Maximum-margin clustering is an extension of the support vector machine (SVM) to clustering. It partitions a set of unlabeled data into multiple groups by finding hyperplanes with the largest margins. Although existing algorithms have shown promising results, there is no guarantee of convergence of these algorithms to global solutions due to the nonconvexity of the optimization problem. In this paper, we propose a simulated annealing-based algorithm that is able to mitigate the issue of local minima in the maximum-margin clustering problem. The novelty of our algorithm is twofold, ie, (i) it comprises a comprehensive cluster modification scheme based on simulated annealing, and (ii) it introduces a new approach based on the combination of k...
The k-means clustering method is one of the most widely used techniques in big data analytics. In th...
This paper presents a fast simulated annealing framework for combining multiple clusterings (i.e. cl...
Abstract: We study the problem of finding an optimum clustering, a problem known to be NP-hard. Exis...
© 2018 Wiley Periodicals, Inc. Maximum-margin clustering is an extension of the support vector machi...
Maximum margin clustering was proposed lately and has shown promising performance in recent studies ...
In this paper we discuss the solution of the clustering problem usually solved by the K-means algori...
Maximum margin clustering (MMC), which borrows the large margin heuristic from support vector machin...
In recent decades, large margin methods such as Support Vector Machines (SVMs) are supposed to be th...
Motivated by the success of large margin methods in supervised learning, maximum margin clustering (...
In this paper we discuss the solution of the clustering problem usually solved by the K-means algori...
Motivated by the success of large margin methods in supervised learning, maximum margin clustering (...
Abstract: Clustering is one of the fastest growing research areas because of availability of huge am...
Explores the applicability of simulated annealing, a probabilistic search method, for finding optima...
Support vector clustering (SVC) is a boundary-based algorithm, which has several advantages over oth...
Master of ScienceDepartment of Industrial & Manufacturing Systems EngineeringTodd EastonData cluster...
The k-means clustering method is one of the most widely used techniques in big data analytics. In th...
This paper presents a fast simulated annealing framework for combining multiple clusterings (i.e. cl...
Abstract: We study the problem of finding an optimum clustering, a problem known to be NP-hard. Exis...
© 2018 Wiley Periodicals, Inc. Maximum-margin clustering is an extension of the support vector machi...
Maximum margin clustering was proposed lately and has shown promising performance in recent studies ...
In this paper we discuss the solution of the clustering problem usually solved by the K-means algori...
Maximum margin clustering (MMC), which borrows the large margin heuristic from support vector machin...
In recent decades, large margin methods such as Support Vector Machines (SVMs) are supposed to be th...
Motivated by the success of large margin methods in supervised learning, maximum margin clustering (...
In this paper we discuss the solution of the clustering problem usually solved by the K-means algori...
Motivated by the success of large margin methods in supervised learning, maximum margin clustering (...
Abstract: Clustering is one of the fastest growing research areas because of availability of huge am...
Explores the applicability of simulated annealing, a probabilistic search method, for finding optima...
Support vector clustering (SVC) is a boundary-based algorithm, which has several advantages over oth...
Master of ScienceDepartment of Industrial & Manufacturing Systems EngineeringTodd EastonData cluster...
The k-means clustering method is one of the most widely used techniques in big data analytics. In th...
This paper presents a fast simulated annealing framework for combining multiple clusterings (i.e. cl...
Abstract: We study the problem of finding an optimum clustering, a problem known to be NP-hard. Exis...