data streams pose a unique challenge to the implementation of machine learning (ML) model...
Abstract—Applying sophisticated machine learning tech-niques on fully distributed data is increasing...
Massively distributed data mining in large networks such as smart device platforms and peer-to-peer ...
Increasingly, Internet of Things (IoT) domains, such as sensor networks, smart cities, and social ne...
Many crowdsensing applications today rely on learning algorithms applied to data streams to accurate...
Data stream mining deals with processing large amounts of data in nonstationary environments, where ...
Due to potentially large number of applications of real-time data stream mining in scientific and bu...
Recent advances in computational intelligent systems have focused on addressing complex problems rel...
In data stream mining, the emergence of new patterns or a pattern ceasing to exist is called concept...
153 p.Applications that generate data in the form of fast streams from non-stationary environments, ...
In the real world data is often non stationary. In predictive analytics, machine learning and data m...
Machine learning applications in streaming data often grapple with dynamic changes in data distribut...
Data collected over time often exhibit changes in distribution, or concept drift, caused by changes ...
The dynamicity of real-world systems poses a significant challenge to deployed predictive machine le...
The detection of concept drift allows to point out when a data stream changes its behavior over time...
Real-world data streams pose a unique challenge to the implementation of machine learning (ML) model...
Abstract—Applying sophisticated machine learning tech-niques on fully distributed data is increasing...
Massively distributed data mining in large networks such as smart device platforms and peer-to-peer ...
Increasingly, Internet of Things (IoT) domains, such as sensor networks, smart cities, and social ne...
Many crowdsensing applications today rely on learning algorithms applied to data streams to accurate...
Data stream mining deals with processing large amounts of data in nonstationary environments, where ...
Due to potentially large number of applications of real-time data stream mining in scientific and bu...
Recent advances in computational intelligent systems have focused on addressing complex problems rel...
In data stream mining, the emergence of new patterns or a pattern ceasing to exist is called concept...
153 p.Applications that generate data in the form of fast streams from non-stationary environments, ...
In the real world data is often non stationary. In predictive analytics, machine learning and data m...
Machine learning applications in streaming data often grapple with dynamic changes in data distribut...
Data collected over time often exhibit changes in distribution, or concept drift, caused by changes ...
The dynamicity of real-world systems poses a significant challenge to deployed predictive machine le...
The detection of concept drift allows to point out when a data stream changes its behavior over time...