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Autor:
Athithan, Biswajit Paul G, Murty, MN
Publikováno v:
IndraStra Global.
The development of techniques for scaling up classifiers so that they can be applied to problems with large datasets of training examples is one of the objectives of data mining. Recently, AdaBoost has become popular among machine learning community
Autor:
Garg, Vikas K, Murty, MN
Publikováno v:
IndraStra Global.
The k-means algorithm is an extremely popular technique for clustering data. One of the major limitations of the k-means is that the time to cluster a given dataset D is linear in the number of clusters, k. In this paper, we employ height balanced tr
Publikováno v:
IndraStra Global.
The measure-theoretic definition of Kullback-Leibler relative-entropy (or simply KL-entropy) plays a basic role in defining various classical information measures on general spaces. Entropy, mutual information and conditional forms of entropy can be
Autor:
Babaria, Rashmin, Saketha Nath, J, Krishnan, S, Sivaramakrishnan, KR, Bhattacharyya, Chiranjib, Murty, MN
Publikováno v:
IndraStra Global.
In this paper we propose a novel, scalable, clustering based Ordinal Regression formulation, which is an instance of a Second Order Cone Program (SOCP) with one Second Order Cone (SOC) constraint. The main contribution of the paper is a fast algorith
Publikováno v:
IndraStra Global.
Classification of large datasets is a challenging task in Data Mining. In the current work, we propose a novel method that compresses the data and classifies the test data directly in its compressed form. The work forms a hybrid learning approach int
Publikováno v:
IndraStra Global.
Mining association rules from a large collection of databases is based on two main tasks. One is generation of large itemsets; and the other is finding associations between the discovered large itemsets. Existing formalism for association rules are b
Autor:
Sridhar, V, Murty, MN
Publikováno v:
IndraStra Global.
Clustering is concerned with grouping a collection of input objects. Conventional clustering algorithms cluster unlabelled objects. We argue that there are useful applications that involve clustering of labelled objects. We propose an approach for cl
Publikováno v:
IndraStra Global.
The paper presents an extension to the standard evolutionary programming (SEP) technique, which incorporates the concept of fitness based offspring generation. Each parent in the population tries to solve the problem of surviving into future generati
Publikováno v:
IndraStra Global.
Explores the applicability of simulated annealing, a probabilistic search method, for finding optimal partition of the data. A new formulation of the clustering problem is investigated. In order to obtain an optimal partition, a search is undertaken