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Demand Estimation with Text and Image Data

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  • Giovanni Compiani
  • Ilya Morozov
  • Stephan Seiler

Abstract

We propose a demand estimation method that leverages unstructured text and image data to infer substitution patterns. Using pre-trained deep learning models, we extract embeddings from product images and textual descriptions and incorporate them into a random coefficients logit model. This approach enables researchers to estimate demand even when they lack data on product attributes or when consumers value hard-to-quantify attributes, such as visual design or functional benefits. Using data from a choice experiment, we show that our approach outperforms standard attribute-based models in counterfactual predictions of consumers' second choices. We also apply it across 40 product categories on Amazon and consistently find that text and image data help identify close substitutes within each category.

Suggested Citation

  • Giovanni Compiani & Ilya Morozov & Stephan Seiler, 2025. "Demand Estimation with Text and Image Data," Papers 2503.20711, arXiv.org, revised Mar 2025.
  • Handle: RePEc:arx:papers:2503.20711
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    File URL: http://arxiv.org/pdf/2503.20711
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