Logistic mixtures vs. Markov chain Monte Carlo
Economic time series models and innovations have undergone through tremendous changes over the years, thus providing answers to some of the unsolvable problems. With regime switching time series models, simulated data is used to compare the unobserved state vector if it follows a Markov Chain Monte...
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oai:animorepository.dlsu.edu.ph:etd_bachelors-56082021-03-25T08:34:59Z Logistic mixtures vs. Markov chain Monte Carlo De Leon, Karmello Juan C. Go, Angelie L. Economic time series models and innovations have undergone through tremendous changes over the years, thus providing answers to some of the unsolvable problems. With regime switching time series models, simulated data is used to compare the unobserved state vector if it follows a Markov Chain Monte Carlo or a Logistic Mixture Process. By using OpenBUGS, results for Markov Chain Monte Carlo are obtained. Also, by using Statistica and EVIEWS, results for Logistic Mixture Model are obtained. AR(1) is then applied to the real data to determine the existence of regimes.;"This paper is based on the comparison of regime switching models by Paliouras (2007) entitled Comparing Regime-Switching Models in Time Series: Logistic Mixtures vs. Markov switching. " 2008-01-01T08:00:00Z text https://animorepository.dlsu.edu.ph/etd_bachelors/5070 Bachelor's Theses English Animo Repository Monte Carlo method Markov processes Statistics and Probability |
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Monte Carlo method Markov processes Statistics and Probability De Leon, Karmello Juan C. Go, Angelie L. Logistic mixtures vs. Markov chain Monte Carlo |
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Economic time series models and innovations have undergone through tremendous changes over the years, thus providing answers to some of the unsolvable problems. With regime switching time series models, simulated data is used to compare the unobserved state vector if it follows a Markov Chain Monte Carlo or a Logistic Mixture Process. By using OpenBUGS, results for Markov Chain Monte Carlo are obtained. Also, by using Statistica and EVIEWS, results for Logistic Mixture Model are obtained. AR(1) is then applied to the real data to determine the existence of regimes.;"This paper is based on the comparison of regime switching models by Paliouras (2007) entitled Comparing Regime-Switching Models in Time Series: Logistic Mixtures vs. Markov switching. " |
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De Leon, Karmello Juan C. Go, Angelie L. |
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De Leon, Karmello Juan C. Go, Angelie L. |
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De Leon, Karmello Juan C. |
title |
Logistic mixtures vs. Markov chain Monte Carlo |
title_short |
Logistic mixtures vs. Markov chain Monte Carlo |
title_full |
Logistic mixtures vs. Markov chain Monte Carlo |
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Logistic mixtures vs. Markov chain Monte Carlo |
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Logistic mixtures vs. Markov chain Monte Carlo |
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logistic mixtures vs. markov chain monte carlo |
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