A Collaborative Mechanism for Crowdsourcing Prediction Problems
Abstract
Machine Learning competitions such as the Netflix Prize have proven reasonably successful as a method of "crowdsourcing" prediction tasks. But these competitions have a number of weaknesses, particularly in the incentive structure they create for the participants. We propose a new approach, called a Crowdsourced Learning Mechanism, in which participants collaboratively "learn" a hypothesis for a given prediction task. The approach draws heavily from the concept of a prediction market, where traders bet on the likelihood of a future event. In our framework, the mechanism continues to publish the current hypothesis, and participants can modify this hypothesis by wagering on an update. The critical incentive property is that a participant will profit an amount that scales according to how much her update improves performance on a released test set.
Cite
@article{arxiv.1111.2664,
title = {A Collaborative Mechanism for Crowdsourcing Prediction Problems},
author = {Jacob Abernethy and Rafael M. Frongillo},
journal= {arXiv preprint arXiv:1111.2664},
year = {2011}
}
Comments
Full version of the extended abstract which appeared in NIPS 2011