Machine learning-based solutions are frequently adapted in several applications that require big data in operations. The performance of a model that is deployed into operations is subject to degradation due to unanticipated changes in the flow of input data. Hence, monitoring data drift becomes essential to maintain the model’s desired performance. Based on the conducted review of the literature on drift detection, statistical hypothesis testing enables to investigate whether incoming data is drifting from training data. Because Maximum Mean Discrepancy (MMD) and Kolmogorov-Smirnov (KS) have shown to be reliable distance measures between multivariate distributions in the literature review, both were selected from several existing techniques...
Smart sensors and meters have facilitated the control and optimization of water and wastewater treat...
International audienceIn the classic machine learning framework, models are trained on historical da...
The last decade has seen a surge of interest in adaptive learning algorithms for data stream classif...
The performance of machine learning models diminishes while predicting the Remaining Useful Life (RU...
An established method to detect concept drift in data streams is to perform statistical hypothesis t...
Machine learning applications in streaming data often grapple with dynamic changes in data distribut...
When monitoring machine learning systems, two-sample tests of homogeneity form the foundation upon w...
Abstract — Various types of online learning algorithms have been developed so far to handle concept ...
The dynamicity of real-world systems poses a significant challenge to deployed predictive machine le...
Most machine learning models are trained on historical data to learn a static mapping between their ...
The term “data-drift” refers to a difference between the data used to test and validate a model and ...
Machine learning (ML) has become ubiquitous in various disciplines and applications, serving as a po...
Most of the work in machine learning assume that examples are generated at random according to some ...
AbstractValidating online stream classifiers has traditionally assumed the availability of labeled s...
The following thesis aims to investigate the issues concerning the maintenance of a Machine Learning...
Smart sensors and meters have facilitated the control and optimization of water and wastewater treat...
International audienceIn the classic machine learning framework, models are trained on historical da...
The last decade has seen a surge of interest in adaptive learning algorithms for data stream classif...
The performance of machine learning models diminishes while predicting the Remaining Useful Life (RU...
An established method to detect concept drift in data streams is to perform statistical hypothesis t...
Machine learning applications in streaming data often grapple with dynamic changes in data distribut...
When monitoring machine learning systems, two-sample tests of homogeneity form the foundation upon w...
Abstract — Various types of online learning algorithms have been developed so far to handle concept ...
The dynamicity of real-world systems poses a significant challenge to deployed predictive machine le...
Most machine learning models are trained on historical data to learn a static mapping between their ...
The term “data-drift” refers to a difference between the data used to test and validate a model and ...
Machine learning (ML) has become ubiquitous in various disciplines and applications, serving as a po...
Most of the work in machine learning assume that examples are generated at random according to some ...
AbstractValidating online stream classifiers has traditionally assumed the availability of labeled s...
The following thesis aims to investigate the issues concerning the maintenance of a Machine Learning...
Smart sensors and meters have facilitated the control and optimization of water and wastewater treat...
International audienceIn the classic machine learning framework, models are trained on historical da...
The last decade has seen a surge of interest in adaptive learning algorithms for data stream classif...