4,832 research outputs found
Partial and Interaction Spline Models for the Semiparametric Estimation of Functions of Several Variables
A partial spline model is a model for a response as a function of several variables, which is the sum of a smooth function of several variables and a parametric function of the same plus possibly some other variables. Partial spline models in one and several variables, with direct and indirect data, with Gaussian errors and as an extension of GLIM to partially penalized GLIM models are described. Application to the modeling of change of regime in several variables is described. Interaction splines are introduced and described and their potential use for modeling non-linear interactions between variables by semiparametric methods is noted. Reference is made to recent work in efficient computational methods
Variational methods in simultaneous optimum interpolation and initialization
The duality between optimum interpolation and variational objective analysis, is reviewed. This duality is used to set up a variational approach to objective analysis which uses prior information concerning the atmospheric spectral energy distribution, in the variational problem. In the wind analysis example, the wind field is partitioned into divergent and nondivergent parts, and a control parameter governing the relative energy in the two parts is estimated from the observational data being analyzed by generalized cross validation, along with a bandwidth parameter. A variational approach to combining objective analysis and initialization in a single step is proposed. In a simple example of this approach, data, forecast, and prior information concerning atmospheric energy distribution is combined into a single variational problem. This problem has (at least) one bandwidth parameter, one partitioning parameter governing the relative energy in fast slow modes, and one parameter governing the relative weight to be given to observational and forecast data
Do market wages influence child labor and child schooling?
Thispaper provides empirical evidence on the joint determinants of child labor, and child schooling, using individual level data from Egypt. The main findings are as follows: 1) A ten percent increase in the illiterate male market wage decreases the probability of child labor by 21.5 percent for boys, and 13.1 percent for girls. 2) Higher local regional income inequality increases the likelihood of child labor. 3) Parents who were child laborers themselves, are more likely to send their children out to work. 4) Local labor market conditions - the share of adults engaged in the public sector, or in non-regular jobs - play an important role in influencing child labor participation. 5) There is a trade-off between child labor, and child schooling. The results suggest that not only is poverty the main cause of child labor, but that child labor perpetuates poverty as well.Street Children,Youth and Governance,Children and Youth,Environmental Economics&Policies,Labor Standards
Multivariate Bernoulli distribution
In this paper, we consider the multivariate Bernoulli distribution as a model
to estimate the structure of graphs with binary nodes. This distribution is
discussed in the framework of the exponential family, and its statistical
properties regarding independence of the nodes are demonstrated. Importantly
the model can estimate not only the main effects and pairwise interactions
among the nodes but also is capable of modeling higher order interactions,
allowing for the existence of complex clique effects. We compare the
multivariate Bernoulli model with existing graphical inference models - the
Ising model and the multivariate Gaussian model, where only the pairwise
interactions are considered. On the other hand, the multivariate Bernoulli
distribution has an interesting property in that independence and
uncorrelatedness of the component random variables are equivalent. Both the
marginal and conditional distributions of a subset of variables in the
multivariate Bernoulli distribution still follow the multivariate Bernoulli
distribution. Furthermore, the multivariate Bernoulli logistic model is
developed under generalized linear model theory by utilizing the canonical link
function in order to include covariate information on the nodes, edges and
cliques. We also consider variable selection techniques such as LASSO in the
logistic model to impose sparsity structure on the graph. Finally, we discuss
extending the smoothing spline ANOVA approach to the multivariate Bernoulli
logistic model to enable estimation of non-linear effects of the predictor
variables.Comment: Published in at http://dx.doi.org/10.3150/12-BEJSP10 the Bernoulli
(http://isi.cbs.nl/bernoulli/) by the International Statistical
Institute/Bernoulli Society (http://isi.cbs.nl/BS/bshome.htm
Vector splines on the sphere with application to the estimation of vorticity and divergence from discrete, noisy data
Vector smoothing splines on the sphere are defined. Theoretical properties are briefly alluded to. The appropriate Hilbert space norms used in a specific meteorological application are described and justified via a duality theorem. Numerical procedures for computing the splines as well as the cross validation estimate of two smoothing parameters are given. A Monte Carlo study is described which suggests the accuracy with which upper air vorticity and divergence can be estimated using measured wind vectors from the North American radiosonde network
Design criteria and eigensequence plots for satellite computed tomography
The use of the degrees of freedom for signal is proposed as a design criteria for comparing different designs for satellite and other measuring systems. It is also proposed that certain eigensequence plots be examined at the design stage along with appropriate estimates of the parameter lambda playing the role of noise to signal ratio. The degrees of freedom for signal and the eigensequence plots may be determined using prior information in the spectral domain which is presently available along with a description of the system, and simulated data for estimating lambda. This work extends the 1972 work of Weinreb and Crosby
Returns to education and regional earnings differentials in Egypt
This paper presents an empirical investigation of the determinants of labour market earnings in Egypt. Using Human Capital model, the determinants of regional earnings and returns to education by region are examined. The relative importance of individual and regional effects on earnings inequality is assessed. The main findings of the paper are: (i) the estimated rates of return to education increase with rising educational levels; this is different to the common pattern found in most developing countries. (ii) there are substantial variations in returns to education across regions. (iii) estimates point to the importance of credentials in the Egyptian labour market. Keywords; wage differentials, earnings inequality, developing countries, education
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