929 resultados para Single Equation Models
Resumo:
Cette étude longitudinale visait à évaluer si les traits de personnalité des adolescents permettent de prédire leurs comportements antisociaux ultérieurs, après avoir contrôlé pour l’effet du niveau initial du comportement antisocial ainsi que celui de plusieurs facteurs de risque connus de ces comportements. L’échantillon utilisé compte 1036 adolescents provenant de huit écoles secondaires québécoises. Les adolescents ont été évalués à deux reprises, soit en secondaire 1 (12-13 ans) et en secondaire 3 (14-15 ans). Ils ont répondu à un questionnaire autorévélé. Des modèles d’équations structurales ont d’abord confirmé que la covariation entre différents comportements antisociaux des adolescents peut être expliquée par une variable latente. Les résultats ont confirmé que les traits de personnalité des adolescents à 12 et 13 ans prédisent leurs comportements antisociaux à 14 et 15 ans. En accord avec les études antérieures, l’Extraversion, le Contrôle et la Stabilité émotionnelle prédisent les comportements antisociaux futurs. Toutefois, l’effet de l’Amabilité disparait une fois que le niveau initial est contrôlé. Finalement, des modèles d’équations structurales multi-groupes ont permis de démontrer que certaines relations prédictives sont différentes selon le sexe. Les résultats de cette étude soulignent l’importance des traits de personnalité pour les théories du comportement antisocial ainsi que pour la pratique clinique.
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La douleur chronique non cancéreuse (DCNC) est un phénomène complexe et des interventions multimodales qui abordent à la fois ses dimensions biologiques et psychosociales sont considérées comme l’approche optimale pour traiter ce type de désordre. La prescription d'opioïdes pour la DCNC a augmenté d’une façon fulgurante au cours des deux dernières décennies, mais les preuves supportant l'efficacité à long terme de ce type de médicament en termes de réduction de la sévérité de la douleur et d’amélioration de la qualité de vie des patients souffrant de DCNC sont manquantes. L'objectif de cette étude était d'investiguer dans un contexte de vraie vie l'efficacité à long terme des opioïdes pour réduire l’intensité et l’impact de la douleur et améliorer la qualité de vie reliée à la santé des patients souffrant de DCNC sur une période d’une année. Méthodes: Les participants à cette étude étaient 1490 patients (âge moyen = 52,37 (écart-type = 13,9); femmes = 60,9%) enrôlés dans le Registre Québec Douleur entre octobre 2008 et Avril 2011 et qui ont complété une série de questionnaires avant d'initier un traitement dans un centre multidisciplinaire tertiaire de gestion de la douleur ainsi qu’à 6 et 12 mois plus tard. Selon leur profil d'utilisation d'opioïdes (PUO), les patients ont été classés en 1) non-utilisateurs, 2) utilisateurs non persistants, et 3) utilisateurs persistants. Les données ont été analysées à l'aide du modèle d'équation d'estimation généralisée. Résultats: Chez les utilisateurs d’opioïdes, 52% en ont cessé la prise à un moment ou à un autre pendant la période de suivi. Après ajustement pour l'âge et le sexe, le PUO a prédit d’une manière significative l’intensité de la douleur ressentie en moyenne sur des périodes de 7 jours (p <0,001) ainsi que la qualité de vie physique (pQDV) dans le temps (p <0,001). Comparés aux non-utilisateurs, les utilisateurs persistants avaient des niveaux significativement plus élevés d'intensité de douleur et une moins bonne pQDV. Une interaction significative a été trouvée entre le PUO et le temps dans la prédiction de l’intensité de douleur ressentie à son maximum (p = 0,001), les utilisateurs persistants sont ceux rapportant les scores les plus élevés à travers le temps. Une interaction significative a aussi été observée entre le PUO et le type de douleur dans la prédiction de l'impact de la douleur dans diverses sphères de la vie quotidienne (p = 0,048) et de la mQDV (p = 0,042). Indépendamment du type de douleur, les utilisateurs persistants ont rapporté des scores plus élevés d'interférence de douleur ainsi qu’une moins bonne mQDV par rapport aux non-utilisateurs. Cependant, la magnitude de ces effets était de petite taille (d de Cohen <0,5), une observation qui remet en question la puissance et la signification clinique des différences observées entre ces groupes. Conclusion: Nos résultats contribuent à maintenir les doutes sur l'efficacité d’une thérapie à long terme à base d’opioïdes et remettent ainsi en question le rôle que peut jouer ce type de médicament dans l'arsenal thérapeutique pour la gestion de la DCNC.
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In the accounting literature, interaction or moderating effects are usually assessed by means of OLS regression and summated rating scales are constructed to reduce measurement error bias. Structural equation models and two-stage least squares regression could be used to completely eliminate this bias, but large samples are needed. Partial Least Squares are appropriate for small samples but do not correct measurement error bias. In this article, disattenuated regression is discussed as a small sample alternative and is illustrated on data of Bisbe and Otley (in press) that examine the interaction effect of innovation and style of use of budgets on performance. Sizeable differences emerge between OLS and disattenuated regression
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Common Loon (Gavia immer) is considered an emblematic and ecologically important example of aquatic-dependent wildlife in North America. The northern breeding range of Common Loon has contracted over the last century as a result of habitat degradation from human disturbance and lakeshore development. We focused on the state of New Hampshire, USA, where a long-term monitoring program conducted by the Loon Preservation Committee has been collecting biological data on Common Loon since 1976. The Common Loon population in New Hampshire is distributed throughout the state across a wide range of lake-specific habitats, water quality conditions, and levels of human disturbance. We used a multiscale approach to evaluate the association of Common Loon and breeding habitat within three natural physiographic ecoregions of New Hampshire. These multiple scales reflect Common Loon-specific extents such as territories, home ranges, and lake-landscape influences. We developed ecoregional multiscale models and compared them to single-scale models to evaluate model performance in distinguishing Common Loon breeding habitat. Based on information-theoretic criteria, there is empirical support for both multiscale and single-scale models across all three ecoregions, warranting a model-averaging approach. Our results suggest that the Common Loon responds to both ecological and anthropogenic factors at multiple scales when selecting breeding sites. These multiscale models can be used to identify and prioritize the conservation of preferred nesting habitat for Common Loon populations.
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The paper develops a measure of consumer welfare losses associated with withholding it formation about a possible link between BSE and vCJD. The Cost of Ignorance (COI) is measured by comparing the utility of the informed choice with the utility of the uninformed choice, under conditions of improved information. Unlike previous work that is largely based on a single equation demand model, the measure is obtained retrieving a cost,function from a dynamic Almost Ideal Demand System. The estimated perceived loss for Italian consumers due to delayed information ranges from 12 percent to 54 percent of total meat expenditure, depending on the month assumed to embody correct beliefs about the safety level of beef.
Resumo:
Feed samples received by commercial analytical laboratories are often undefined or mixed varieties of forages, originate from various agronomic or geographical areas of the world, are mixtures (e.g., total mixed rations) and are often described incompletely or not at all. Six unified single equation approaches to predict the metabolizable energy (ME) value of feeds determined in sheep fed at maintenance ME intake were evaluated utilizing 78 individual feeds representing 17 different forages, grains, protein meals and by-product feedstuffs. The predictive approaches evaluated were two each from National Research Council [National Research Council (NRC), Nutrient Requirements of Dairy Cattle, seventh revised ed. National Academy Press, Washington, DC, USA, 2001], University of California at Davis (UC Davis) and ADAS (Stratford, UK). Slopes and intercepts for the two ADAS approaches that utilized in vitro digestibility of organic matter and either measured gross energy (GE), or a prediction of GE from component assays, and one UC Davis approach, based upon in vitro gas production and some component assays, differed from both unity and zero, respectively, while this was not the case for the two NRC and one UC Davis approach. However, within these latter three approaches, the goodness of fit (r(2)) increased from the NRC approach utilizing lignin (0.61) to the NRC approach utilizing 48 h in vitro digestion of neutral detergent fibre (NDF:0.72) and to the UC Davis approach utilizing a 30 h in vitro digestion of NDF (0.84). The reason for the difference between the precision of the NRC procedures was the failure of assayed lignin values to accurately predict 48 h in vitro digestion of NDF. However, differences among the six predictive approaches in the number of supporting assays, and their costs, as well as that the NRC approach is actually three related equations requiring categorical description of feeds (making them unsuitable for mixed feeds) while the ADAS and UC Davis approaches are single equations, suggests that the procedure of choice will vary dependent Upon local conditions, specific objectives and the feedstuffs to be evaluated. In contrast to the evaluation of the procedures among feedstuffs, no procedure was able to consistently discriminate the ME values of individual feeds within feedstuffs determined in vivo, suggesting that the quest for an accurate and precise ME predictive approach among and within feeds, may remain to be identified. (C) 2004 Elsevier B.V. All rights reserved.
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This paper describes a method for the state estimation of nonlinear systems described by a class of differential-algebraic equation models using the extended Kalman filter. The method involves the use of a time-varying linearisation of a semi-explicit index one differential-algebraic equation. The estimation technique consists of a simplified extended Kalman filter that is integrated with the differential-algebraic equation model. The paper describes a simulation study using a model of a batch chemical reactor. It also reports a study based on experimental data obtained from a mixing process, where the model of the system is solved using the sequential modular method and the estimation involves a bank of extended Kalman filters.
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Cross-bred cow adoption is an important and potent policy variable precipitating subsistence household entry into emerging milk markets. This paper focuses on the problem of designing policies that encourage and sustain milkmarket expansion among a sample of subsistence households in the Ethiopian highlands. In this context it is desirable to measure households’ ‘proximity’ to market in terms of the level of deficiency of essential inputs. This problem is compounded by four factors. One is the existence of cross-bred cow numbers (count data) as an important, endogenous decision by the household; second is the lack of a multivariate generalization of the Poisson regression model; third is the censored nature of the milk sales data (sales from non-participating households are, essentially, censored at zero); and fourth is an important simultaneity that exists between the decision to adopt a cross-bred cow, the decision about how much milk to produce, the decision about how much milk to consume and the decision to market that milk which is produced but not consumed internally by the household. Routine application of Gibbs sampling and data augmentation overcome these problems in a relatively straightforward manner. We model the count data from two sites close to Addis Ababa in a latent, categorical-variable setting with known bin boundaries. The single-equation model is then extended to a multivariate system that accommodates the covariance between crossbred-cow adoption, milk-output, and milk-sales equations. The latent-variable procedure proves tractable in extension to the multivariate setting and provides important information for policy formation in emerging-market settings
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We consider the problem of discrete time filtering (intermittent data assimilation) for differential equation models and discuss methods for its numerical approximation. The focus is on methods based on ensemble/particle techniques and on the ensemble Kalman filter technique in particular. We summarize as well as extend recent work on continuous ensemble Kalman filter formulations, which provide a concise dynamical systems formulation of the combined dynamics-assimilation problem. Possible extensions to fully nonlinear ensemble/particle based filters are also outlined using the framework of optimal transportation theory.
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As part of an international intercomparison project, a set of single column models (SCMs) and cloud-resolving models (CRMs) are run under the weak temperature gradient (WTG) method and the damped gravity wave (DGW) method. For each model, the implementation of the WTG or DGW method involves a simulated column which is coupled to a reference state defined with profiles obtained from the same model in radiative-convective equilibrium. The simulated column has the same surface conditions as the reference state and is initialized with profiles from the reference state. We performed systematic comparison of the behavior of different models under a consistent implementation of the WTG method and the DGW method and systematic comparison of the WTG and DGW methods in models with different physics and numerics. CRMs and SCMs produce a variety of behaviors under both WTG and DGW methods. Some of the models reproduce the reference state while others sustain a large-scale circulation which results in either substantially lower or higher precipitation compared to the value of the reference state. CRMs show a fairly linear relationship between precipitation and circulation strength. SCMs display a wider range of behaviors than CRMs. Some SCMs under the WTG method produce zero precipitation. Within an individual SCM, a DGW simulation and a corresponding WTG simulation can produce different signed circulation. When initialized with a dry troposphere, DGW simulations always result in a precipitating equilibrium state. The greatest sensitivities to the initial moisture conditions occur for multiple stable equilibria in some WTG simulations, corresponding to either a dry equilibrium state when initialized as dry or a precipitating equilibrium state when initialized as moist. Multiple equilibria are seen in more WTG simulations for higher SST. In some models, the existence of multiple equilibria is sensitive to some parameters in the WTG calculations.
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We present a data-driven mathematical model of a key initiating step in platelet activation, a central process in the prevention of bleeding following Injury. In vascular disease, this process is activated inappropriately and causes thrombosis, heart attacks and stroke. The collagen receptor GPVI is the primary trigger for platelet activation at sites of injury. Understanding the complex molecular mechanisms initiated by this receptor is important for development of more effective antithrombotic medicines. In this work we developed a series of nonlinear ordinary differential equation models that are direct representations of biological hypotheses surrounding the initial steps in GPVI-stimulated signal transduction. At each stage model simulations were compared to our own quantitative, high-temporal experimental data that guides further experimental design, data collection and model refinement. Much is known about the linear forward reactions within platelet signalling pathways but knowledge of the roles of putative reverse reactions are poorly understood. An initial model, that includes a simple constitutively active phosphatase, was unable to explain experimental data. Model revisions, incorporating a complex pathway of interactions (and specifically the phosphatase TULA-2), provided a good description of the experimental data both based on observations of phosphorylation in samples from one donor and in those of a wider population. Our model was used to investigate the levels of proteins involved in regulating the pathway and the effect of low GPVI levels that have been associated with disease. Results indicate a clear separation in healthy and GPVI deficient states in respect of the signalling cascade dynamics associated with Syk tyrosine phosphorylation and activation. Our approach reveals the central importance of this negative feedback pathway that results in the temporal regulation of a specific class of protein tyrosine phosphatases in controlling the rate, and therefore extent, of GPVI-stimulated platelet activation.
Resumo:
As part of an international intercomparison project, the weak temperature gradient (WTG) and damped gravity wave (DGW) methods are used to parameterize large-scale dynamics in a set of cloud-resolving models (CRMs) and single column models (SCMs). The WTG or DGW method is implemented using a configuration that couples a model to a reference state defined with profiles obtained from the same model in radiative-convective equilibrium. We investigated the sensitivity of each model to changes in SST, given a fixed reference state. We performed a systematic comparison of the WTG and DGW methods in different models, and a systematic comparison of the behavior of those models using the WTG method and the DGW method. The sensitivity to the SST depends on both the large-scale parameterization method and the choice of the cloud model. In general, SCMs display a wider range of behaviors than CRMs. All CRMs using either the WTG or DGW method show an increase of precipitation with SST, while SCMs show sensitivities which are not always monotonic. CRMs using either the WTG or DGW method show a similar relationship between mean precipitation rate and column-relative humidity, while SCMs exhibit a much wider range of behaviors. DGW simulations produce large-scale velocity profiles which are smoother and less top-heavy compared to those produced by the WTG simulations. These large-scale parameterization methods provide a useful tool to identify the impact of parameterization differences on model behavior in the presence of two-way feedback between convection and the large-scale circulation.
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The degree to which habitat fragmentation affects bird incidence is species specific and may depend on varying spatial scales. Selecting the correct scale of measurement is essential to appropriately assess the effects of habitat fragmentation on bird occurrence. Our objective was to determine which spatial scale of landscape measurement best describes the incidence of three bird species (Pyriglena leucoptera, Xiphorhynchus fuscus and Chiroxiphia caudata) in the fragmented Brazilian Atlantic forest and test if multi-scalar models perform better than single-scalar ones. Bird incidence was assessed in 80 forest fragments. The surrounding landscape structure was described with four indices measured at four spatial scales (400-, 600-, 800- and 1,000-m buffers around the sample points). The explanatory power of each scale in predicting bird incidence was assessed using logistic regression, bootstrapped with 1,000 repetitions. The best results varied between species (1,000-m radius for P. leucoptera; 800-m for X. fuscus and 600-m for C. caudata), probably due to their distinct feeding habits and foraging strategies. Multi-scale models always resulted in better predictions than single-scale models, suggesting that different aspects of the landscape structure are related to different ecological processes influencing bird incidence. In particular, our results suggest that local extinction and (re)colonisation processes might simultaneously act at different scales. Thus, single-scale models may not be good enough to properly describe complex pattern-process relationships. Selecting variables at multiple ecologically relevant scales is a reasonable procedure to optimise the accuracy of species incidence models.
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In this paper we present a finite difference method for solving two-dimensional viscoelastic unsteady free surface flows governed by the single equation version of the eXtended Pom-Pom (XPP) model. The momentum equations are solved by a projection method which uncouples the velocity and pressure fields. We are interested in low Reynolds number flows and, to enhance the stability of the numerical method, an implicit technique for computing the pressure condition on the free surface is employed. This strategy is invoked to solve the governing equations within a Marker-and-Cell type approach while simultaneously calculating the correct normal stress condition on the free surface. The numerical code is validated by performing mesh refinement on a two-dimensional channel flow. Numerical results include an investigation of the influence of the parameters of the XPP equation on the extrudate swelling ratio and the simulation of the Barus effect for XPP fluids. (C) 2010 Elsevier B.V. All rights reserved.
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O compartilhamento do conhecimento e a confiança organizacional são fatores de grande interesse nas pesquisas sobre gestão do conhecimento. Esta tese tem por objetivo identificar como a confiança organizacional influencia a propensão ao compartilhamento do conhecimento em estruturas hierárquicas fortes, estudando os efeitos da satisfação com a carreira, do comprometimento organizacional e do tempo de exposição à hierarquia nesse processo. O método hipotético-dedutivo, aplicado com a técnica de modelagem de equações estruturais a uma amostra de 655 profissionais militares do Exército Brasileiro resultou na mediação do comprometimento organizacional afetivo no relacionamento entre a confiança organizacional e a propensão ao compartilhamento do conhecimento. Os resultados sugerem, ainda, que a percepção de utilidade do conhecimento recebido e o estado civil são variáveis significativas na explicação da variância da propensão ao compartilhamento do conhecimento. Por fim, o tempo de exposição à hierarquia impacta diretamente as variáveis estudadas sem, contudo, interferir no relacionamento entre o comprometimento organizacional e a propensão ao compartilhamento do conhecimento. Os resultados desta tese contribuem para o melhor entendimento do fenômeno de compartilhamento do conhecimento no ambiente organizacional.