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Implementing a Hierarchical Deep Learning Approach for Simulating Multi-Level Auction Data

General Economics 2024-11-13 v4 Economics

Abstract

We present a deep learning solution to address the challenges of simulating realistic synthetic first-price sealed-bid auction data. The complexities encountered in this type of auction data include high-cardinality discrete feature spaces and a multilevel structure arising from multiple bids associated with a single auction instance. Our methodology combines deep generative modeling (DGM) with an artificial learner that predicts the conditional bid distribution based on auction characteristics, contributing to advancements in simulation-based research. This approach lays the groundwork for creating realistic auction environments suitable for agent-based learning and modeling applications. Our contribution is twofold: we introduce a comprehensive methodology for simulating multilevel discrete auction data, and we underscore the potential of DGM as a powerful instrument for refining simulation techniques and fostering the development of economic models grounded in generative AI.

Keywords

Cite

@article{arxiv.2207.12255,
  title  = {Implementing a Hierarchical Deep Learning Approach for Simulating Multi-Level Auction Data},
  author = {Igor Sadoune and Andrea Lodi and Marcelin Joanis},
  journal= {arXiv preprint arXiv:2207.12255},
  year   = {2024}
}
R2 v1 2026-06-25T01:12:30.040Z