Virtually every sector of business and industry that use computing, including financial analysis, search engines, and electronic commerce, incorporate Big Data analysis into their business model. Sophisticated clustering algorithms are highly desired to deduce the nature of data by assigning labels to unlabeled data. We address two main challenges in Big Data. First, by definition, the volume of Big Data is too large to be loaded into a computer\u27s memory (this volume changes based on the computer used or available). Second, in real-time applications, the velocity of new incoming data prevents historical data from being stored and future data from being accessed. Therefore, we propose our Streaming Kernel Fuzzy c-Means (stKFCM) algorithm,...
A massive volume of digital data holding valuable information, called Big Data, is produced each gen...
Clustering algorithms are an important tool for data mining and data analysis purposes. Clustering a...
With respect to the cluster problem of the evaluation information of mass customers in service manag...
Virtually every sector of business and industry that uses computing, including financial analysis, s...
Clustering algorithms are an integral part of both computational intelligence and pattern recognitio...
Abstract. The parallel fuzzy c-means (PFCM) algorithm for cluster-ing large data sets is proposed in...
Clustering large data sets has become very important as the amount of available unlabeled data incre...
Kernel approaches call improve the performance of conventional Clustering or classification algorith...
In data analysis and data mining technique fields, one of the most widely used methods is clustering...
AbstractKernel k-Means is a basis for many state of the art global clustering approaches. When the n...
Abstract: The 'kernel method ' has attracted great attention with the development of suppo...
Clustering is an unsupervised learning task where one seeks to identify a finite set of categories t...
Over the last decade kernel based learning algorithms known as Support Vector Machines (SVMs) have b...
Abstract. Bias-corrected fuzzy c-means (BCFCM) algorithm with spatial information has been proven ef...
Clustering is a useful tool for dealing with large amounts of data. When dealing with larger dataset...
A massive volume of digital data holding valuable information, called Big Data, is produced each gen...
Clustering algorithms are an important tool for data mining and data analysis purposes. Clustering a...
With respect to the cluster problem of the evaluation information of mass customers in service manag...
Virtually every sector of business and industry that uses computing, including financial analysis, s...
Clustering algorithms are an integral part of both computational intelligence and pattern recognitio...
Abstract. The parallel fuzzy c-means (PFCM) algorithm for cluster-ing large data sets is proposed in...
Clustering large data sets has become very important as the amount of available unlabeled data incre...
Kernel approaches call improve the performance of conventional Clustering or classification algorith...
In data analysis and data mining technique fields, one of the most widely used methods is clustering...
AbstractKernel k-Means is a basis for many state of the art global clustering approaches. When the n...
Abstract: The 'kernel method ' has attracted great attention with the development of suppo...
Clustering is an unsupervised learning task where one seeks to identify a finite set of categories t...
Over the last decade kernel based learning algorithms known as Support Vector Machines (SVMs) have b...
Abstract. Bias-corrected fuzzy c-means (BCFCM) algorithm with spatial information has been proven ef...
Clustering is a useful tool for dealing with large amounts of data. When dealing with larger dataset...
A massive volume of digital data holding valuable information, called Big Data, is produced each gen...
Clustering algorithms are an important tool for data mining and data analysis purposes. Clustering a...
With respect to the cluster problem of the evaluation information of mass customers in service manag...