Search results for "STATISTICS"

showing 10 items of 7671 documents

Estimation and visualization of confusability matrices from adaptive measurement data

2010

Abstract We present a simple but effective method based on Luce’s choice axiom [Luce, R.D. (1959). Individual choice behavior: A theoretical analysis. New York: John Wiley & Sons] for consistent estimation of the pairwise confusabilities of items in a multiple-choice recognition task with arbitrarily chosen choice-sets. The method combines the exact (non-asymptotic) Bayesian way of assessing uncertainty with the unbiasedness emphasized in the classical frequentist approach. We apply the method to data collected using an adaptive computer game designed for prevention of reading disability. A player’s estimated confusability of phonemes (or more accurately, phoneme–grapheme connections) and l…

Computer sciencebusiness.industryApplied MathematicsBayesian probabilityConfusion matrixMachine learningcomputer.software_genreComputer gameVisualizationBayesian statisticsFrequentist inferencePairwise comparisonArtificial intelligencebusinesscomputerAlgorithmGeneral PsychologyAxiomJournal of Mathematical Psychology
researchProduct

Applications and Limitations of Robust Bayesian Bounds and Type II MLE

1994

Three applications of robust Bayesian analysis and three examples of its limitations are given. The applications that are reviewed are the development of an automatic Ockham’s Razor, outlier detection, and analysis of weighted distributions. Limitations of robust Bayesian bounds are highlighted through examples that include analysis of a paranormal experiment and a hierarchical model. This last example shows a disturbing difference between actual hierarchical Bayesian analysis and robust Bayesian bounds, a difference which also arises if, instead, a Type II MLE or empirical Bayes analysis is performed.

Computer sciencebusiness.industryBayesian probabilityMachine learningcomputer.software_genreHierarchical database modelStatistics::ComputationBayesian robustnessRobust Bayesian analysisPrior probabilityAnomaly detectionArtificial intelligenceBayes analysisbusinesscomputer
researchProduct

Interpretable machine learning models for single-cell ChIP-seq imputation

2019

AbstractMotivationSingle-cell ChIP-seq (scChIP-seq) analysis is challenging due to data sparsity. High degree of data sparsity in biological high-throughput single-cell data is generally handled with imputation methods that complete the data, but specific methods for scChIP-seq are lacking. We present SIMPA, a scChIP-seq data imputation method leveraging predictive information within bulk data from ENCODE to impute missing protein-DNA interacting regions of target histone marks or transcription factors.ResultsImputations using machine learning models trained for each single cell, each target, and each genomic region accurately preserve cell type clustering and improve pathway-related gene i…

Computer sciencebusiness.industryCell chipPython (programming language)Machine learningcomputer.software_genreENCODEIdentification (information)Simulated dataFeature (machine learning)Imputation (statistics)Artificial intelligenceCluster analysisbusinesscomputercomputer.programming_language
researchProduct

Localization and Activity Classification of Unmanned Aerial Vehicle Using mmWave FMCW Radars

2021

In this article, we present a novel localization and activity classification method for aerial vehicle using mmWave frequency modulated continuous wave (FMCW) Radar. The localization and activity classification for aerial vehicle enables the utilization of mmWave Radars in security surveillance and privacy monitoring applications. In the proposed method, Radar’s antennas are oriented vertically to measure the elevation angle of arrival of the aerial vehicle from ground station. The height of the aerial vehicle and horizontal distance of the aerial vehicle from Radar station on ground are estimated using the measured radial range and the elevation angle of arrival. The aerial vehicle’s activ…

Computer sciencebusiness.industryComputingMethodologies_IMAGEPROCESSINGANDCOMPUTERVISIONComputerApplications_COMPUTERSINOTHERSYSTEMSConvolutional neural networklaw.inventionSupport vector machinelawActivity classificationChirpRange (statistics)Computer visionGradient boostingArtificial intelligenceElectrical and Electronic EngineeringRadarbusinessInstrumentationEdge computingIEEE Sensors Journal
researchProduct

Comparison of Statistical Methods for the Detection of Contrast Material in Echocardiographic Image Sequences

1987

Ultrasonic imaging of the heart is a diagnostic tool which is increasingly used in cardiology. In addition to the representation of important anatomical information two dimensional images provided by mechanical or electronically steered sector scanners can be used for the extraction of functional parameters of the heart (as e.g. enddiastolic volume or ejection fraction). A poor definition of the endocardial border especially resulting from the noisy appearance of the images and from qualitatively restricted echocardiograms leads to uncertainties in the quantitative analysis and therefore requires refined methods for the determination of functional parameters. Our investigations which are ba…

Computer sciencebusiness.industryContrast (statistics)Ultrasonic sensorComputer visionPattern recognitionArtificial intelligenceRepresentation (mathematics)Endocardial borderbusinessEchocardiographic imageUltrasonic imaging
researchProduct

Statistics-driven Development of OBD Systems: An Overview

2006

Automotive on-board diagnostic (OBD) systems are designed to keep critical components under control during vehicle functioning, and to alert the driver in case of severe malfunctions. OBD systems aimed at reducing polluting emissions are mandatory on new motor vehicles. Some research projects conducted in cooperation between universities and the automotive industry have been quite successful in terms of knowledge advancement and industrial gain. An updated overview of the adopted methodologies and results obtained are given in this article. Such results can be valuable for both theorists and practitioners, since they witness the use of statistics as a powerful catalyst of technical progress…

Computer sciencebusiness.industryControl (management)Automotive industrystatistical monitoringManagement Science and Operations ResearchWitnessrobust parameter designdegradation modelfault detectionTechnical progressStatistical monitoringOn-board diagnosticsStatisticshypothesis testingapplications in engineering and industryon-board diagnosticpolluting emissionsSafety Risk Reliability and Qualitybusiness
researchProduct

Feature selection using support vector machines and bootstrap methods for ventricular fibrillation detection

2012

Early detection of ventricular fibrillation (VF) is crucial for the success of the defibrillation therapy in automatic devices. A high number of detectors have been proposed based on temporal, spectral, and time-frequency parameters extracted from the surface electrocardiogram (ECG), showing always a limited performance. The combination ECG parameters on different domain (time, frequency, and time-frequency) using machine learning algorithms has been used to improve detection efficiency. However, the potential utilization of a wide number of parameters benefiting machine learning schemes has raised the need of efficient feature selection (FS) procedures. In this study, we propose a novel FS…

Computer sciencebusiness.industryDetectorGeneral EngineeringNonparametric statisticsFeature selectionPattern recognitionComputer Science ApplicationsDomain (software engineering)Support vector machineComputingMethodologies_PATTERNRECOGNITIONArtificial IntelligenceFeature (computer vision)Benchmark (computing)Artificial intelligencebusinessStatisticExpert Systems with Applications
researchProduct

Reduction of the number of spectral bands in Landsat images: a comparison of linear and nonlinear methods

2006

We describe some applications of linear and nonlinear pro- jection methods in order to reduce the number of spectral bands in Land- sat multispectral images. The nonlinear method is curvilinear component analysis CCA, and we propose an adapted optimization of it for image processing, based on the use of principal-component analysis PCA, a linear method. The principle of CCA consists in reproducing the topol- ogy of the original space projection points in a reduced subspace, keep- ing the maximum of information. Our conclusions are: CCA is an im- provement for dimension reduction of multispectral images; CCA is really a nonlinear extension of PCA; CCA optimization through PCA called CCAinitP…

Computer sciencebusiness.industryDimensionality reductionQuantization (signal processing)Multispectral imageGeneral EngineeringImage processingPattern recognitionImage segmentationSpectral bandsNonlinear Sciences::Cellular Automata and Lattice GasesAtomic and Molecular Physics and OpticsStatistics::Machine LearningComputer Science::Computer Vision and Pattern RecognitionPrincipal component analysisComputer visionArtificial intelligenceProjection (set theory)businessSubspace topologyOptical Engineering
researchProduct

Maximizing reading: pattern analysis to describe points of gaze

2006

As people read texts, their points of gaze can be described either as a sequence or as a pattern of dots. If reading fixations are visualized as a pattern and their duration is graphically attributed to the 3 rd dimension, image processing techniques can be employed to describe individual reading styles. Two reader groups of text editors and of University students were matching according to parametric tests. Yet they appeared to have marked inter-subject variability of fixation distribution when individual cases were considered. To illustrate this, we applied a simple "Coulomb law" - like model that takes both fixation duration and spacing into account. Further the image entropy filter was …

Computer sciencebusiness.industryEye movementEntropy (information theory)Computer visionImage processingArtificial intelligenceFixation (psychology)businessGazeParametric statisticsSPIE Proceedings
researchProduct

Statistical classification and proportion estimation - an application to a macroinvertebrate image database

2010

We apply and compare a random Bayes forest classifier and three traditional classification methods to a dataset of complex benthic macroinvertebrate images of known taxonomical identity. Since in biomonitoring changes in benthic macroinvertebrate taxa proportions correspond to changes in water quality, their correct estimation is pivotal. As classification errors are passed on to the allocated proportions, we explore a correction method known as a confusion matrix correction. Classification methods were compared using the misclassification error and the χ2 distance measures of the true proportions to the allocated and to the corrected proportions. Using low misclassification error and small…

Computer sciencebusiness.industryFeature extractionDecision treeConfusion matrixPattern recognitionBayes classifierDistance measuresStatistical classificationBayes' theoremStatisticsBayes error rateArtificial intelligencebusiness2010 IEEE International Workshop on Machine Learning for Signal Processing
researchProduct