Type of Document Dissertation Author Bergtold, Jason Scott Author's Email Address email@example.com URN etd-04252004-234233 Title Advances in Applied Econometrics: Binary Discrete Choice Models, Artificial Neural Networks, and Asymmetries in the FAST Multistage Demand System Degree PhD Department Agricultural and Applied Economics Advisory Committee
Advisor Name Title Taylor, Daniel B. Committee Chair Spanos, Aris Committee Co-Chair Bosch, Darrell J. Committee Member McGuirk, Anya M. Committee Member Peterson, Everett B. Committee Member Zobel, Christopher W. Committee Member Keywords
- bernoulli regression model
- logistic regression
- demand elasticities
- artificial neural networks
- contingent valuation
- indirect separability
Date of Defense 2004-04-14 Availability unrestricted Abstract
The dissertation examines advancements in the methods and techniques used in the field of econometrics. These advancements include: (i) a re-examination of the underlying statistical foundations of statistical models with binary dependent variables. (ii) using feed-forward backpropagation artificial neural networks for modeling dichotomous choice processes, and (iii) the estimation of unconditional demand elasticities using the flexible multistage demand system with asymmetric partitions and fixed effects across time.
The first paper re-examines the underlying statistical foundations of statistical models with binary dependent variables using the probabilistic reduction approach. This re-examination leads to the development of the Bernoulli Regression Model, a family of statistical models arising from conditional Bernoulli distributions. The paper provides guidelines for specifying and estimating a Bernoulli Regression Model, as well as, methods for generating and simulating conditional binary choice processes. Finally, the Multinomial Regression Model is presented as a direct extension.
The second paper empirically compares the out-of-sample predictive capabilities of artificial neural networks to binary logit and probit models. To facilitate this comparison, the statistical foundations of dichotomous choice models and feed-forward backpropagation artificial neural networks (FFBANNs) are re-evaluated. Using contingent valuation survey data, the paper shows that FFBANNs provide an alternative to the binary logit and probit models with linear index functions. Direct comparisons between the models showed that the FFBANNs performed marginally better than the logit and probit models for a number of within-sample and out-of-sample performance measures, but in the majority of cases these differences were not statistically significant. In addition, guidelines for modeling contingent valuation survey data and techniques for estimating median WTP measures using FFBANNs are examined.
The third paper estimates a set of unconditional price and expenditure elasticities for 49 different processed food categories using scanner data and the flexible and symmetric translog (FAST) multistage demand system. Due to the use of panel data and the presence of heterogeneity across time, temporal fixed effects were incorporated into the model. Overall, estimated price elasticities are larger, in absolute terms, than previous estimates. The use of disaggregated product groupings, scanner data, and the estimation of unconditional elasticities likely accounts for these differences.
Filename Size Approximate Download Time (Hours:Minutes:Seconds)
28.8 Modem 56K Modem ISDN (64 Kb) ISDN (128 Kb) Higher-speed Access Bergtold_ETD_2004.pdf 980.14 Kb 00:04:32 00:02:20 00:02:02 00:01:01 00:00:05 Bergtold_Vita_2004.pdf 15.70 Kb 00:00:04 00:00:02 00:00:01 < 00:00:01 < 00:00:01
If you have questions or technical problems, please Contact DLA.