Big Chemical Encyclopedia

Chemical substances, components, reactions, process design ...

Articles Figures Tables About

Multivariant analysis

J. C. Gower. Some distance properties of latent root and vector methods used in multivariate analysis. Biometrika, 53 325, 1966. [Pg.97]

Correlations between structure and mass spectra were established on the basis of multivariate analysis of the spectra, database searching, or the development of knowledge-based systems, some including explicit management of chemical reactions. [Pg.537]

Chatfield C and A J CoHns 1980. Introduction to Multivariate Analysis. London, Chapman Hall. Desiraju G R 1997. Crystal Gazing Structure Prediction and Polymorphism. Sdence 278 404-405. Everitt B.S. 1993 Cluster Analysis. Chichester, John Wiley Sons. [Pg.521]

I J, J C Cole, J P M Lommerse, R S Rowland, R Taylor and M L Verdonk 1997. Isostar A Libraij )f Information about Nonbonded Interactions. Journal of Computer-Aided Molecular Design 11 525-531. g G, W C Guida and W C Still 1989. An Internal Coordinate Monte Carlo Method for Searching lonformational Space. Journal of the American Chemical Scociety 111 4379-4386. leld C and A J Collins 1980. Introduction to Multivariate Analysis. London, Chapman Hall, ig C-W, R M Cooke, A E I Proudfoot and T N C Wells 1995. The Three-dimensional Structure of 1 ANTES. Biochemistry 34 9307-9314. [Pg.522]

Jurs P C1990. Chemometrics and Multivariate Analysis in Analytical Chemistry. In Lipkowitz K B and D B Boyd (Editors) Reviews in Computational Chemistry Volume 1. New York, VCH Publishers, pp. 169-212. [Pg.735]

In multivariate least squares analysis, the dependent variable is a function of two or more independent variables. Because matrices are so conveniently handled by computer and because the mathematical formalism is simpler, multivariate analysis will be developed as a topic in matrix algebra rather than conventional algebra. [Pg.80]

For Multivariate Analysis, see McCuen, Reference 23, or other statistical texts. [Pg.102]

It should be noted that in this example the performance of only one variable, the three analysts, is investigated and thus this technique is called a one-way ANOVA. If two variables, e.g. the three analysts with four different titration methods, were to be studied, this would require the use of a two-way ANOVA. Details of suitable texts that provide a solution for this type of problem and methods for multivariate analysis are to be found in the Bibliography, page 156. [Pg.149]

Lorius et al. (1990) performed a simple multivariate analysis in which they correlate the temperature changes of the past 160 kyr (as recorded in the Vostok SD record) with changes in five forcings atmospheric CO2 plus CH4, ice volume, aerosol loading (dust and sepa-... [Pg.493]

J> < 0.01) and also more cost-effective, mainly because of the higher number of hospital admissions in the TCA group. This study had limitations in that patients prescribed TCAs were not randomly selected, a quarter of the patients in the TCA group failed to receive an effective dose, and objective measurements of outcome were not employed. Multivariate analysis suggested that despite the methodological limitations of the study, the differences in cost were due to the treatment received, and not to differences in patient characteristics. This study provides the first, albeit tentative, evidence of superior cost-effectiveness for SSRIs over TCAs in the UK. [Pg.49]

Selective serotonin reuptake inhibitor antidepressant selection and anxiolytic and sedative hypnotic prescribing a multivariate analysis./ Clin Outcomes Manage 4, 16—22. [Pg.53]

Hylan TR, Crown WH, Meneades L, et al (1998). SSRI and TCA antidepressant selection and health care costs a multivariate analysis. /... [Pg.53]

Adams, R.P. 1986. Geographic yariationm Juniperus silicicola and J. virginiana of the southeastern United States multivariate analysis of morphology and terpenoids. Taxon 35 61-75. [Pg.301]

To detect adulteration of wine. Bums et al. (2002) found that the ratios of acetylated to p-coumaroylated conjugates of nine characteristic anthocyanins served as useful parameters to determine grape cultivars for a type of wine. Our laboratory utilized mid-infrared spectroscopy combined with multivariate analysis to provide spectral signature profiles that allowed the chemically based classification of antho-cyanin-containing fruits juices and produced distinctive and reproducible chemical fingerprints, making it possible to discriminate different juices. " This new application of ATR-FTIR to detect adulteration in anthocyanin-containing juices and foods may be an effective and efficient method for manufacturers to assure product quality and authenticity. [Pg.497]

A multivariate analysis (Table XXV) shows the increased blood-lead level caused by the RSR smelter contribution and the traffic contribution to be 5.5 and 1.0, respectively. ... [Pg.65]

Mannhold, R., Crudani, G., Dross, K., Rekker, R. F. Multivariate analysis of experimental and calculative descriptors for molecular lipophilicity. J. Comput.-Aided Mol. Design 1998, 12, 573-581. [Pg.377]

One of the air of multivariate analysis is to reveal patterns in the data, whether they are in the form of a measurement table or in that of a contingency table. In this chapter we will refer to both of them by the more algebraic term matrix . In what follows we describe the basic properties of matrices and of operations that can be applied to them. In many cases we will not provide proofs of the theorems that underlie these properties, as these proofs can be found in textbooks on matrix algebra (e.g. Gantmacher [2]). The algebraic part of this section is also treated more extensively in textbooks on multivariate analysis (e.g. Dillon and Goldstein [1], Giri [3], Cliff [4], Harris [5], Chatfield and Collins [6], Srivastana and Carter [7], Anderson [8]). [Pg.7]

Usually, the raw data in a matrix are preprocessed before being submitted to multivariate analysis. A common operation is reduction by the mean or centering. Centering is a standard transformation of the data which is applied in principal components analysis (Section 31.3). Subtraction of the column-means from the elements in the corresponding columns of an nxp matrix X produces the matrix of... [Pg.43]

W.R. Dillon and M. Goldstein, Multivariate Analysis, Methods and Applications. Wiley, New York, 1984. [Pg.56]

C. Chatfield and A.J. Collins, Introduction to Multivariate Analysis. Chapman and Hall, London, 1980. [Pg.56]

P. E. Green and J.D. Carroll, Mathematical Tools for Applied Multivariate Analysis. Academic Press, New York, 1976. [Pg.56]

A. Gifi, Non-linear Multivariate Analysis. Wiley, Chichester, UK, 1990. [Pg.56]

Multivariate analysis of these different types of measurements (heterogeneous, homogeneous, compositional, ordered) may require special approaches for each of them. For example, compositional tables that are closed with respect to the rows, require a different type of analysis than heterogeneous tables where the columns are defined with different units. The basic approach of principal components... [Pg.87]

We consider an nxn table D of distances between the n row-items of an nxp data table X. Distances can be derived from the data by means of various functions, depending upon the nature of the data and the objective of the analysis. Each of these functions defines a particular metric (or yardstick), and the graphical result of a multivariate analysis may largely depend on the particular choice of distance function. [Pg.146]

J.P. van de Geer, Multivariate Analysis of Categorical Data Applications. Sage Publications, Newbury Park, CA, 1993. [Pg.160]

J.C. Gower, Adding a point to vector diagrams in multivariate analysis. Biometrika, 55 (1968) 582-585. [Pg.160]

P.N. Nyambi, J. Nkengasong, P. Lewi, K. Andries, W. Janssens, K. Fransen, L. Heyndrickx, P. Piot and G. van derGroen, Multivariate analysis of human immunodeficiency virus type 1 neutralization data. J. Virol., 70 (1996) 6235-6243. [Pg.160]


See other pages where Multivariant analysis is mentioned: [Pg.89]    [Pg.201]    [Pg.431]    [Pg.123]    [Pg.237]    [Pg.498]    [Pg.499]    [Pg.279]    [Pg.161]    [Pg.260]    [Pg.261]    [Pg.334]    [Pg.172]    [Pg.173]    [Pg.224]    [Pg.66]    [Pg.34]    [Pg.130]    [Pg.175]    [Pg.182]   
See also in sourсe #XX -- [ Pg.119 ]




SEARCH



Analysis of Multivariable Systems

Analytical methods multivariate analysis

Calculated Molecular Properties and Multivariate Statistical Analysis in Absorption Prediction

Chemical structure multivariate data analysis

Chemometrics multivariate statistical analysis

Data augmentation, multivariate curve principal component analysis

Data evaluation multivariate analysis

Discriminant analysis multivariate models

Exploratory multivariate data analysis

Exploratory multivariate data analysis chemometrics

Indicators analysis, multivariate method

Input analysis, process data multivariate methods

Interferent multivariate analysis

Mode multivariate analysis

Molecular Properties and Multivariate Statistical Analysis

Multivariable analysis

Multivariable analysis

Multivariate Analysis Identifies Co-Variations of Elements and Strata

Multivariate Analysis MAIS or ISS as Injury Scale

Multivariate Auto- and Cross-correlation Analysis

Multivariate Autocorrelation Analysis

Multivariate Calibration in Chemical Analysis

Multivariate Infometric Analysis

Multivariate Statistical Data Analysis

Multivariate Versus Univariate Analysis

Multivariate analysis

Multivariate analysis

Multivariate analysis 422 INDEX

Multivariate analysis MANOVA)

Multivariate analysis artificial neural network

Multivariate analysis capillary electrophoresis

Multivariate analysis chemometric optimization

Multivariate analysis chromatography

Multivariate analysis clustering

Multivariate analysis construction

Multivariate analysis electrophoresis

Multivariate analysis methods

Multivariate analysis of variance

Multivariate analysis of variance and

Multivariate analysis techniques

Multivariate analysis, cost data

Multivariate analysis. MVA

Multivariate chemometric techniques multiple linear regression analysis

Multivariate correlation analysis

Multivariate curve resolution-alternating analysis

Multivariate data analysis

Multivariate data analysis and experimental

Multivariate data analysis and experimental design

Multivariate data analysis capabilities

Multivariate data analysis purposes

Multivariate data analysis techniques, literature

Multivariate data analysis tools

Multivariate data, principal-components analysis

Multivariate image analysis

Multivariate least squares analysis

Multivariate principal-components analysis

Multivariate regression analysis

Multivariate regression analysis approach

Multivariate sensory analysis

Multivariate spectral analysis

Multivariate statistical analysis

Multivariate statistical analysis applications

Multivariate statistical analysis cluster analyses

Multivariate statistical analysis partial least squares projections

Multivariate statistical models Discriminant analysis

Multivariate statistical models Neural-network analysis

Multivariate statistical models Partial least square analysis

Multivariate statistical techniques clusters analysis

Multivariate statistical techniques discriminant analysis

Multivariate statistical techniques factor analysis

Multivariate statistical techniques principal components analysis

Multivariate techniques association analysis

Multivariate variance and discriminant analysis

Neural network Multivariate analysis

Partial Least Squares (PLS) Analysis and Other Multivariate Statistical Methods

Partial multivariate data analysis

Principal component analysis multivariate statistical process control

Principal component analysis multivariate technique

Principal components analysis multivariate data matrices

Quantitative analysis multivariate calibration

Robust Methods in Analysis of Multivariate Food Chemistry Data

SIMPLISMA multivariate analysis

Sediment multivariate data analysis

Statistical methods multivariate analysis

© 2024 chempedia.info