نتایج جستجو برای: probit regression

تعداد نتایج: 319533  

Journal: :Expert Syst. Appl. 2008
Hussein A. Abdou John Pointon Ahmed A. El-Masry

Neural nets have become one of the most important tools using in credit scoring. Credit scoring is regarded as a core appraised tool of commercial banks during the last few decades. The purpose of this paper is to investigate the ability of neural nets, such as probabilistic neural nets and multi-layer feed-forward nets, and conventional techniques such as, discriminant analysis, probit analysi...

2005
Andrea Conte Marco Vivarelli

One or Many Knowledge Production Functions? Mapping Innovative Activity Using Microdata This paper discusses the determinants of three alternative measures of innovative output by looking at firm’s own formal R&D activities and at the acquisition of external technology (TA) in its embodied and disembodied components. These input-output relationships are also discussed by distinguishing between ...

2014
Chi-Fa Hung Margarita Rivera Nick Craddock Michael J. Owen Michael Gill Ania Korszun Wolfgang Maier Ole Mors Martin Preisig John P. Rice Marcella Rietschel Lisa Jones Lefkos Middleton Kathy J. Aitchison Oliver S. P. Davis Gerome Breen Cathryn Lewis Anne Farmer Peter McGuffin

BACKGROUND Obesity has been shown to be associated with depression and it has been suggested that higher body mass index (BMI) increases the risk of depression and other common mental disorders. However, the causal relationship remains unclear and Mendelian randomisation, a form of instrumental variable analysis, has recently been employed to attempt to resolve this issue. AIMS To investigate...

2002
Charles Bellemare Bertrand Melenberg Arthur van Soest

An overview is presented of some parametric and semi-parametric models, estimators, and specification tests that can be used to analyze ordered response variables. In particular, limited dependent variable models that generalize ordered probit are compared to regression models that generalize the linear model. These techniques are then applied to analyze how self-reported satisfaction with hous...

2007
David A. Freedman Jasjeet S. Sekhon

In this paper, we look at conventional methods for removing endogeneity bias in regression models, including the linear model and the probit model. The usual Heckman two-step procedure should not be used in the probit model: from a theoretical perspective, this procedure is unsatisfactory, and likelihood methods are superior. However, serious numerical problems occur when standard software pack...

Journal: :Neural computation 2006
Wenxin Jiang

Modern data mining and bioinformatics have presented an important playground for statistical learning techniques, where the number of input variables is possibly much larger than the sample size of the training data. In supervised learning, logistic regression or probit regression can be used to model a binary output and form perceptron classification rules based on Bayesian inference. We use a...

2009
Pian Chen Malathi Velamuri

We propose a nonparametric approach for estimating single-index, binarychoice models when parametric models such as Probit and Logit are potentially misspecified. The new approach involves two steps: first, we estimate index coefficients using sliced inverse regression without specifying a parametric probability function a priori; second, we estimate the unknown probability function using kerne...

2010
Yaming Yu

We explore the idea of overrelaxation for accelerating the expectation-maximization (EM) algorithm, focusing on preserving its simplicity and monotonic convergence properties. It is shown that in many cases a trivial modification in the M-step results in an algorithm that maintains monotonic increase in the log-likelihood, but can have an appreciably faster convergence rate, especially when EM ...

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