English

A Marketplace for Data: An Algorithmic Solution

Computer Science and Game Theory 2019-05-14 v4

Abstract

In this work, we aim to design a data marketplace; a robust real-time matching mechanism to efficiently buy and sell training data for Machine Learning tasks. While the monetization of data and pre-trained models is an essential focus of industry today, there does not exist a market mechanism to price training data and match buyers to sellers while still addressing the associated (computational and other) complexity. The challenge in creating such a market stems from the very nature of data as an asset: (i) it is freely replicable; (ii) its value is inherently combinatorial due to correlation with signal in other data; (iii) prediction tasks and the value of accuracy vary widely; (iv) usefulness of training data is difficult to verify a priori without first applying it to a prediction task. As our main contributions we: (i) propose a mathematical model for a two-sided data market and formally define the key associated challenges; (ii) construct algorithms for such a market to function and analyze how they meet the challenges defined. We highlight two technical contributions: (i) a new notion of 'fairness' required for cooperative games with freely replicable goods; (ii) a truthful, zero regret mechanism to auction a class of combinatorial goods based on utilizing Myerson's payment function and the Multiplicative Weights algorithm. These might be of independent interest.

Keywords

Cite

@article{arxiv.1805.08125,
  title  = {A Marketplace for Data: An Algorithmic Solution},
  author = {Anish Agarwal and Munther Dahleh and Tuhin Sarkar},
  journal= {arXiv preprint arXiv:1805.08125},
  year   = {2019}
}
R2 v1 2026-06-23T02:02:51.922Z