Search results for "Principal component"

showing 10 items of 514 documents

The Global Side of the Investments-Savings Puzzle

2008

In this paper we re-examine the long standing and puzzling correlation between national savings and investment in industrial countries. We apply an econometric methodology that allows us to separate idiosyncratic correlation at the country level from correlation at the global level. In a major break with the existing literature, we find no evidence of a long run relationship in the idiosyncratic components of savings and investment. We also find that the global components in savings and investments commove, indicating that they react to shocks of a global nature.

Savings Investment Feldstein-Horioka Puzzle Panel Nonstationarity Principal Components.jel:C31jel:F32jel:C33jel:F41
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A new methodology for Functional Principal Component Analysis from scarce data. Application to stroke rehabilitation.

2015

Functional Principal Component Analysis (FPCA) is an increasingly used methodology for analysis of biomedical data. This methodology aims to obtain Functional Principal Components (FPCs) from Functional Data (time dependent functions). However, in biomedical data, the most common scenario of this analysis is from discrete time values. Standard procedures for FPCA require obtaining the functional data from these discrete values before extracting the FPCs. The problem appears when there are missing values in a non-negligible sample of subjects, especially at the beginning or the end of the study, because this approach can compromise the analysis due to the need to extrapolate or dismiss subje…

Scarce dataFunctional principal component analysisPrincipal Component AnalysisComputer scienceProcess (engineering)Stroke RehabilitationSample (statistics)Missing datacomputer.software_genreStrokePrincipal component analysisHumansData miningcomputerAnnual International Conference of the IEEE Engineering in Medicine and Biology Society. IEEE Engineering in Medicine and Biology Society. Annual International Conference
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Using SOM and PCA for analysing and interpreting data from a P-removal SBR

2008

This paper focuses on the application of Kohonen self-organizing maps (SOM) and principal component analysis (PCA) to thoroughly analyse and interpret multidimensional data from a biological process. The process is aimed at enhanced biological phosphorus removal (EBPR) from wastewater. In this work, SOM and PCA are firstly applied to the data set in order to identify and analyse the relationships among the variables in the process. Afterwards, K-means algorithm is used to find out how the observations can be grouped, on the basis of their similarity, in different classes. Finally, the information obtained using these intelligent tools is used for process interpretation and diagnosis. In the…

Self-organizing mapBasis (linear algebra)Process (engineering)Computer sciencecomputer.software_genreInterpretation (model theory)Data setSimilarity (network science)Artificial IntelligenceControl and Systems EngineeringPrincipal component analysisData miningElectrical and Electronic EngineeringCluster analysiscomputerEngineering Applications of Artificial Intelligence
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A voltammetric e-tongue tool for the emulation of the sensorial analysis and the discrimination of vegetal milks

2018

[EN] The relevance of plant-based food alternatives to dairy products, such as vegetable milks, has been growing in recent decades, and the development of systems capable of classifying and predicting the sensorial profile of such products is interesting. In this context, a methodology to perform the sensorial analysis of vegetable milks (oat, soya, rice, almond and tiger nut), based on 12 parameters, was validated. An electronic tongue based on the combination of eight metals with pulse voltammetry was also tested. The current intensity profiles are characteristic for each non-dairy milk type. Data were processed with qualitative (PCA, dendrogram) and quantitative (PLS) tools. The PCA stat…

Sensorial analysisTECNOLOGIA DE ALIMENTOSElectronic tonguePulse voltammetryContext (language use)02 engineering and technologyRaw material01 natural sciencesTECNOLOGIA ELECTRONICAQUIMICA ORGANICAMaterials ChemistryStatistical analysisFood scienceElectrical and Electronic EngineeringInstrumentationMathematicsHomogeneity (statistics)010401 analytical chemistryDendrogramElectronic tongueQUIMICA INORGANICAMetals and Alloys021001 nanoscience & nanotechnologyCondensed Matter Physics0104 chemical sciencesSurfaces Coatings and FilmsElectronic Optical and Magnetic MaterialsVegetable milkPrincipal component analysisTiger nut0210 nano-technology
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Spectral properties of correlation matrices for some hierarchically nested factor models

2007

We show that spectral methods, such as Principal Component Analysis and Random Matrix Theory, are unable to reveal the hierarchical (or nested) structure of a set of mutivariate data. We consider the method introduced in M. Tumminello et al., EPL 78, 30006 (2007) to associate a hierarchical factor model with a set of data by making use of clustering algorithms. This is done by proving the existence of a bijective correspondence between a hierarchical tree and a factor model.

Set (abstract data type)Discrete mathematicsTree (data structure)Multiple correspondence analysisPrincipal component analysisBijectionCluster analysisRandom matrixFactor analysisMathematics
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<strong>New tool useful for drug discovery validated through benchmark datasets</strong>

2018

Atomic Weighted Vectors (AWVs) are vectors that contain the codified information of molecular structures, which can apply to a set of Aggregation Operators (AOs) to calculate total and local molecular descriptors (MDs). This article presents an exploratory study of a new tool useful for drug discovery using different datasets, such as DRAGON and Sutherland’s datasets, as well as their comparison with other well-known approaches. In order to evaluate the performance of the tool, several statistics and QSAR/QSPR experiments were performed. Variability analyses are used to quantify the information content of the AWVs obtained from the tool, by the way of an information theory-based algorithm. …

Set (abstract data type)Quantitative structure–activity relationshipOrthogonalityComputer scienceMolecular descriptorPrincipal component analysisGenetic algorithmBenchmark (computing)Data miningInformation theorycomputer.software_genrecomputerProceedings of MOL2NET 2018, International Conference on Multidisciplinary Sciences, 4th edition
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A Comparative Study and an Evaluation Framework of Multi/Hyperspectral Image Compression

2009

In this paper, we investigate different approaches for multi/hyperspectral image compression. In particular, we compare the classic multi-2D compression approach and two different implementations of 3D approach (full 3D and hybrid) with regards to variations in spatial and spectral dimensions. All approaches are combined with a weighted Principal Component Analysis (PCA) decorrelation stage to optimize performance. For consistent evaluation, we propose a larger comparison framework than the conventionally used PSNR, including eight metrics divided into three families. The results show the weaknesses and strengths of each approach.

Set partitioning in hierarchical treesWaveletPixelbusiness.industryPrincipal component analysisMultispectral imageWavelet transformHyperspectral imagingPattern recognitionArtificial intelligencebusinessDecorrelationMathematics2009 Fifth International Conference on Signal Image Technology and Internet Based Systems
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Survival, morphological variability, and performance of Opuntia ficus-indica in a semi-arid region of India

2022

Cactus pear (Opuntia ficus-indica (L.) Mill.) can survive extreme environmental condition and is known for its fodder potential in many parts of the world. The morphological diversity of 15 introduced accessions was evaluated at Jhansi, Uttar Pradesh, India. The plants were established in 2013. Survival and nutrient status were evaluated after two years. Above-ground plant height, biomass, primary and secondary cladode numbers, primary and secondary cladode lengths and below-ground root length, weight, and surface area measurements were done six years after cladode planting. Yellow San Cono, White Roccapalumba, and Seedless Roccapalumba survived 100%. The discriminant traits according to pr…

Settore AGR/03 - Arboricoltura Generale E Coltivazioni ArboreeSoil ScienceCactus pear cladode fodder principal component analysis root architectureAgronomy and Crop Science
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Genetic structure in the Mediterranean seagrass Posidonia oceanica: disentangling past vicariance events from contemporary patterns of gene flow

2010

The Mediterranean Sea is a two-basin system, with the boundary zone restricted to the Strait of Sicily and the narrow Strait of Messina. Two main population groups are recognized in the Mediterranean endemic seagrass Posidonia oceanica, corresponding to the Western and the Eastern basins. To address the nature of the East-West cleavage in P. oceanica, the main aims of this study were: (i) to define the genetic structure within the potential contact zone (i.e. the Strait of Sicily) and clarify the extent of gene flow between the two population groups, and (ii) to investigate the role of present water circulation patterns vs. past evolutionary events on the observed genetic pattern. To achiev…

Settore BIO/07 - EcologiaGene Flow0106 biological sciencesMediterranean climatePosidoniaDNA PlantGenotypePopulationVicarianceMediterranean010603 evolutionary biology01 natural sciencesEvolution MolecularMediterranean seaMediterranean SeaWater MovementsGeneticsVicarianceComputer Simulation14. Life underwaterdispersal simulation Mediterranean Posidonia oceanica simple sequence repeat transition zone vicarianceeducationEcology Evolution Behavior and SystematicsPrincipal Component Analysiseducation.field_of_studyAlismatalesPolymorphism GeneticGeographybiologyEcology010604 marine biology & hydrobiologyTransition zoneDispersal simulationPosidonia oceanicaSequence Analysis DNAbiology.organism_classificationSettore BIO/18 - GeneticaGenetics PopulationPosidonia oceanicaGenetic structureBiological dispersalSimple sequence repeatMicrosatellite Repeats
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Spatial noise-aware temperature retrieval from infrared sounder data

2020

In this paper we present a combined strategy for the retrieval of atmospheric profiles from infrared sounders. The approach considers the spatial information and a noise-dependent dimensionality reduction approach. The extracted features are fed into a canonical linear regression. We compare Principal Component Analysis (PCA) and Minimum Noise Fraction (MNF) for dimensionality reduction, and study the compactness and information content of the extracted features. Assessment of the results is done on a big dataset covering many spatial and temporal situations. PCA is widely used for these purposes but our analysis shows that one can gain significant improvements of the error rates when using…

Signal Processing (eess.SP)FOS: Computer and information sciencesComputer Science - Machine Learningbusiness.industryComputer scienceDimensionality reductionFeature extraction0211 other engineering and technologiesWord error ratePattern recognitionRegression analysis02 engineering and technologyMachine Learning (cs.LG)Principal component analysisLinear regression0202 electrical engineering electronic engineering information engineeringFOS: Electrical engineering electronic engineering information engineering020201 artificial intelligence & image processingArtificial intelligenceElectrical Engineering and Systems Science - Signal ProcessingbusinessSpatial analysis021101 geological & geomatics engineering
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