Automation of machine learning model development is increasingly becoming an established research area. While automated model selection and automated data pre-processing have been studied in depth, there is, however, a gap concerning automated model adaptation strategies when multiple strategies are available. Manually developing an adaptation strategy can be time consuming and costly. In this paper we address this issue by proposing the use of flexible adaptive mechanism deployment for automated development of adaptation strategies. Experimental results after using the proposed strategies with five adaptive algorithms on 36 datasets confirm their viability. These strategies achieve better or comparable performance to the custom adaptation ...
Abstract. Decision rules are one of the most expressive languages for machine learning. In this pape...
In this study, we propose dynamic model update methods for the adaptive classification model of text...
In this paper, an approach to autonomous learning of a multi-model system from streaming data, named...
Automation of machine learning model development is increasingly becoming an established research ar...
Making predictions on non-stationary streaming data remains a challenge in many application areas. C...
Automated Machine Learning (AutoML) systems have been shown to efficiently build good models for new...
Many supervised learning approaches that adapt to changes in data distribution over time (e.g., conc...
Machine learning (ML) has become ubiquitous in various disciplines and applications, serving as a po...
In order for a machine learning effort to succeed, an appropriate model must be chosen. This is a d...
153 p.Applications that generate data in the form of fast streams from non-stationary environments, ...
Our digital universe is rapidly expanding, more and more daily activities are digitally recorded, da...
Machine learning models are subject to changing circumstances, and will degrade over time. Nowadays,...
Existing adaptive predictive methods often use multiple adaptive mechanisms as part of their coping ...
In this paper, a novel self-adaptive fuzzy learning (SAFL) system is proposed for streaming data pre...
Automated Machine Learning (AutoML) has been used successfully in settings where the learning task i...
Abstract. Decision rules are one of the most expressive languages for machine learning. In this pape...
In this study, we propose dynamic model update methods for the adaptive classification model of text...
In this paper, an approach to autonomous learning of a multi-model system from streaming data, named...
Automation of machine learning model development is increasingly becoming an established research ar...
Making predictions on non-stationary streaming data remains a challenge in many application areas. C...
Automated Machine Learning (AutoML) systems have been shown to efficiently build good models for new...
Many supervised learning approaches that adapt to changes in data distribution over time (e.g., conc...
Machine learning (ML) has become ubiquitous in various disciplines and applications, serving as a po...
In order for a machine learning effort to succeed, an appropriate model must be chosen. This is a d...
153 p.Applications that generate data in the form of fast streams from non-stationary environments, ...
Our digital universe is rapidly expanding, more and more daily activities are digitally recorded, da...
Machine learning models are subject to changing circumstances, and will degrade over time. Nowadays,...
Existing adaptive predictive methods often use multiple adaptive mechanisms as part of their coping ...
In this paper, a novel self-adaptive fuzzy learning (SAFL) system is proposed for streaming data pre...
Automated Machine Learning (AutoML) has been used successfully in settings where the learning task i...
Abstract. Decision rules are one of the most expressive languages for machine learning. In this pape...
In this study, we propose dynamic model update methods for the adaptive classification model of text...
In this paper, an approach to autonomous learning of a multi-model system from streaming data, named...