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Impact of Outlier Removal and Normalization
Impact of Outlier Removal and Normalization

... that causes some instances to bear a stronger resemblance to one another than they do to the remaining instances." Clustering is one solution to the case of unsupervised learning, where class labeling information of the data is not available. It is a method where data is divided into groups (cluster ...
Efficient Bayesian estimates for discrimination
Efficient Bayesian estimates for discrimination

Data Mining Runtime Software and Algorithms
Data Mining Runtime Software and Algorithms

A Probabilistic L1 Method for Clustering High Dimensional Data
A Probabilistic L1 Method for Clustering High Dimensional Data

An Analysis on Density Based Clustering of Multi
An Analysis on Density Based Clustering of Multi

Parameter synthesis for probabilistic real-time systems
Parameter synthesis for probabilistic real-time systems

... − new construct constfilter (min, x1*x2, phi) − filters over parameter values, rather than states ...
Training Products of Experts by Minimizing Contrastive Divergence
Training Products of Experts by Minimizing Contrastive Divergence

... to data using EM or gradient ascent and, if the individual models di er a lot, the mixture is likely to be a better t to the true distribution of the data than a random choice among the individual models. Indeed, if suÆciently many models are included in the mixture, it is possible to approximate c ...
Learning Optimal Bayesian Networks Using A
Learning Optimal Bayesian Networks Using A

Fast Mining of Finding Frequent Patterns in Transactional Database
Fast Mining of Finding Frequent Patterns in Transactional Database

Markov logic networks | SpringerLink
Markov logic networks | SpringerLink



1. Introduction Data mining (DM) is an interdisciplinary field in
1. Introduction Data mining (DM) is an interdisciplinary field in

- VTUPlanet
- VTUPlanet

... distribution functions. The method is built on the following ideas: (1) the influence of each data point can be formally modelled using a mathematical function, called an influence function, which describes the impact of a data point within its neighbourhood; (2) the overall density of the data spac ...
Confidence Intervals for the Abbott`s Formula
Confidence Intervals for the Abbott`s Formula

Trie Based Improved Apriori Algorithm to Generate Association Rules
Trie Based Improved Apriori Algorithm to Generate Association Rules

KACU: K-means with Hardware Centroid
KACU: K-means with Hardware Centroid

... objects with Gaussian distribution and be grouped into five clusters. The following experiments are conducted to compare the clock consumption between SPA with software centroid updating and KACU, both in continuous K-means algorithm. Note that the number of iterations depends on the method used for ...
4 - Department of Knowledge Technologies
4 - Department of Knowledge Technologies

Approximate Planning in POMDPs with Macro
Approximate Planning in POMDPs with Macro

... grid point g multiple times so that it can approximate the probability distribution over the resulting belief-states b00 . Finally, it can update the estimated value of the grid point g and execute the macro-action chosen from the true belief state b. The process repeats from the next true belief st ...
Meta Mining Architecture for Supervised Learning
Meta Mining Architecture for Supervised Learning

Inference of a Phylogenetic Tree: Hierarchical Clustering
Inference of a Phylogenetic Tree: Hierarchical Clustering

Spatio-Temporal Outlier Detection in Precipitation Data
Spatio-Temporal Outlier Detection in Precipitation Data

Scalable Methods for Estimating Document Frequencies
Scalable Methods for Estimating Document Frequencies

... Database of 2000 newsgroup articles Evaluated on a lexicon of 100 words Vary sample size s and number of queries q ...
Histogram-based Outlier Score (HBOS): A fast Unsupervised
Histogram-based Outlier Score (HBOS): A fast Unsupervised

Title Distributed Clustering Algorithm for Spatial Data Mining Author(s)
Title Distributed Clustering Algorithm for Spatial Data Mining Author(s)

Title Distributed Clustering Algorithm for Spatial Data Mining Author(s)
Title Distributed Clustering Algorithm for Spatial Data Mining Author(s)

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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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