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Nonparametric regression analysis
textNonparametric regression uses nonparametric and flexible methods in analyzing complex data with unknown regression relationships by imposing minimum assumptions on the regression function. The theory and applications of nonparametric regression methods with an emphasis on kernel regression, smoothing spines and Gaussian process regression are reviewed in this report. Two datasets are analyzed to demonstrate and compare the three nonparametric regression models in R.Statistic
Analysis of neutrosophic multiple regression
The idea of Neutrosophic statistics is utilized for the analysis of the uncertainty
observation data. Neutrosophic multiple regression is one of a vital roles in the analysis of the
impact between the dependent and independent variables. The Neutrosophic regression equation
is useful to predict the future value of the dependent variable. This paper to predict the students'
performance in campus interviews is based on aptitude and personality tests, which measures
conscientiousness, and predict the future trend. Neutrosophic multiple regression is to authenticate
the claim and examine the null hypothesis using the F-test. This study exhibits that Neutrosophic
multiple regression is the most efficient model for uncertainty rather than the classical regression
model
Multinomial Inverse Regression for Text Analysis
Text data, including speeches, stories, and other document forms, are often
connected to sentiment variables that are of interest for research in
marketing, economics, and elsewhere. It is also very high dimensional and
difficult to incorporate into statistical analyses. This article introduces a
straightforward framework of sentiment-preserving dimension reduction for text
data. Multinomial inverse regression is introduced as a general tool for
simplifying predictor sets that can be represented as draws from a multinomial
distribution, and we show that logistic regression of phrase counts onto
document annotations can be used to obtain low dimension document
representations that are rich in sentiment information. To facilitate this
modeling, a novel estimation technique is developed for multinomial logistic
regression with very high-dimension response. In particular, independent
Laplace priors with unknown variance are assigned to each regression
coefficient, and we detail an efficient routine for maximization of the joint
posterior over coefficients and their prior scale. This "gamma-lasso" scheme
yields stable and effective estimation for general high-dimension logistic
regression, and we argue that it will be superior to current methods in many
settings. Guidelines for prior specification are provided, algorithm
convergence is detailed, and estimator properties are outlined from the
perspective of the literature on non-concave likelihood penalization. Related
work on sentiment analysis from statistics, econometrics, and machine learning
is surveyed and connected. Finally, the methods are applied in two detailed
examples and we provide out-of-sample prediction studies to illustrate their
effectiveness.Comment: Published in the Journal of the American Statistical Association 108,
2013, with discussion (rejoinder is here: http://arxiv.org/abs/1304.4200).
Software is available in the textir package for
Random design analysis of ridge regression
This work gives a simultaneous analysis of both the ordinary least squares
estimator and the ridge regression estimator in the random design setting under
mild assumptions on the covariate/response distributions. In particular, the
analysis provides sharp results on the ``out-of-sample'' prediction error, as
opposed to the ``in-sample'' (fixed design) error. The analysis also reveals
the effect of errors in the estimated covariance structure, as well as the
effect of modeling errors, neither of which effects are present in the fixed
design setting. The proofs of the main results are based on a simple
decomposition lemma combined with concentration inequalities for random vectors
and matrices
Robust Linear Regression Analysis - A Greedy Approach
The task of robust linear estimation in the presence of outliers is of
particular importance in signal processing, statistics and machine learning.
Although the problem has been stated a few decades ago and solved using
classical (considered nowadays) methods, recently it has attracted more
attention in the context of sparse modeling, where several notable
contributions have been made. In the present manuscript, a new approach is
considered in the framework of greedy algorithms. The noise is split into two
components: a) the inlier bounded noise and b) the outliers, which are
explicitly modeled by employing sparsity arguments. Based on this scheme, a
novel efficient algorithm (Greedy Algorithm for Robust Denoising - GARD), is
derived. GARD alternates between a least square optimization criterion and an
Orthogonal Matching Pursuit (OMP) selection step that identifies the outliers.
The case where only outliers are present has been studied separately, where
bounds on the \textit{Restricted Isometry Property} guarantee that the recovery
of the signal via GARD is exact. Moreover, theoretical results concerning
convergence as well as the derivation of error bounds in the case of additional
bounded noise are discussed. Finally, we provide extensive simulations, which
demonstrate the comparative advantages of the new technique
Method for nonlinear exponential regression analysis
Two computer programs developed according to two general types of exponential models for conducting nonlinear exponential regression analysis are described. Least squares procedure is used in which the nonlinear problem is linearized by expanding in a Taylor series. Program is written in FORTRAN 5 for the Univac 1108 computer
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