<p>In the first part of this chapter we detail center based clustering methods, namely methods based on finding a “best” set of center points and then assigning data points to their nearest center. In particular, we focus on k-means and k-median clustering which are two of the most widely used clustering objectives. We describe popular heuristics for these methods and theoretical guarantees associated with them. We also describe how to design worst case approximately optimal algorithms for these problems. In the second part of the chapter we describe recent work on how to improve on these worst case algorithms even further by using insights from the nature of real world clustering problems and data sets. Finally, we also summarize theoretic...
Center-based clustering, in particular k-means clustering, is frequently used for point data. Its ad...
In this paper, we propose an algorithm to compute initial cluster centers for K-means clustering. Da...
In this thesis we show that, for several clustering problems, we can extract a small set of points, ...
In the first part of this chapter we detail center based clustering methods, namely methods based on...
In the first part of this chapter we present existing work in center based clustering methods. In pa...
A novel center-based clustering algorithm is proposed in this paper. We first for-mulate clustering ...
Families of center-based clustering methods are capable of handling high dimensional sparse data ari...
A novel center-based clustering algorithm is proposed in this paper. We first for-mulate clustering ...
Families of center-based clustering methods are capable of handling high dimensional sparse data ari...
Introduction Clustering is an important problem, with applications in areas such as data mining and...
Clustering is a fundamental unsupervised machine learning task that aims to aggregate similar data i...
Clustering is a fundamental unsupervised machine learning task that aims to aggregate similar data i...
Center-based clustering, in particular k-means clustering, is frequently used for point data. Its ad...
Center-based clustering, in particular k-means clustering, is frequently used for point data. Its ad...
Center-based clustering, in particular k-means clustering, is frequently used for point data. Its ad...
Center-based clustering, in particular k-means clustering, is frequently used for point data. Its ad...
In this paper, we propose an algorithm to compute initial cluster centers for K-means clustering. Da...
In this thesis we show that, for several clustering problems, we can extract a small set of points, ...
In the first part of this chapter we detail center based clustering methods, namely methods based on...
In the first part of this chapter we present existing work in center based clustering methods. In pa...
A novel center-based clustering algorithm is proposed in this paper. We first for-mulate clustering ...
Families of center-based clustering methods are capable of handling high dimensional sparse data ari...
A novel center-based clustering algorithm is proposed in this paper. We first for-mulate clustering ...
Families of center-based clustering methods are capable of handling high dimensional sparse data ari...
Introduction Clustering is an important problem, with applications in areas such as data mining and...
Clustering is a fundamental unsupervised machine learning task that aims to aggregate similar data i...
Clustering is a fundamental unsupervised machine learning task that aims to aggregate similar data i...
Center-based clustering, in particular k-means clustering, is frequently used for point data. Its ad...
Center-based clustering, in particular k-means clustering, is frequently used for point data. Its ad...
Center-based clustering, in particular k-means clustering, is frequently used for point data. Its ad...
Center-based clustering, in particular k-means clustering, is frequently used for point data. Its ad...
In this paper, we propose an algorithm to compute initial cluster centers for K-means clustering. Da...
In this thesis we show that, for several clustering problems, we can extract a small set of points, ...