Multithreshold Entropy Linear Classifier (MELC) is a density based model which searches for a linear projection maximizing the Cauchy-Schwarz Divergence of dataset kernel density estimation. Despite its good empirical results, one of its drawbacks is the optimization speed. In this paper we analyze how one can speed it up through solving an approximate problem. We analyze two methods, both similar to the approximate solutions of the Kernel Density Estimation querying and provide adaptive schemes for selecting a crucial parameters based on user-specified acceptable error. Furthermore we show how one can exploit well known conjugate gradients and L-BFGS optimizers despite the fact that the original optimization problem should be solved on the...
Huge data sets containing millions of training examples with a large number of attributes (tall fat ...
Abstract. Multivariate density estimation is an important problem that is frequently encountered in ...
We analyze the theoretical properties of the recently proposed objective function for efficient onli...
Multithreshold Entropy Linear Classifier (MELC) is a density based model which searches for a linear...
Linear classifiers separate the data with a hyperplane. In this paper we focus on the novel method o...
Following the basic principles of Information-Theoretic Learning (ITL), in this paper we propose Min...
Abstract—Recent publications have proposed various informa-tion-theoretic learning (ITL) criteria ba...
A method is proposed for creating a smooth kernel density estimate from a sample of binned data. Sim...
We focus on solving the problem of learning an optimal smoothing kernel for the unsupervised learnin...
Several unsupervised learning algorithms, neural networks, and support vector machine based classifi...
Abstract. Some linkages between kernel and penalty methods of density estimation are explored. It is...
Tech ReportThe nonparametric density estimation method proposed in this paper is computationally fas...
Abstract. A new classification algorithm based on combination of ker-nel density estimators is intro...
Many recent (including adaptive) MCMC methods are associated in practice to unknown rates of converg...
Maximum entropy models are considered by many to be one of the most promising avenues of language mo...
Huge data sets containing millions of training examples with a large number of attributes (tall fat ...
Abstract. Multivariate density estimation is an important problem that is frequently encountered in ...
We analyze the theoretical properties of the recently proposed objective function for efficient onli...
Multithreshold Entropy Linear Classifier (MELC) is a density based model which searches for a linear...
Linear classifiers separate the data with a hyperplane. In this paper we focus on the novel method o...
Following the basic principles of Information-Theoretic Learning (ITL), in this paper we propose Min...
Abstract—Recent publications have proposed various informa-tion-theoretic learning (ITL) criteria ba...
A method is proposed for creating a smooth kernel density estimate from a sample of binned data. Sim...
We focus on solving the problem of learning an optimal smoothing kernel for the unsupervised learnin...
Several unsupervised learning algorithms, neural networks, and support vector machine based classifi...
Abstract. Some linkages between kernel and penalty methods of density estimation are explored. It is...
Tech ReportThe nonparametric density estimation method proposed in this paper is computationally fas...
Abstract. A new classification algorithm based on combination of ker-nel density estimators is intro...
Many recent (including adaptive) MCMC methods are associated in practice to unknown rates of converg...
Maximum entropy models are considered by many to be one of the most promising avenues of language mo...
Huge data sets containing millions of training examples with a large number of attributes (tall fat ...
Abstract. Multivariate density estimation is an important problem that is frequently encountered in ...
We analyze the theoretical properties of the recently proposed objective function for efficient onli...