Abstract We consider schemes for obtaining truthful reports on a common but hidden signal from large groups of rational, self-interested agents. One example are online feedback mechanisms, where users provide observations about the quality of a product or service so that other users can have an accurate idea of what quality they can expect. However, (i) providing such feedback is costly, and (ii) there are many motivations for providing incorrect feedback. Both problems can be addressed by reward schemes which (i) cover the cost of obtaining and reporting feedback, and (ii) maximize the expected reward of a rational agent who reports truthfully. We address the design of such incentive-compatible rewards for feedback generated in environment...
In this paper, we propose a new mechanism - the Disagreement Mechanism - which elicits privately-hel...
The modern web critically depends on aggregation of information from self-interested agents, for exa...
AbstractWe initiate the study of incentives in a general machine learning framework. We focus on a g...
Agent reporting systems, such as reputation systems and crowdsourcing platforms, provide opportuniti...
Agent reporting systems, such as reputation systems and crowdsourcing platforms, pro-vide opportunit...
Online reputation mechanisms need honest feedback to func-tion effectively. Self interested agents r...
Abstract—The success of current trust and reputation systems is on the premise that truthful feedbac...
This thesis addresses challenges in elicitation and aggregation of crowd information for settings wh...
AbstractWe study the computational aspects of information elicitation mechanisms in which a principa...
We propose a mechanism for providing the incentives for reporting truthful feedback in a peer-to-pee...
Reputation mechanisms offer an effective alternative to verification authorities for build-ing trust...
Abstract—We consider a distributed multi-user system where individual entities possess observations ...
We propose a mechanism for providing the incentives for reporting truthful feedback in a peer-to-pee...
Reputation mechanisms offer an efficient way of building the necessary level of trust in electronic ...
Abstract We propose a mechanism for providing the incentives for reporting truthful feedback in a pe...
In this paper, we propose a new mechanism - the Disagreement Mechanism - which elicits privately-hel...
The modern web critically depends on aggregation of information from self-interested agents, for exa...
AbstractWe initiate the study of incentives in a general machine learning framework. We focus on a g...
Agent reporting systems, such as reputation systems and crowdsourcing platforms, provide opportuniti...
Agent reporting systems, such as reputation systems and crowdsourcing platforms, pro-vide opportunit...
Online reputation mechanisms need honest feedback to func-tion effectively. Self interested agents r...
Abstract—The success of current trust and reputation systems is on the premise that truthful feedbac...
This thesis addresses challenges in elicitation and aggregation of crowd information for settings wh...
AbstractWe study the computational aspects of information elicitation mechanisms in which a principa...
We propose a mechanism for providing the incentives for reporting truthful feedback in a peer-to-pee...
Reputation mechanisms offer an effective alternative to verification authorities for build-ing trust...
Abstract—We consider a distributed multi-user system where individual entities possess observations ...
We propose a mechanism for providing the incentives for reporting truthful feedback in a peer-to-pee...
Reputation mechanisms offer an efficient way of building the necessary level of trust in electronic ...
Abstract We propose a mechanism for providing the incentives for reporting truthful feedback in a pe...
In this paper, we propose a new mechanism - the Disagreement Mechanism - which elicits privately-hel...
The modern web critically depends on aggregation of information from self-interested agents, for exa...
AbstractWe initiate the study of incentives in a general machine learning framework. We focus on a g...