This paper utilizes a novel data on consumer choice under uncertainty, obtained in a laboratory experiment in order to gain substantive knowledge of individual decision-making and to test the best modeling strategy. We compare the performance of logistic regression, discriminant analysis, naïve Bayes classifier, neural network, decision tree, and Random Forest (RF) to discover that the RF model robustly registers the highest classification accuracy. This model also reveals that apart from demographic and situational factors, consumer choice is highly dependent on social network effects
A model is proposed in which stochastic choice results from noise in cognitive processing rather tha...
Thesis (Ph.D.), School of Economic Sciences, Washington State UniversityThe first chapter provides t...
Every day consumers make decisions on whether or not to buy a product. In some cases the decision is...
This paper utilizes a novel data on consumer choice under uncertainty, obtained in a laboratory expe...
Conventional econometric models, such as discriminant analysis and logistic regression have been use...
Since its inception, the choice modelling field has been dominated by theory-driven modelling approa...
This dissertation presents three independent essays in microeconomic theory. Chapter 1 suggests an a...
Abstract: Conventional econometric models, such as discriminant analysis and logistic regression hav...
Forecasting economic behaviour is an important problem with practical implications for a number of s...
While deep neural networks (DNNs) have been increasingly applied to choice analysis showing high pre...
Artificial Intelligence in form of Machine Learning classifiers is increasingly applied for travel c...
Poor decisions and selfish behaviors give rise to seemingly intractable global problems, such as the...
My dissertation lies at the intersection of computer science and the decision sciences. With psychol...
This dissertation studies individual decision making over risky assets in the context of choices fro...
This is an open access journal. Available from www.proceedings.bas.bgForecasting economic behaviour ...
A model is proposed in which stochastic choice results from noise in cognitive processing rather tha...
Thesis (Ph.D.), School of Economic Sciences, Washington State UniversityThe first chapter provides t...
Every day consumers make decisions on whether or not to buy a product. In some cases the decision is...
This paper utilizes a novel data on consumer choice under uncertainty, obtained in a laboratory expe...
Conventional econometric models, such as discriminant analysis and logistic regression have been use...
Since its inception, the choice modelling field has been dominated by theory-driven modelling approa...
This dissertation presents three independent essays in microeconomic theory. Chapter 1 suggests an a...
Abstract: Conventional econometric models, such as discriminant analysis and logistic regression hav...
Forecasting economic behaviour is an important problem with practical implications for a number of s...
While deep neural networks (DNNs) have been increasingly applied to choice analysis showing high pre...
Artificial Intelligence in form of Machine Learning classifiers is increasingly applied for travel c...
Poor decisions and selfish behaviors give rise to seemingly intractable global problems, such as the...
My dissertation lies at the intersection of computer science and the decision sciences. With psychol...
This dissertation studies individual decision making over risky assets in the context of choices fro...
This is an open access journal. Available from www.proceedings.bas.bgForecasting economic behaviour ...
A model is proposed in which stochastic choice results from noise in cognitive processing rather tha...
Thesis (Ph.D.), School of Economic Sciences, Washington State UniversityThe first chapter provides t...
Every day consumers make decisions on whether or not to buy a product. In some cases the decision is...