This paper introduces an autonomic method to optimize Feature Selection (FS) in autonomic systems while also presenting a taxonomy of FS techniques. Feature selection is a dimension reduction technique that has been proven to lead to improved performance by avoiding overfitting and to address complexity, thus providing faster and cost-effective algorithms. To be successful, the current FS methods are heavily reliant on two key elements: (1) a well defined and static learning objective, and (2) a relevant dataset. Current FS approaches involve mostly a manual process and do not take into account the constant change in the state of the underlying system. However, the method to automate the FS process presented in this paper, the Autonomic Fea...
Automated machine learning (AutoML) methods improve upon existing models by optimizing various aspec...
In most real-world information processing problems, data is not a free resource. Its acquisition is ...
Abstract. The attribute selection techniques for supervised learning, used in the preprocessing phas...
This paper introduces an autonomic method to optimize Feature Selection (FS) in autonomic systems wh...
Feature selection is the process of finding the set of inputs to a machine learning algorithm that w...
Scientific computing systems are becoming increasingly complex and indeed are close to reaching a cr...
> The first practical guide to autonomic computing for advanced students and researchers alike> Pres...
Autonomic computing systems are capable of adapting their behavior and resources thousands of times ...
The main idea of this paper is to compare feature selection methods for dimension reduction of the o...
Autonomic computing systems adapt themselves thousands of times a second, to accomplish their goal d...
Neural networks and deep learning are changing the way that engineering is being practiced. New and ...
In machine learning the classification task is normally known as supervised learning. In supervised ...
Summarization: Feature selection (FS) is a significant topic for the development of efficient patter...
The paper introduces ADHOC, a tool that integrates statistical methods and machine learning techniqu...
The design work-flow of machine learning techniques for continuous monitoring or predictive maintena...
Automated machine learning (AutoML) methods improve upon existing models by optimizing various aspec...
In most real-world information processing problems, data is not a free resource. Its acquisition is ...
Abstract. The attribute selection techniques for supervised learning, used in the preprocessing phas...
This paper introduces an autonomic method to optimize Feature Selection (FS) in autonomic systems wh...
Feature selection is the process of finding the set of inputs to a machine learning algorithm that w...
Scientific computing systems are becoming increasingly complex and indeed are close to reaching a cr...
> The first practical guide to autonomic computing for advanced students and researchers alike> Pres...
Autonomic computing systems are capable of adapting their behavior and resources thousands of times ...
The main idea of this paper is to compare feature selection methods for dimension reduction of the o...
Autonomic computing systems adapt themselves thousands of times a second, to accomplish their goal d...
Neural networks and deep learning are changing the way that engineering is being practiced. New and ...
In machine learning the classification task is normally known as supervised learning. In supervised ...
Summarization: Feature selection (FS) is a significant topic for the development of efficient patter...
The paper introduces ADHOC, a tool that integrates statistical methods and machine learning techniqu...
The design work-flow of machine learning techniques for continuous monitoring or predictive maintena...
Automated machine learning (AutoML) methods improve upon existing models by optimizing various aspec...
In most real-world information processing problems, data is not a free resource. Its acquisition is ...
Abstract. The attribute selection techniques for supervised learning, used in the preprocessing phas...