Deep Neural Networks for Choice Analysis: Extracting Complete Economic Information for Interpretation
Shenhao Wang, Qingyi Wang, Jinhua Zhao

TL;DR
This paper shows that deep neural networks can extract comprehensive economic information for choice analysis, comparable to classical models, but face challenges like sensitivity to hyperparameters and model non-identification.
Contribution
It demonstrates that DNNs can provide complete economic insights similar to traditional models and discusses methods to improve their reliability.
Findings
DNNs can extract choice probabilities, market shares, and elasticities.
Aggregated economic information from DNNs is more reliable.
Simple hyperparameter tuning improves DNN reliability.
Abstract
While deep neural networks (DNNs) have been increasingly applied to choice analysis showing high predictive power, it is unclear to what extent researchers can interpret economic information from DNNs. This paper demonstrates that DNNs can provide economic information as complete as classical discrete choice models (DCMs). The economic information includes choice predictions, choice probabilities, market shares, substitution patterns of alternatives, social welfare, probability derivatives, elasticities, marginal rates of substitution (MRS), and heterogeneous values of time (VOT). Unlike DCMs, DNNs can automatically learn the utility function and reveal behavioral patterns that are not prespecified by domain experts. However, the economic information obtained from DNNs can be unreliable because of the three challenges associated with the automatic learning capacity: high sensitivity to…
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Taxonomy
TopicsEconomic and Environmental Valuation · Consumer Market Behavior and Pricing · Energy, Environment, and Transportation Policies
