Feature selection and its subsequent dimensionality reduction are significant problems in machine learning and it is at the core of several data science techniques. The 'shape' of data, or in other words its related topological properties, can provide crucial insights into the corresponding data types and sources and it enables the identification of general properties that facilitate its analysis and assessment. In this article, we discuss an information theoretic approach combined with data homological properties to assess dimensionality reduction, which can be applied to semantic feature selection
As a preprocessing step, dimensionality reduction from high-dimensional data helps reduce unnecessar...
Data dimensionality is growing exponentially, which poses chal-lenges to the vast majority of existi...
Abstract. The selection of features that are relevant for a prediction or classification problem is ...
Feature selection and its subsequent dimensionality reduction are significant problems in machine le...
Machine learning methods are used to build models for classification and regression tasks, among oth...
Machine learning is used nowadays to build models for classification and regression tasks, among oth...
Machine learning methods are used to build models for classification and regression tasks, among oth...
Hosseini B, Hammer B. Interpretable Discriminative Dimensionality Reduction and Feature Selection on...
The subject at hand is the dimensionality reduction of statistical manifolds by the use of informati...
Data reduction is crucial in order to turn large datasets into information, the major purpose of dat...
The selection of features that are relevant for a prediction or classification problem is an importa...
For knowledge gaining the dimensionality reduction is a significant technique. It has been observed ...
Machine learning of high-dimensional data faces the curse of dimensionality, a set of phenomena that...
Pattern recognition methods often deal with thousands of features. Therefore, dimensionality reducti...
When data objects that are the subject of analysis using machine learning techniques are described b...
As a preprocessing step, dimensionality reduction from high-dimensional data helps reduce unnecessar...
Data dimensionality is growing exponentially, which poses chal-lenges to the vast majority of existi...
Abstract. The selection of features that are relevant for a prediction or classification problem is ...
Feature selection and its subsequent dimensionality reduction are significant problems in machine le...
Machine learning methods are used to build models for classification and regression tasks, among oth...
Machine learning is used nowadays to build models for classification and regression tasks, among oth...
Machine learning methods are used to build models for classification and regression tasks, among oth...
Hosseini B, Hammer B. Interpretable Discriminative Dimensionality Reduction and Feature Selection on...
The subject at hand is the dimensionality reduction of statistical manifolds by the use of informati...
Data reduction is crucial in order to turn large datasets into information, the major purpose of dat...
The selection of features that are relevant for a prediction or classification problem is an importa...
For knowledge gaining the dimensionality reduction is a significant technique. It has been observed ...
Machine learning of high-dimensional data faces the curse of dimensionality, a set of phenomena that...
Pattern recognition methods often deal with thousands of features. Therefore, dimensionality reducti...
When data objects that are the subject of analysis using machine learning techniques are described b...
As a preprocessing step, dimensionality reduction from high-dimensional data helps reduce unnecessar...
Data dimensionality is growing exponentially, which poses chal-lenges to the vast majority of existi...
Abstract. The selection of features that are relevant for a prediction or classification problem is ...