Peer prediction refers to a collection of mechanisms for eliciting information from human agents when direct verification of the obtained information is unavailable. They are designed to have a game-theoretic equilibrium where everyone reveals their private information truthfully. This result holds under the assumption that agents are Bayesian and they each adopt a fixed strategy across all tasks. Human agents however are observed in many domains to exhibit learning behavior in sequential settings. In this paper, we explore the dynamics of sequential peer prediction mechanisms when participants are learning agents. We first show that the notion of no regret alone for the agents' learning algorithms cannot guarantee convergence to the truthf...
Collaborative learning techniques have the potential to enable training machine learning models that...
This paper considers no-regret learning for repeated continuous-kernel games with lossy bandit feedb...
We study social learning by boundedly rational agents. Agents take a decision in sequence, after obs...
Peer prediction is the problem of eliciting private, but correlated, information from agents. By rew...
The problem of peer prediction is to elicit information from agents in settings without any objectiv...
Peer prediction mechanisms are often adopted to elicit truthful contributions from crowd workers whe...
We study minimal single-task peer prediction mechanisms that have limited knowledge about agents' be...
International audienceThis paper examines the long-run behavior of learning with bandit feedback in ...
This paper examines the long-run behavior of learning with bandit feedback in non-cooperative concav...
Reputation mechanisms at online opinion forums, such as Amazon Reviews, elicit ratings from users ab...
Peer-prediction is a (meta-)mechanism which, given any proper scoring rule, produces a mechanism to ...
We analyze a model of learning and belief formation in networks in which agents follow Bayes rule ye...
Human computation system, often popularly referred to as crowdsourcing,requires the alignment of the...
- Evaluated how well peer prediction methods elicit truthful subjective feedback from participants t...
Many crowdsourcing applications rely on the truthful elicitation of information from workers; e.g., ...
Collaborative learning techniques have the potential to enable training machine learning models that...
This paper considers no-regret learning for repeated continuous-kernel games with lossy bandit feedb...
We study social learning by boundedly rational agents. Agents take a decision in sequence, after obs...
Peer prediction is the problem of eliciting private, but correlated, information from agents. By rew...
The problem of peer prediction is to elicit information from agents in settings without any objectiv...
Peer prediction mechanisms are often adopted to elicit truthful contributions from crowd workers whe...
We study minimal single-task peer prediction mechanisms that have limited knowledge about agents' be...
International audienceThis paper examines the long-run behavior of learning with bandit feedback in ...
This paper examines the long-run behavior of learning with bandit feedback in non-cooperative concav...
Reputation mechanisms at online opinion forums, such as Amazon Reviews, elicit ratings from users ab...
Peer-prediction is a (meta-)mechanism which, given any proper scoring rule, produces a mechanism to ...
We analyze a model of learning and belief formation in networks in which agents follow Bayes rule ye...
Human computation system, often popularly referred to as crowdsourcing,requires the alignment of the...
- Evaluated how well peer prediction methods elicit truthful subjective feedback from participants t...
Many crowdsourcing applications rely on the truthful elicitation of information from workers; e.g., ...
Collaborative learning techniques have the potential to enable training machine learning models that...
This paper considers no-regret learning for repeated continuous-kernel games with lossy bandit feedb...
We study social learning by boundedly rational agents. Agents take a decision in sequence, after obs...