Density-based and grid-based clustering are two main clustering approaches. The former is famous for its capability of discovering clusters of various shapes and eliminating noises, while the latter is well known for its high speed. Combination of the two approaches seems to provide better clustering results. To the best of our knowledge, however, all existing algorithms that combine density-based clustering and grid-based clustering take cells as atomic units, in the sense that either all objects in a cell belong to a cluster or no object in the cell belong to any cluster. This requires the cells to be small enough to ensure the fine resolution of results. In high-dimensional spaces, however, the number of cells can be very large when cell...
Clustering high-dimensional data is more difficult than clustering low-dimensional data. The problem...
<p>We study density-based clustering under low-noise conditions. Our framework allows for sharply de...
Many real-world data sets consist of a very high dimensional feature space. Most clustering techniqu...
Density-based and grid-based clustering are two main clustering approaches. The former is famous for...
We propose an enhanced grid-density based approach for clustering high dimensional data. Our techniq...
Many applications require the clustering of large amounts of high-dimensional data. Most clustering ...
This paper presents a supervised clustering algorithm, namely Grid-Based Supervised Clustering (GBSC...
© 2019 Minh Tuan DoanClustering is the task of grouping similar objects together, where each group f...
Abstract- Clustering high dimensional data is an emerging research field. Most clustering technique ...
Clustering is an essential way to extract meaningful information from massive data without human int...
1 Introduction Clustering is the process of allocating points in a given dataset into disjoint and m...
Clustering is an unsupervised machine learning task that seeks to partition a set of data into small...
Many clustering algorithms tend to break down in high-dimensional feature spaces, because the cluste...
Clustering multi-dimensional points is a fundamental task in many fields, and density-based clusteri...
Many clustering algorithms tend to break down in high-dimensional feature spaces, because the cluste...
Clustering high-dimensional data is more difficult than clustering low-dimensional data. The problem...
<p>We study density-based clustering under low-noise conditions. Our framework allows for sharply de...
Many real-world data sets consist of a very high dimensional feature space. Most clustering techniqu...
Density-based and grid-based clustering are two main clustering approaches. The former is famous for...
We propose an enhanced grid-density based approach for clustering high dimensional data. Our techniq...
Many applications require the clustering of large amounts of high-dimensional data. Most clustering ...
This paper presents a supervised clustering algorithm, namely Grid-Based Supervised Clustering (GBSC...
© 2019 Minh Tuan DoanClustering is the task of grouping similar objects together, where each group f...
Abstract- Clustering high dimensional data is an emerging research field. Most clustering technique ...
Clustering is an essential way to extract meaningful information from massive data without human int...
1 Introduction Clustering is the process of allocating points in a given dataset into disjoint and m...
Clustering is an unsupervised machine learning task that seeks to partition a set of data into small...
Many clustering algorithms tend to break down in high-dimensional feature spaces, because the cluste...
Clustering multi-dimensional points is a fundamental task in many fields, and density-based clusteri...
Many clustering algorithms tend to break down in high-dimensional feature spaces, because the cluste...
Clustering high-dimensional data is more difficult than clustering low-dimensional data. The problem...
<p>We study density-based clustering under low-noise conditions. Our framework allows for sharply de...
Many real-world data sets consist of a very high dimensional feature space. Most clustering techniqu...