138,971 research outputs found
Portrait of Sir John Nimmo, QC [picture] /
Condition: good; Inscriptions: G Jauncey Prior '87 -- l.r. corner.; Title from accession record.; Donated by Lady Nimmo. Portrait of Sir John Nimmo, QC in robes and wig
Mixtures of g-priors for Bayesian model averaging with economic applications
We examine the issue of variable selection in linear regression
modeling, where we have a potentially large amount of possible covariates
and economic theory offers insufficient guidance on how to select the ap-
propriate subset. Bayesian Model Averaging presents a formal Bayesian
solution to dealing with model uncertainty. Our main interest here is the
effect of the prior on the results, such as posterior inclusion probabilities
of regressors and predictive performance. We combine a Binomial-Beta
prior on model size with a g-prior on the coefficients of each model. In
addition, we assign a hyperprior to g, as the choice of g has been found
to have a large impact on the results. For the prior on g, we examine
the Zellner-Siow prior and a class of Beta shrinkage priors, which covers
most choices in the recent literature. We propose a benchmark Beta prior,
inspired by earlier findings with fixed g, and show it leads to consistent
model selection. Inference is conducted through a Markov chain Monte
Carlo sampler over model space and g. We examine the performance of the
various priors in the context of simulated and real data. For the latter, we
consider two important applications in economics, namely cross-country
growth regression and returns to schooling. Recommendations to applied
users are provided
Mixtures of g-priors for Bayesian Model Averaging with economic application
This paper examines the issue of variable selection in linear regression modeling, where there is a potentially large amount of possible covariates and economic theory offers insufficient guidance on how to select the appropriate subset. In this context, Bayesian Model Averaging presents a formal Bayesian solution to dealing with model uncertainty. The main interest here is the effect of the prior on the results, such as posterior inclusion probabilities of regressors and predictive performance. The authors combine a Binomial-Beta prior on model size with a g-prior on the coefficients of each model. In addition, they assign a hyperprior to g, as the choice of g has been found to have a large impact on the results. For the prior on g, they examine the Zellner-Siow prior and a class of Beta shrinkage priors, which covers most choices in the recent literature. The authors propose a benchmark Beta prior, inspired by earlier findings with fixed g, and show it leads to consistent model selection. Inference is conducted through a Markov chain Monte Carlo sampler over model space and g. The authors examine the performance of the various priors in the context of simulated and real data. For the latter, they consider two important applications in economics, namely cross-country growth regression and returns to schooling. Recommendations for applied users are provided.Educational Technology and Distance Education,Arts&Music,Geographical Information Systems,Information Security&Privacy,Statistical&Mathematical Sciences
Mixtures of g-priors for bayesian model averaging with economic applications
We examine the issue of variable selection in linear regression have a potentially large amount of possible covariates and economic theory offers insufficient guidance on how to select the Model Averaging presents uncertainty. Our main interest here is the effect of the prior on the results, such as posterior inclusion probabilities of regressors and predictive performance. We combine a Binomial-Beta prior on model size with a g addition, we assign a hyperprior to g, as the choice impact on the results. For the prior of Beta shrinkage priors, which covers most choices in the recent literature. We propose a benchmark Beta prior, inspired by earlier findings with fixed g, and show it leads to selection. Inference is conducted through a Markov chain Monte Carlo sampler over model space and g. We examine the performance of the various priors in the context of simulated and real data. For the latter, we consider two important appl economics, namely cross-country growth regression and returns to schooling. Recommendations to applied users are provided.Consistency, Model uncertainty, Posterior odds, Prediction, Robustness
Revisiting revisitation in computer interaction: organic bookmark management
According to Milic-Frayling et al. (2004), there are two general ways of user browsing i.e. search (finding a website where the user has never visited before) and revisitation (returning to a website where the user has visited in the past). The issue of search is relevant to search engine technology, whilst revisitation concerns web usage and browser history mechanisms. The support for revisitation is normally through a set of functional built-in icons e.g. History, Back, Forward and Bookmarks. Nevertheless, for returning web users, they normally find it is easier and faster to re-launch an online search again, rather than spending time to find a particular web site from their personal bookmark and history records. Tauscher and Greenberg (1997) showed that revisiting web pages forms up to 58% of the recurrence rate of web browsing. Cockburn and McKenzie (2001) also stated that 81% of web pages have been previously visited by the user. According to Obendorf et al. (2007), revisitation can be divided into four classifications based on time: short-term (72.6% revisits within an hour), medium-term (12% revisits within a day and 7.8% revisits within a week), and long-term (7.6% revisits longer than a week
Normalized Power Prior Bayesian Analysis
The elicitation of power prior distributions is based on the availability of historical data, and is realized by raising the likelihood function of the historical data to a fractional power. However, an arbitrary positive constant before the like- lihood function of the historical data could change the inferential results when one uses the original power prior. This raises a question that which likelihood function should be used, one from raw data, or one from a su±cient-statistics. We propose a normalized power prior that can better utilize the power parameter in quantifying the heterogeneity between current and historical data. Furthermore, when the power parameter is random, the optimality of the normalized power priors is shown in the sense of maximizing Shannon's mutual information. Some comparisons between the original and the normalized power prior approaches are made and a water-quality monitoring data is used to show that the normalized power prior is more sensible.Bayesian analysis, historical data, normalized power prior, power prior, prior elicitation, Shannon's mutual information.
"Marjorie G. Paul looking over our boats prior to departure for Hite."
Photo shows Marjorie G. Paul with Mexican Hat Expeditions river running boats prior to departure for Hite on May 10, 195
The Olasky Interview: Karen Swallow Prior on abolitionist Hannah More
Karen Swallow Prior, a professor of English at Liberty University, is the author of Fierce Convictions: The Extraordinary Life of Hannah More -- Poet, Reformer, Abolitionist (Thomas Nelson, 2014)
Prior upper body exercise reduces cycling work capacity but not critical power
Purpose: This study examined whether metabolite accumulation, induced by prior upper body exercise, affected the power–duration relationship for leg cycle ergometry
Forecast Combination and Bayesian Model Averaging - A Prior Sensitivity Analysis
In this study the forecast performance of model averaged forecasts is compared to that of alternative single models. Following Eklund and Karlsson (2007) we form posterior model probabilities - the weights for the combined forecast - based on the predictive likelihood. Extending the work of Fernández et al. (2001a) we carry out a prior sensitivity analysis for a key parameter in Bayesian model averaging (BMA): Zellner's g. The main results based on a simulation study are fourfold: First the predictive likelihood does always better than the traditionally employed 'marginal' likelihood in settings where the true model is not part of the model space. Secondly, and more striking, forecast accuracy as measured by the root mean square error (rmse) is maximized for the median probability model put forward by Barbieri and Berger (2003). On the other hand, model averaging excels in predicting direction of changes, a finding that is in line with Crespo Cuaresma (2007). Lastly, our recommendation concerning the prior on g is to choose the prior proposed by Laud and Ibrahim (1995) with a hold-out sample size of 25% to minimize the rmse (median model) and 75% to optimize direction of change forecasts (model averaging). We finally forecast the monthly industrial production output of six Central Eastern and South Eastern European (CESEE) economies for a one step ahead forecasting horizon. Following the aforementioned forecasting recommendations improves the out-of-sample statistics over a 30-period horizon beating for almost all countries the first order autoregressive benchmark model.Forecast Combination; Bayesian Model Averaging; Median Probability Model; Predictive Likelihood; Industrial Production; Model Uncertainty
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