Discrete choice modeling in Python with large datasets & models - Assortment & Pricing Optimization .
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Updated
Jun 2, 2025 - Python
Discrete choice modeling in Python with large datasets & models - Assortment & Pricing Optimization .
Computational graph-based discrete choice models
Estimation of Gaussian Process - Latent Class Choice Models (GP-LCCM) using the Expectation Maximization (EM) algorithm
This library simulates the inventory control problem of perishable products by means of Discrete Choice Methods (DCM)
Supplementary Code and Data for "Network Formation and Dynamics among Multi-LLMs"
Python implementation of Multinomial Logit Model
Estimation of Gaussian Bernoulli Mixture - Latent Class Choice Models (GBM-LCCM) using the Expectation Maximization (EM) algorithm
Provide a Stated Preference (SP) Survey analysis focusing separately on experimental design, questionnaire creation and SP econometrical analysis
This work pertains to detailed analysis, through survey in and around Kolkata region, of the existing Multi-Dimensional Poverty Index used by India to calculate the level of poverty at individual, state and nation level.
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