In this report we introduce a classification system named Grouping of Features (GoF), together with a theoretical exploration of some of the important concepts in the Instant Based Learning(IBL)-field that are related to this system.A dataset's original features are by the GoF-system grouped together into abstract features. Each of these groups may capture inherent structures in one of the classes in the data. A genetic algorithm is used to extract a tree of such groups that can be used for measuring similarity between samples. As each class may have different inherent structures, different trees of groups are found for the different classes. To adjust the importance of one group in regards to the classifier, the concept of power average is...
This paper presents a new Similarity Based Agglomerative Clustering(SBAC) algorithm that works well ...
AbstractÐThis paper presents a Similarity-Based Agglomerative Clustering (SBAC) algorithm that works...
Abstract- A Feature selection for the high dimensional data clustering is a difficult problem becaus...
In this report we introduce a classification system named Grouping of Features (GoF), together with ...
Similarity-based clustering is a simple but powerful technique which usually results in a clustering...
This paper illustrates how feature grouping can improve matching. Obviously feature groupes convey m...
Clustering is a difficult and widely studied data mining task, with many varieties of clustering alg...
Feature manipulation refers to the process by which the input space of a machine learning task is al...
[[abstract]]Feature selection is a pre-processing step in data mining and machine learning, and is v...
In the past two decades, the dimensionality of datasets involved in machine learning and data mining...
Feature subset clustering is a powerful technique to reduce the dimensionality of feature vectors fo...
This paper discusses a genetic-algorithm-based approach for selecting a small number of representati...
A new method for feature selection is proposed. The method associates a weight with each feature by ...
A widely-used assumption cognitive modeling is that stimuli are represented in terms of features. Tw...
Each data mining application has widespread issue; dataset has gigantic number of features which are...
This paper presents a new Similarity Based Agglomerative Clustering(SBAC) algorithm that works well ...
AbstractÐThis paper presents a Similarity-Based Agglomerative Clustering (SBAC) algorithm that works...
Abstract- A Feature selection for the high dimensional data clustering is a difficult problem becaus...
In this report we introduce a classification system named Grouping of Features (GoF), together with ...
Similarity-based clustering is a simple but powerful technique which usually results in a clustering...
This paper illustrates how feature grouping can improve matching. Obviously feature groupes convey m...
Clustering is a difficult and widely studied data mining task, with many varieties of clustering alg...
Feature manipulation refers to the process by which the input space of a machine learning task is al...
[[abstract]]Feature selection is a pre-processing step in data mining and machine learning, and is v...
In the past two decades, the dimensionality of datasets involved in machine learning and data mining...
Feature subset clustering is a powerful technique to reduce the dimensionality of feature vectors fo...
This paper discusses a genetic-algorithm-based approach for selecting a small number of representati...
A new method for feature selection is proposed. The method associates a weight with each feature by ...
A widely-used assumption cognitive modeling is that stimuli are represented in terms of features. Tw...
Each data mining application has widespread issue; dataset has gigantic number of features which are...
This paper presents a new Similarity Based Agglomerative Clustering(SBAC) algorithm that works well ...
AbstractÐThis paper presents a Similarity-Based Agglomerative Clustering (SBAC) algorithm that works...
Abstract- A Feature selection for the high dimensional data clustering is a difficult problem becaus...