Peer prediction mechanisms are often adopted to elicit truthful contributions from crowd workers when no ground-truth verification is available. Recently, mechanisms of this type have been developed to incentivize effort exertion, in addition to truthful elicitation. In this paper, we study a sequential peer prediction problem where a data requester wants to dynamically determine the reward level to optimize the trade-off between the quality of information elicited from workers and the total expected payment. In this problem, workers have homogeneous expertise and heterogeneous cost for exerting effort, both unknown to the requester. We propose a sequential posted-price mechanism to dynamically learn the optimal reward level from workers' c...
Agents are asked to rank two objects in a setting where effort is costly and agents differ in qualit...
My dissertation is on crowdsourcing---using crowds of people to accomplish tasks that are impractica...
Collecting subjective information from multiple parties is a common problem in collective intelligen...
Peer prediction mechanisms are often adopted to elicit truthful contributions from crowd workers whe...
In crowdsourcing when there is a lack of verification for contributed answers, output agreement mech...
Human computation system, often popularly referred to as crowdsourcing,requires the alignment of the...
We study minimal single-task peer prediction mechanisms that have limited knowledge about agents' be...
We study a problem of optimal information gathering from multiple data providers that need to be inc...
We study a problem of optimal information gathering from multiple data providers that need to be inc...
Many crowdsourcing applications rely on the truthful elicitation of information from workers; e.g., ...
The problem of peer prediction is to elicit information from agents in settings without any objectiv...
Peer prediction refers to a collection of mechanisms for eliciting information from human agents whe...
Peer prediction is the problem of eliciting private, but correlated, information from agents. By rew...
Peer-prediction is a (meta-)mechanism which, given any proper scoring rule, produces a mechanism to ...
What price should be offered to a worker for a task in an online labor market? How can one enable wo...
Agents are asked to rank two objects in a setting where effort is costly and agents differ in qualit...
My dissertation is on crowdsourcing---using crowds of people to accomplish tasks that are impractica...
Collecting subjective information from multiple parties is a common problem in collective intelligen...
Peer prediction mechanisms are often adopted to elicit truthful contributions from crowd workers whe...
In crowdsourcing when there is a lack of verification for contributed answers, output agreement mech...
Human computation system, often popularly referred to as crowdsourcing,requires the alignment of the...
We study minimal single-task peer prediction mechanisms that have limited knowledge about agents' be...
We study a problem of optimal information gathering from multiple data providers that need to be inc...
We study a problem of optimal information gathering from multiple data providers that need to be inc...
Many crowdsourcing applications rely on the truthful elicitation of information from workers; e.g., ...
The problem of peer prediction is to elicit information from agents in settings without any objectiv...
Peer prediction refers to a collection of mechanisms for eliciting information from human agents whe...
Peer prediction is the problem of eliciting private, but correlated, information from agents. By rew...
Peer-prediction is a (meta-)mechanism which, given any proper scoring rule, produces a mechanism to ...
What price should be offered to a worker for a task in an online labor market? How can one enable wo...
Agents are asked to rank two objects in a setting where effort is costly and agents differ in qualit...
My dissertation is on crowdsourcing---using crowds of people to accomplish tasks that are impractica...
Collecting subjective information from multiple parties is a common problem in collective intelligen...