We consider the following problem: given a set of clusterings, find a single clustering that agrees as much as possible with the input clusterings. This problem, clustering aggregation, appears nat-urally in various contexts. For example, clustering categorical data is an instance of the clustering aggregation problem; each categorical attribute can be viewed as a clustering of the input rows where rows are grouped together if they take the same value on that attribute. Clustering ag-gregation can also be used as a metaclustering method to improve the robustness of clustering by combining the output of multiple algorithms. Furthermore, the problem formulation does not require a priori information about the number of clusters; it is naturall...
MasterAlternative clustering algorithms target finding alternative groupings of a dataset on which t...
We formulate clustering aggregation as a special instance of Maximum-Weight Independent Set (MWIS) p...
One of the key tools to gain knowledge from data is clustering: identifying groups of instances that...
We consider the following problem: given a set of clusterings, find a clustering that agrees as much...
When dealing with multiple clustering solutions, the problem of extrapolating a small number of good...
One of the most important and challenging questions in the area of clustering is how to choose the b...
Several practical applications require joining various rankings into a consensus ranking. These appl...
Abstract — Step by step operations by which we make a group of objects in which attributes of all th...
Clustering is a technique which aims to partition a given dataset of objects into groups of similar ...
Abstract: Clustering is a partition of data into a group of similar or dissimilar data points and ea...
This paper introduces a polynomial time approxima-tion scheme for the metric Correlation Cluster-ing...
Once with the exponential increase of data generated by the business environment, the need of rapid,...
Crowdsourcing utilizes human ability by distributing tasks to a large number of workers. It is espec...
Abstract:- Clustering constitutes an important task inside the fields of Pattern Recognition and Dat...
Clustering is an unsupervised learning method that partitions a data set into groups. The aim is to ...
MasterAlternative clustering algorithms target finding alternative groupings of a dataset on which t...
We formulate clustering aggregation as a special instance of Maximum-Weight Independent Set (MWIS) p...
One of the key tools to gain knowledge from data is clustering: identifying groups of instances that...
We consider the following problem: given a set of clusterings, find a clustering that agrees as much...
When dealing with multiple clustering solutions, the problem of extrapolating a small number of good...
One of the most important and challenging questions in the area of clustering is how to choose the b...
Several practical applications require joining various rankings into a consensus ranking. These appl...
Abstract — Step by step operations by which we make a group of objects in which attributes of all th...
Clustering is a technique which aims to partition a given dataset of objects into groups of similar ...
Abstract: Clustering is a partition of data into a group of similar or dissimilar data points and ea...
This paper introduces a polynomial time approxima-tion scheme for the metric Correlation Cluster-ing...
Once with the exponential increase of data generated by the business environment, the need of rapid,...
Crowdsourcing utilizes human ability by distributing tasks to a large number of workers. It is espec...
Abstract:- Clustering constitutes an important task inside the fields of Pattern Recognition and Dat...
Clustering is an unsupervised learning method that partitions a data set into groups. The aim is to ...
MasterAlternative clustering algorithms target finding alternative groupings of a dataset on which t...
We formulate clustering aggregation as a special instance of Maximum-Weight Independent Set (MWIS) p...
One of the key tools to gain knowledge from data is clustering: identifying groups of instances that...