Delphos: A reinforcement learning framework for assisting discrete choice model specification
Gabriel Nova, Stephane Hess, Sander van Cranenburgh

TL;DR
Delphos is a deep reinforcement learning framework designed to automate and improve the process of specifying discrete choice models by learning optimal modelling decisions through interaction with data.
Contribution
It introduces a novel RL-based approach that conceptualizes model specification as a sequential decision-making process, enabling automated, data-driven model development.
Findings
Delphos effectively learns to propose high-performing models in simulated environments.
The framework generates competitive models on empirical datasets.
It reduces the manual effort in discrete choice model specification.
Abstract
We introduce Delphos, a deep reinforcement learning framework for assisting the discrete choice model specification process. Delphos aims to support the modeller by providing automated, data-driven suggestions for utility specifications, thereby reducing the effort required to develop and refine utility functions. Delphos conceptualises model specification as a sequential decision-making problem, inspired by the way human choice modellers iteratively construct models through a series of reasoned specification decisions. In this setting, an agent learns to specify high-performing candidate models by choosing a sequence of modelling actions, such as selecting variables, accommodating both generic and alternative-specific taste parameters, applying non-linear transformations, and including interactions with covariates, while interacting with a modelling environment that estimates each…
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Taxonomy
TopicsAdvanced Causal Inference Techniques · Consumer Market Behavior and Pricing · Recommender Systems and Techniques
