The need for the ability to cluster unknown data to better understand its relationship to know data is prevalent throughout science. Besides a better understanding of the data itself or learning about a new unknown object, cluster analysis can help with processing data, data standardization, and outlier detection. Most clustering algorithms are based on known features or expectations, such as the popular partition based, hierarchical, density-based, grid based, and model based algorithms. The choice of algorithm depends on many factors, including the type of data and the reason for clustering, nearly all rely on some known properties of the data being analyzed. Recently, Li et al. proposed a new universal similarity metric, this metric need...
Unsupervised image clustering is a challenging and often ill-posed problem. Existing image descripto...
Existing image complexity metrics cannot distinguish meaningful content from noise. This means that ...
Abstract. We approach the problem of measuring similarity between chromagrams and present two new qu...
We present a new method for clustering based on compression. The method doesn’t use subject-specific...
Data compression, data prediction, data classification, learning and data mining are all strictly re...
Abstract — Clustering techniques have a wide use and importance nowadays. This importance tends to i...
Data Compression is today essential for a wide range of applications: for example Internet and the W...
The normalized compression distance (NCD) is a similarity measure between a pair of finite objects b...
[[abstract]]Many validity measures have been proposed for evaluating clustering results. Most of the...
Clustering algorithms partition a collection of objects into a certain number of clusters (groups, s...
This paper proposes to use compression-based similarity measures to cluster spectral signatures on t...
Data compression, data prediction, data classification, learning and data mining are all facets of t...
Abstract — Clustering is a technique of data mining. It aims at finding natural partitioning of data...
We present a new similarity measure based on information theoretic measures which is superior than N...
Clustering algorithms – a field of data mining – aims at finding a grouping structure in the input d...
Unsupervised image clustering is a challenging and often ill-posed problem. Existing image descripto...
Existing image complexity metrics cannot distinguish meaningful content from noise. This means that ...
Abstract. We approach the problem of measuring similarity between chromagrams and present two new qu...
We present a new method for clustering based on compression. The method doesn’t use subject-specific...
Data compression, data prediction, data classification, learning and data mining are all strictly re...
Abstract — Clustering techniques have a wide use and importance nowadays. This importance tends to i...
Data Compression is today essential for a wide range of applications: for example Internet and the W...
The normalized compression distance (NCD) is a similarity measure between a pair of finite objects b...
[[abstract]]Many validity measures have been proposed for evaluating clustering results. Most of the...
Clustering algorithms partition a collection of objects into a certain number of clusters (groups, s...
This paper proposes to use compression-based similarity measures to cluster spectral signatures on t...
Data compression, data prediction, data classification, learning and data mining are all facets of t...
Abstract — Clustering is a technique of data mining. It aims at finding natural partitioning of data...
We present a new similarity measure based on information theoretic measures which is superior than N...
Clustering algorithms – a field of data mining – aims at finding a grouping structure in the input d...
Unsupervised image clustering is a challenging and often ill-posed problem. Existing image descripto...
Existing image complexity metrics cannot distinguish meaningful content from noise. This means that ...
Abstract. We approach the problem of measuring similarity between chromagrams and present two new qu...