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Ultrahigh Dimensional Feature Selection: Beyond The Linear Model
Ultrahigh Dimensional Feature Selection: Beyond The Linear Model

clustering large-scale data based on modified affinity propagation
clustering large-scale data based on modified affinity propagation

... process of finding the parameters is very time consuming because each change of any parameter will require re-running the algorithm. KAP [20] was developed to address AP drawback. KAP is able to generate K clusters according to what a user specifies by adding one constraint in the message passing pr ...
Efficient High Dimension Data Clustering using Constraint
Efficient High Dimension Data Clustering using Constraint

A tutorial on particle filters for online nonlinear/non
A tutorial on particle filters for online nonlinear/non

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Institutionen för datavetenskap Estimating Internet-scale Quality of Service Parameters for VoIP Markus Niemelä
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A Comparative Study of Different Density based Spatial Clustering
A Comparative Study of Different Density based Spatial Clustering

... neighborhood of each point in the database. If the Epsneighborhood of a point ‘p’ contains more than MinPts, a new cluster with ‘p’ as a core object is formed. It then iteratively gathers directly density reachable objects from this core, which may involve the merge of a few density reachable cluste ...
Artificial intelligence 1: informed search
Artificial intelligence 1: informed search

... 'decodes the string to create a parameter or set of parameters 'appropriate for that problem 'Decode string as unsigned binary integer: true=1, false ...
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Clustering

Artificial intelligence 1: informed search
Artificial intelligence 1: informed search

SoF: Soft-Cluster Matrix Factorization for Probabilistic Clustering
SoF: Soft-Cluster Matrix Factorization for Probabilistic Clustering

... nonnegative, whether there exists a nonnegative matrix W such that P = W W T . It’s then easily seen that the decision version of (3) is essentially a restricted version of the strong membership problem for the C.P. cone, which is NPhard. We conjecture that the decision version of (3) is also NP-har ...
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ACCP Research Institute F.I.T. Program: Statistical Methods
ACCP Research Institute F.I.T. Program: Statistical Methods

Efficient document clustering via online nonnegative matrix factorizations
Efficient document clustering via online nonnegative matrix factorizations

... searches for the optimal active and passive sets by exchanging a variable between the two sets. A drawback of active set methods is that typically only one variable is exchanged between active and passive sets per iteration, making the algorithm slow when the number of variables becomes large [20]. ...
Time Varying Transition Probabilities for Markov Regime Switching
Time Varying Transition Probabilities for Markov Regime Switching

Self-Tuning Clustering: An Adaptive Clustering Method for
Self-Tuning Clustering: An Adaptive Clustering Method for

Chapter 5 Preliminaries on Semiparametric Theory and Missing Data Problem
Chapter 5 Preliminaries on Semiparametric Theory and Missing Data Problem

... of any statistic in the partial likelihood equations involving missing covariates given the available information. They proved that the proposed estimator is more efficient than the based on the modified Cox partial likelihood score equations proposed by Lin and Ying (1993) for the MCAR case. When t ...
One Click Mining - Polo Club of Data Science
One Click Mining - Polo Club of Data Science

... [2005]) or by providing direct active user-involvement for individual parts of the workflow such as for the post-processing [Xin et al., 2006] or even the mining itself [Goethals et al., 2011]. However, all these approaches still expose the user to the complexity of the discovery worklow and/or requ ...
Providing k-Anonymity in Data Mining
Providing k-Anonymity in Data Mining

IJSRSET Paper Word Template in A4 Page Size
IJSRSET Paper Word Template in A4 Page Size

Īsu laika rindu un to raksturojošo parametru apstrādes sistēma
Īsu laika rindu un to raksturojošo parametru apstrādes sistēma

... There are fields where experts operate with data in the form of short time series and their descriptive parameters. Short time series describe functional changes of an object in a period of time, whereas descriptive parameters represent features of the object. For example in healthcare a patient is ...
Providing k-Anonymity in Data Mining
Providing k-Anonymity in Data Mining

Mining Periodic Patterns in Sequence Data
Mining Periodic Patterns in Sequence Data

Optimization-based Data Mining Techniques with Applications
Optimization-based Data Mining Techniques with Applications

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Expectation–maximization algorithm



In statistics, an expectation–maximization (EM) algorithm is an iterative method for finding maximum likelihood or maximum a posteriori (MAP) estimates of parameters in statistical models, where the model depends on unobserved latent variables. The EM iteration alternates between performing an expectation (E) step, which creates a function for the expectation of the log-likelihood evaluated using the current estimate for the parameters, and a maximization (M) step, which computes parameters maximizing the expected log-likelihood found on the E step. These parameter-estimates are then used to determine the distribution of the latent variables in the next E step.
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