I present a Bayesian forecasting model particularly suited for multiparty systems. The method I develop systematically combines (i) information from a Multinomial logit regression model fitted on historical data and (ii) estimates of current party support produced by a Dynamic Linear Model for multinomial observations. I apply the method to the Norwegian multiparty system, and assess the performance of the model on past elections. As of present, the model is ready to be updated as the Norwegian parliamentary elections of 2013 draws closer. The current forecast for the upcoming election is that the four opposition parties will obtain a majority in parliament with a probability of 0.775
This article presents a data-driven Bayesian model used to predict the state-by-state wi...
Since the development of electoral forecasting as a formalised modelling process, rather than inform...
Katz and King have previously developed a model for predicting or explaining aggregate electoral res...
We offer a dynamic Bayesian forecasting model for multiparty elections. It combines data from publis...
We offer a dynamic Bayesian forecasting model for multiparty elections. It combines data from publis...
We offer a dynamic Bayesian forecasting model for multi-party elections. It combines data from publi...
We offer a dynamic Bayesian forecasting model for multi-party elections. It combines data from publi...
This bachelor thesis in statistics covers the subject of election forecasting in a multiparty system...
We propose a new methodology for predicting electoral results that com- bines a fundamental model an...
We offer a dynamic Bayesian forecasting model for multi-party elections. It combines data from publi...
From the 1970s onwards, a wide range of forecasting techniques have been developed in the literature...
AbstractFrom the 1970s onwards, a wide range of forecasting techniques have been developed in the li...
In this paper we propose a novel method to forecast the result of elections using only official resu...
Mestrado Bolonha em Econometria Aplicada e PrevisãoThis work tries to forecast election results in B...
We present a Bayesian and frequentist comparison when forecasting elections through polls. Our focus...
This article presents a data-driven Bayesian model used to predict the state-by-state wi...
Since the development of electoral forecasting as a formalised modelling process, rather than inform...
Katz and King have previously developed a model for predicting or explaining aggregate electoral res...
We offer a dynamic Bayesian forecasting model for multiparty elections. It combines data from publis...
We offer a dynamic Bayesian forecasting model for multiparty elections. It combines data from publis...
We offer a dynamic Bayesian forecasting model for multi-party elections. It combines data from publi...
We offer a dynamic Bayesian forecasting model for multi-party elections. It combines data from publi...
This bachelor thesis in statistics covers the subject of election forecasting in a multiparty system...
We propose a new methodology for predicting electoral results that com- bines a fundamental model an...
We offer a dynamic Bayesian forecasting model for multi-party elections. It combines data from publi...
From the 1970s onwards, a wide range of forecasting techniques have been developed in the literature...
AbstractFrom the 1970s onwards, a wide range of forecasting techniques have been developed in the li...
In this paper we propose a novel method to forecast the result of elections using only official resu...
Mestrado Bolonha em Econometria Aplicada e PrevisãoThis work tries to forecast election results in B...
We present a Bayesian and frequentist comparison when forecasting elections through polls. Our focus...
This article presents a data-driven Bayesian model used to predict the state-by-state wi...
Since the development of electoral forecasting as a formalised modelling process, rather than inform...
Katz and King have previously developed a model for predicting or explaining aggregate electoral res...