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19. Using Machine Learning to Understand Bargaining Experiments

  • 2022
  • OriginalPaper
  • Chapter
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Abstract

This chapter delves into the application of machine learning to understand bargaining experiments, particularly those involving private information about the size of the bargained item. It discusses the history of bargaining experiments, the challenges posed by private information, and the potential of machine learning to enhance bargaining efficiency. By employing machine learning techniques, the authors predict bargaining outcomes more accurately than traditional methods, highlighting the value of process data in making predictions. The chapter also explores the dynamics of unstructured bargaining and the role of initial offers and deadlines in predicting bargaining success. The findings replicate previous results and suggest new avenues for future research in both theoretical and experimental economics.

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Title
Using Machine Learning to Understand Bargaining Experiments
Authors
Colin F. Camerer
Hung-Ni Chen
Po-Hsuan Lin
Gideon Nave
Alec Smith
Joseph Tao-yi Wang
Copyright Year
2022
DOI
https://doi.org/10.1007/978-3-030-76666-5_19
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