Search results for "Robust regression"

showing 6 items of 6 documents

Reliability of Short-Term Heart Rate Variability Indexes Assessed through Photoplethysmography

2018

The gold standard method to monitor heart rate variability (HRV) comprises measuring the time series of interbeat interval durations from electrocardiographic (ECG) recordings. However, due to the widespread use, simplicity and usability of photoplethysmographic (PPG) techniques, monitoring pulse rate variability (PRV) from pulse wave recordings has become a viable alternative to standard HRV analysis. The present study investigates the accuracy of PRV, measured as a surrogate of HRV, for the quantification of descriptive indexes computed in the time domain (mean, variance), frequency domain (low-to-high frequency power ratio LF/HF, HF band central frequency) and information domain (entropy…

Supine positionEntropy0206 medical engineeringBiomedical EngineeringHealth Informatics02 engineering and technologySettore ING-INF/01 - ElettronicaRobust regressionElectrocardiography03 medical and health sciences0302 clinical medicineHeart RatePhotoplethysmogramStatisticsHumansHeart rate variabilityTime domainPhotoplethysmographyMathematicsConditional entropyReproducibility of Results020601 biomedical engineeringFrequency domainSignal ProcessingSettore ING-INF/06 - Bioingegneria Elettronica E Informatica030217 neurology & neurosurgeryInterbeat interval
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Regression diagnostics applied in kinetic data processing: Outlier recognition and robust weighting procedures

2010

An efficient protocol, based on advanced statistical diagnostics and robust fitting techniques applied to the least-squares processing of kinetic data of chemical reactions, is presented and discussed. The procedure, which is aimed at obtaining highly accurate estimation of the fitting parameters, consists of the identification of the outliers that remarkably impair the fitting by means of the so-called “leverage analysis” and some related diagnostics. This approach allows the elimination of the actually aberrant observations from the data set and/or their robust weighting to inhibit the negative effects induced on the data fitting, with consequent reduction of the bias introduced into the …

Data processingChemistryOrganic ChemistryBiochemistryRegressionRobust regressionWeightingInorganic ChemistryOutlierCurve fittingLeverage (statistics)Physical and Theoretical ChemistryRegression diagnosticAlgorithmInternational Journal of Chemical Kinetics
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A generalization of the orthogonal regression technique for life cycle inventory

2012

Life cycle assessment (LCA) is a method used to quantify the environmental impacts of a product, process, or service across its whole life cycle. One of the problems occurring when the system at hand involves processes delivering more than one valuable output is the apportionment of resource consumption and environmental burdens in the correct proportion amongst the products. The mathematical formulation of the problem is represented by the solution of an over-determined system of linear equations. The paper describes the application of an iterative algorithm for the implementation of least square regression to solve this over-determined system directly in its rectangular form. The applied …

Mathematical optimizationSettore ING-IND/11 - Fisica Tecnica AmbientaleGETLSLife cycle assessment LCA Allocatation GETILS Multi-Functionality Orthogonal Regression Total Least squaresAllocationMulti-FunctionalityExplained sum of squaresGeneralized least squaresLife Cycle AssessmentTotal Least SquaresLeast squaresRobust regressionIteratively reweighted least squaresNon-linear least squaresTotal least squaresLinear least squaresOrthogonal RegressionInformation SystemsMathematics
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Iteratively reweighted least squares in crystal structure refinements

2011

The use of robust techniques in crystal structure multipole refinements of small molecules as an alternative to the commonly adopted weighted least squares is presented and discussed. As is well known, the main disadvantage of least-squares fitting is its sensitivity to outliers. The elimination from the data set of the most aberrant reflections (due to both experimental errors and incompleteness of the model) is an effective practice that could yield satisfactory results, but it is often complicated in the presence of a great number of bad data points, whose one-by-one elimination could become unattainable. This problem can be circumvented by means of a robust least-squares regression that…

Settore GEO/06 - MineralogiaLeast trimmed squarescomputer.software_genreRegressionRobust regressionIteratively reweighted least squaresData setRobust regression outlier refinementData pointStructural BiologyOutlierSensitivity (control systems)Data miningcomputerAlgorithmMathematicsActa Crystallographica Section A Foundations of Crystallography
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Regression diagnostics applied in kinetic data processing: outlier recognition and robust weighting procedures

2010

An efficient protocol, based on advanced statistical diagnostics and robust fitting techniques applied to the least-squares processing of kinetic data of chemical reactions, is here presented and discussed. The procedure, which is aimed at obtaining highly accurate estimation of the fitting parameters, consists in the identification of the outliers that remarkably impair the fitting by means of the so called 'leverage analysis' and some related diagnostics, allowing the elimination of the actually aberrant observations from the data set and/or their robust weighting to inhibit the negative effects induced on the data fitting and to reduce the bias introduced into the parameter estimates. It…

robust regressionkineticleverage analysi
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Comparison of short-term heart rate variability indexes evaluated through electrocardiographic and continuous blood pressure monitoring

2019

Heart rate variability (HRV) analysis represents an important tool for the characterization of complex cardiovascular control. HRV indexes are usually calculated from electrocardiographic (ECG) recordings after measuring the time duration between consecutive R peaks, and this is considered the gold standard. An alternative method consists of assessing the pulse rate variability (PRV) from signals acquired through photoplethysmography, a technique also employed for the continuous noninvasive monitoring of blood pressure. In this work, we carry out a thorough analysis and comparison of short-term variability indexes computed from HRV time series obtained from the ECG and from PRV time series …

MaleSupine positionTime FactorsAdolescent0206 medical engineeringBiomedical EngineeringPhotoplethysmography (PPG)Time series analysis02 engineering and technologySettore ING-INF/01 - Elettronica030218 nuclear medicine & medical imagingRobust regressionElectrocardiography (ECG)03 medical and health sciencesElectrocardiography0302 clinical medicineHeart RatePhotoplethysmogramStatisticsHeart rate variabilityHumansTime domainTime seriesPulseMathematicsConditional entropyBlood Pressure Determination020601 biomedical engineeringComputer Science ApplicationsPulse rate variability (PRV)Frequency domainSettore ING-INF/06 - Bioingegneria Elettronica E InformaticaRegression AnalysisFemaleHeart rate variability (HRV)Continuous blood pressure (CBP)
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