Industrial applications put special demands on machine learning algorithms. Noisy data, outliers, and sensor faults present an immense challenge for learners. A considerable part of machine learning research focuses on the selection of relevant, non-redundant features. This contribution details an approach to group and fuse redundant features prior to learning and classification. Features are grouped relying on a correlation-based redundancy measure. The fusion of features is guided by determining the majority observation based on possibility distributions. Furthermore, this paper studies the effects of feature fusion on the robustness and performance of classification with a focus on industrial applications. The approach is statistically e...
Number of Page 12 Class 1 Key Words Classification, Correlation, Information Fusion, Redundancy. Thi...
Feature selection goal is to get rid of redundant and irrelevant features. The problem of feature su...
Feature selection goal is to get rid of redundant and irrelevant features. The problem of feature su...
International audienceThe goal of feature selection (FS) in machine learning is to find the best sub...
Machine learning algorithms automatically extract knowledge from machine readable information. Unfor...
A central problem in machine learning is identifying a representative set of features from which to ...
Machine learning algorithms automatically extract knowledge from machine readable information. Unfor...
When machine learning supports decision-making in safety-critical systems, it is important to verify...
ii A central problem in machine learning is identifying a representative set of features from which ...
The design work-flow of machine learning techniques for continuous monitoring or predictive maintena...
International audienceIn fault detection systems, massive amount of data gathered from the life-cycl...
Techniques are described herein to efficiently detect redundant features in a machine learning proce...
Feature fusion aims to provide enhancements of data authenticity in both traditional and deep learni...
Pfannschmidt L. Relevance learning for redundant features. Bielefeld: Universität Bielefeld; 2021.Fe...
Machine Learning (ML) requires a certain number of features (i.e., attributes) to train the model. O...
Number of Page 12 Class 1 Key Words Classification, Correlation, Information Fusion, Redundancy. Thi...
Feature selection goal is to get rid of redundant and irrelevant features. The problem of feature su...
Feature selection goal is to get rid of redundant and irrelevant features. The problem of feature su...
International audienceThe goal of feature selection (FS) in machine learning is to find the best sub...
Machine learning algorithms automatically extract knowledge from machine readable information. Unfor...
A central problem in machine learning is identifying a representative set of features from which to ...
Machine learning algorithms automatically extract knowledge from machine readable information. Unfor...
When machine learning supports decision-making in safety-critical systems, it is important to verify...
ii A central problem in machine learning is identifying a representative set of features from which ...
The design work-flow of machine learning techniques for continuous monitoring or predictive maintena...
International audienceIn fault detection systems, massive amount of data gathered from the life-cycl...
Techniques are described herein to efficiently detect redundant features in a machine learning proce...
Feature fusion aims to provide enhancements of data authenticity in both traditional and deep learni...
Pfannschmidt L. Relevance learning for redundant features. Bielefeld: Universität Bielefeld; 2021.Fe...
Machine Learning (ML) requires a certain number of features (i.e., attributes) to train the model. O...
Number of Page 12 Class 1 Key Words Classification, Correlation, Information Fusion, Redundancy. Thi...
Feature selection goal is to get rid of redundant and irrelevant features. The problem of feature su...
Feature selection goal is to get rid of redundant and irrelevant features. The problem of feature su...