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Testing reversibility for multivariate Markov processes /Navarro, Marcelo de Carvalho. January 1999 (has links)
Thesis (Ph. D.)--University of Chicago, Dept. of Economics, June 1999. / Includes bibliographical references. Also available on the Internet.
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Multivariate profile analysis of premenstrual symptomatologyJorgensen, Jane L. 05 November 1991 (has links)
Data regarding the severity of premenstrual symptoms were
collected from three groups of women: women over age 24
years seeking care from a gynecological practitioner,
undergraduates at OSU living in student dormitories, and
graduate students enrolled at OSU. The symptoms evaluated
were depression, tiredness, irritability, anxiety,
headache, breast swelling and tenderness, craving for
sweets, craving for salty foods, binge eating, and acne.
Symptoms were rated on a scale of zero (not present) to
three (severe). Multivariate profile analysis was used to
evaluate the hypothesis that the profiles formed by the
mean vectors of these premenstrual symptoms were parallel
with regard to symptom severity, age, consumption of
caffeinated beverages and refined sugar, maternal history
of premenstrual syndrome (PMS) and recent use of oral
contraceptives. Parallel profiles were further evaluated
for coincidence. Results of the analysis indicated that in
each of the three samples of women studied, the presence of
premenstrual symptomatology was indicated by one pattern of
symptom severity, and that this pattern remained constant
as symptoms became more severe. The variability in the
premenstrual symptoms could be explained by the inherent
variability of the women studied, a finding which does not
support the existence of multiple subtypes of PMS.
Evidence of a positive association between age and
increasing symptom severity was found only in the graduate
student group. High levels of consumption of caffeine were
shown to exacerbate premenstrual symptoms among the
graduate students, and frequent consumption of refined
sugar and "junk food" were shown to exacerbate symptoms
among older women. Increased symptom severity of
premenstrual symptoms in women whose mothers suffered from
PMS was noted only among undergraduate students. No
evidence was found to implicate oral contraceptive use in
the exacerbation or amelioration of premenstrual symptoms. / Graduation date: 1992
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Characterization of the mechanosensitivity of tactile receptors using multivariate logistical regressionBradshaw, Sam. January 2001 (has links)
Thesis (M.S.)--Worcester Polytechnic Institute. / Keywords: cutaneous mechanoreceptors, logistical regression. Includes bibliographical references (p. 156-159).
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Latent tree models for multivariate density estimation : algorithms and applications /Wang, Yi. January 2009 (has links)
Includes bibliographical references (p. 112-117).
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A comparative study of correlational outlier detection metricsRitter, Paul Muse, 1961- 01 October 2012 (has links)
The present investigation was a Monte Carlo experiment designed to evaluate the performance of several metrics in spotting correlational outliers. Specifically, the metrics that were compared were the Mahalanobis D², Bacon MLD, Carrig D, MCD, Robust PCLOW and Robust PCHIGH. This was the first comparative simulation study to include robust PCLOW and robust PCHIGH. The Mahalanobis D², MCD, Robust PCLOW and Robust PCHIGH were each applied using an approximate statistical criterion. The Carrig D and Bacon MLD were applied using a "natural drop" approach that separated scores on the metric into two groups: outlying and non-outlying. The "natural drop" utilizes a k-means algorithm from cluster analysis to separate the scores into the two groups. Both majority and contaminant observations were generated from multivariate normal distributions based on factor-analytic models. Experimental factors included majority versus contaminant communality level, majority-contaminant factor models scenario, number of variables, sample size and fraction of outliers. Results indicated that the "natural drop" method of application for the Carrig D and Bacon MLD leads to intolerably high false-alarm rates. Overall, PCLOW clearly outperformed PCHIGH. Suprisingly, PCLOW did not distinguish itself from MCD in terms of performance as expected in certain experimental conditions. The conditions in this study were limited. Future comparative studies of the metrics could include conditions of non-normality and hybrid types of outliers (i.e. outliers that are both mean shift and correlational). Despite its poor performance in this study, I theorize that robust PCHIGH could have an advantage over MCD in spotting certain kinds of mean-shift outliers. Also, research into the distributional properties of the Carrig D is warranted. / text
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On some negative dependence structures and their applicationsLo, Ambrose, 羅彥博 January 2014 (has links)
Recently, the study of negative dependence structures has aroused considerable interest amongst researchers in actuarial science and quantitative risk management. This thesis centres on two extreme negative dependence structures in different dimensions - counter-monotonicity and mutual exclusivity, and develops their novel characterizations and applications to risk management.
Bivariate random vectors are treated in the first part of the thesis, where the characterization of comonotonicity by the optimality of aggregate sums in convex order is extended to its bivariate antithesis, namely, counter-monotonicity. It is shown that two random variables are counter-monotonic if and only if their aggregate sum is minimal with respect to convex order. This defining property of counter-monotonicity is then exploited to identify a necessary and sufficient condition for merging counter-monotonic positions to be risk-reducing.
In the second part, the notion of mutual exclusivity is introduced as a multi-dimensional generalization of counter-monotonicity. Various characterizations of mutually exclusive random vectors are presented, including their pairwise counter-monotonic behaviour, minimal convex sum property, and the characteristic function of their aggregate sums. These properties highlight the role of mutual exclusivity as the strongest negative dependence structure in a multi-dimensional setting. As an application, the practical problem of deriving general lower bounds on three common convex functionals of aggregate sums with arbitrary marginal distributions is considered. The sharpness of these lower bounds is characterized via the mutual exclusivity of the underlying random variables. Compared to existing bounds in the literature, the new lower bounds proposed enjoy the advantages of generality and simplicity. / published_or_final_version / Statistics and Actuarial Science / Doctoral / Doctor of Philosophy
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Correspondence analysis and clustering with applications to site-species occurrence梁德貞, Leung, Tak-ching. January 1991 (has links)
published_or_final_version / Statistics / Master / Master of Philosophy
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Sampling properties of multiple linear regression statisticsLane, Leonard J. January 1972 (has links)
No description available.
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The exact percentage points for the likelihood ratio test criteria for testing sphericity in the multinormal case/Samborsky, William January 1974 (has links)
No description available.
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A study of procedures to examine correlation pattern hypotheses under conditions of multivariate normality and nonnormalityFouladi, Rachel Tanya 11 1900 (has links)
A wide array of procedures have been proposed for testing correlation pattern. Many, but
not all, of the statistical techniques available for testing correlation pattern are derived under the
distributional condition of multivariate normality which does not always hold in the behavioral,
educational and social sciences. Though a number of studies have explored the performance of
structure analysis techniques under conditions of multivariate nonnormality, very little is known
about the actual performance of many correlation structure analysis techniques under conditions
of multivariate nonnormality. In addition, very little is known about the actual concurrent
performance of tests of multivariate normality.
The present investigation ascertains how tests of correlation pattern hypotheses and
indicators of multivariate normality perform when data are from multivariate normal or nonnormal
parent populations. This paper reviews and examines, using a Monte Carlo simulation study, the
concurrent performance of different approaches to testing (1) correlation pattern hypotheses,
including, (i) normal theory (NT) and asymptotically distribution free (ADF) covariance structure
analysis techniques, (ii) NT and ADF correlation structure analysis techniques, (iii) correlation
pattern specific techniques; (2) the distributional assumption of multivariate normality using
statistics based on Mardia's measures of multivariate skewness and kurtosis. This paper also
examines the performance characteristics of test procedures based on joint consideration of tests
of multivariate normality and structure analysis techniques. Performance of the covariance and
correlation structure analysis techniques, tests of multivariate normality, and joint test procedures
was assessed across different types of correlation pattern models, numbers of variables, levels of
skew and kurtosis, sample sizes, and nominal alpha levels, on the primary Neyman-Pearson
criterion for an optimal test, according to which an optimal procedure (1) controls
experimentwise Type I error rate at or below the nominal level, (2) maximizes power.
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