We offer a dynamic Bayesian forecasting model for multiparty elections. It combines data from published pre-election public opinion polls with information from fundamentals-based forecasting models. The model takes care of the multiparty nature of the setting and allows making statements about the probability of other quantities of interest, such as the probability of a plurality of votes for a party or the majority for certain coalitions in parliament. We present results from two ex ante forecasts of elections that took place in 2017 and are able to show that the model outperforms fundamentals-based forecasting models in terms of accuracy and the calibration of uncertainty. Provided that historical and current polling data are available, t...
AbstractFrom the 1970s onwards, a wide range of forecasting techniques have been developed in the li...
In multi-party systems, politicians, voters, and political pundits often speculate about potential c...
In this paper we assess polls and prediction markets over a large number of US elections in order to...
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...
I present a Bayesian forecasting model particularly suited for multiparty systems. The method I deve...
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 present a Bayesian and frequentist comparison when forecasting elections through polls. Our focus...
From the 1970s onwards, a wide range of forecasting techniques have been developed in the literature...
A wide range of potentially useful data are available for election forecasting: the results of previ...
Mestrado Bolonha em Econometria Aplicada e PrevisãoThis work tries to forecast election results in B...
Since the development of electoral forecasting as a formalised modelling process, rather than inform...
AbstractFrom the 1970s onwards, a wide range of forecasting techniques have been developed in the li...
In multi-party systems, politicians, voters, and political pundits often speculate about potential c...
In this paper we assess polls and prediction markets over a large number of US elections in order to...
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...
I present a Bayesian forecasting model particularly suited for multiparty systems. The method I deve...
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 present a Bayesian and frequentist comparison when forecasting elections through polls. Our focus...
From the 1970s onwards, a wide range of forecasting techniques have been developed in the literature...
A wide range of potentially useful data are available for election forecasting: the results of previ...
Mestrado Bolonha em Econometria Aplicada e PrevisãoThis work tries to forecast election results in B...
Since the development of electoral forecasting as a formalised modelling process, rather than inform...
AbstractFrom the 1970s onwards, a wide range of forecasting techniques have been developed in the li...
In multi-party systems, politicians, voters, and political pundits often speculate about potential c...
In this paper we assess polls and prediction markets over a large number of US elections in order to...