Search results for "Bayesian probability"

showing 10 items of 217 documents

Ensemble feature selection with the simple Bayesian classification

2003

Abstract A popular method for creating an accurate classifier from a set of training data is to build several classifiers, and then to combine their predictions. The ensembles of simple Bayesian classifiers have traditionally not been a focus of research. One way to generate an ensemble of accurate and diverse simple Bayesian classifiers is to use different feature subsets generated with the random subspace method. In this case, the ensemble consists of multiple classifiers constructed by randomly selecting feature subsets, that is, classifiers constructed in randomly chosen subspaces. In this paper, we present an algorithm for building ensembles of simple Bayesian classifiers in random sub…

business.industryBayesian probabilityFeature selectionPattern recognitionMachine learningcomputer.software_genreLinear subspaceRandom subspace methodNaive Bayes classifierBayes' theoremComputingMethodologies_PATTERNRECOGNITIONHardware and ArchitectureSignal ProcessingArtificial intelligencebusinesscomputerClassifier (UML)SoftwareCascading classifiersInformation SystemsMathematicsInformation Fusion
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A Survey of Bayesian Techniques in Computer Vision

2010

The Bayesian approach to classification is intended to solve questions concerning how to assign a class to an observed pattern using probability estimations. Red, green and blue (RGB) or hue, saturation and lightness (HSL) values of pixels in digital colour images can be considered as feature vectors to be classified, thus leading to Bayesian colour image segmentation. Bayesian classifiers are also used to sort objects but, in this case, reduction of the dimensionality of the feature vector is often required prior to the analysis. This chapter shows some applications of Bayesian learning techniques in computer vision in the agriculture and agri-food sectors. Inspection and classification of…

business.industryComputer scienceBayesian probabilityComputer visionArtificial intelligencebusiness
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Text Classification Using Novel “Anti-Bayesian” Techniques

2015

This paper presents a non-traditional “Anti-Bayesian” solution for the traditional Text Classification (TC) problem. Historically, all the recorded TC schemes work using the fundamental paradigm that once the statistical features are inferred from the syntactic/semantic indicators, the classifiers themselves are the well-established statistical ones. In this paper, we shall demonstrate that by virtue of the skewed distributions of the features, one could advantageously work with information latent in certain “non-central” quantiles (i.e., those distant from the mean) of the distributions. We, indeed, demonstrate that such classifiers exist and are attainable, and show that the design and im…

business.industryComputer scienceBayesian probabilityPattern recognitioncomputer.software_genreComputingMethodologies_PATTERNRECOGNITIONData miningArtificial intelligencebusinesscomputerClassifier (UML)Linear numberVector spaceQuantile
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Predictive and Contextual Feature Separation for Bayesian Metanetworks

2007

Bayesian Networks are proven to be a comprehensive model to describe causal relationships among domain attributes with probabilistic measure of conditional dependency. However, depending on a context, many attributes of the model might not be relevant. If a Bayesian Network has been learned across multiple contexts then all uncovered conditional dependencies are averaged over all contexts and cannot guarantee high predictive accuracy when applied to a concrete case. We are considering a context as a set of contextual attributes, which are not directly effect probability distribution of the target attributes, but they effect on "relevance" of the predictive attributes towards target attribut…

business.industryComputer scienceBayesian probabilityProbabilistic logicBayesian networkContext (language use)computer.software_genreMachine learningFeature (machine learning)Probability distributionRelevance (information retrieval)Artificial intelligenceData miningbusinessSet (psychology)computer
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An adaptive probabilistic graphical model for representing skills in PbD settings

2010

business.industryComputer scienceProgramming by demonstrationBayesian probabilityProbabilistic logicMachine learningcomputer.software_genreUnsupervised learningArtificial intelligenceGraphical modelMachine Learning Imitation Learning Incremental Learning Dynamic Bayesian Network Growing Hierarchical Dynamic Bayesian NetworkAutomatic programmingbusinessHidden Markov modelcomputerDynamic Bayesian network
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Natural induction: An objective bayesian approach

2009

The statistical analysis of a sample taken from a finite population is a classic problem for which no generally accepted objective Bayesian results seem to exist. Bayesian solutions to this problem may be very sensitive to the choice of the prior, and there is no consensus as to the appropriate prior to use.

education.field_of_studyAlgebra and Number Theorybusiness.industryApplied MathematicsBayesian probabilityPopulationBayes factorSample (statistics)Machine learningcomputer.software_genreBinomial distributionBayesian statisticsComputational MathematicsEconometricsBayesian hierarchical modelingGeometry and TopologyArtificial intelligencebusinesseducationcomputerAnalysisJeffreys priorMathematicsRevista de la Real Academia de Ciencias Exactas, Fisicas y Naturales. Serie A. Matematicas
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Bayesian Hierarchical Models for Random Routes in Finite Populations

1996

In many practical situations involving sampling from finite populations, it is not possible (or it is prohibitely expensive) to access, or to even produce, a listing of all of the units in the population. In these situations, inferences can not be based on random samples from the population. Random routes are widely used procedures to collect data in absence of well defined sampling frames, and they usually have either been improperly analyzed as random samples, or entirely ignored as useless. We present here a Bayesian analysis of random routes that incorporates the information provided but carefully takes into account the non- randomness in the selection of the units.

education.field_of_studyComputer sciencePosterior probabilityPopulationBayesian probabilitySampling (statistics)Conditional probability distributioncomputer.software_genresymbols.namesakesymbolsData miningeducationcomputerSelection (genetic algorithm)RandomnessGibbs sampling
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Inferring Learning Strategies from Cultural Frequency Data

2015

Social learning has been identified as one of the fundamentals of culture and therefore the understanding of why and how individuals use social information presents one of the big questions in cultural evolution. To date much of the theoretical work on social learning has been done in isolation of data. Evolutionary models often provide important insight into which social learning strategies are expected to have evolved but cannot tell us which strategies human populations actually use. In this chapter we explore how much information about the underlying learning strategies can be extracted by analysing the temporal occurrence or usage patterns of different cultural variants in a population…

education.field_of_studyComputer sciencebusiness.industryPopulationBayesian probabilityInferenceSocial learningMachine learningcomputer.software_genreData scienceCultural analysisArtificial intelligenceApproximate Bayesian computationeducationbusinessSociocultural evolutioncomputerGenerative grammar
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Application of a Bayesian Spatiotemporal Surveillance Method to NYC Syndromic Data

2014

Incorporating prior knowledge (e.g., the spatial distribution of zip codes and background population effects) into a model using Bayesian methods could potentially improve outbreak detection. We adapted a previously described Bayesian model-based spatiotemporal surveillance technique to daily respiratory syndrome counts in NYC Emergency Department data in 2009, the year of the H1N1 influenza pandemic. Citywide, 56 alarms were produced across 15 zip codes, all during days of elevated respiratory visits. Future work includes evaluating our choice of baseline length, considering other alarm thresholds, and conducting a formal evaluation of the method across five syndromes in NYC.

education.field_of_studybusiness.industryBayesian probabilityH1N1 influenzaPopulationEmergency departmentISDS 2013 Conference Abstractscomputer.software_genreBayesian inferenceZip codeFormal evaluationspatiotemporal dataPandemicoutbreak detectionGeneral Earth and Planetary SciencesMedicinesyndromic surveillanceData miningbusinesseducationcomputerCartographyBayesian modelsGeneral Environmental ScienceOnline Journal of Public Health Informatics
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Bayesian reanalysis of a quantitative trait locus accounting for multiple environments by scaling in broilers1

2006

A Bayesian method was developed to handle QTL analyses of multiple experimental data of outbred populations with heterogeneity of variance between sexes for all random effects. The method employed a scaled reduced animal model with random polygenic and QTL allelic effects. A parsimonious model specification was applied by choosing assumptions regarding the covariance structure to limit the number of parameters to estimate. Markov chain Monte Carlo algorithms were applied to obtain marginal posterior densities. Simulation demonstrated that joint analysis of multiple environments is more powerful than separate single trait analyses of each environment. Measurements on broiler BW obtained from…

education.field_of_studybusiness.industryBayesian probabilityPopulationfood and beveragesAccountingMarkov chain Monte CarloGeneral MedicineCovarianceBiologyQuantitative trait locusRandom effects modelsymbols.namesakeBayes' theoremStatisticsGeneticsTraitsymbolsAnimal Science and ZoologybusinesseducationFood ScienceJournal of Animal Science
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