IMDEA Networks Institute Publications Repository

Reputation-based Mechanisms for Evolutionary Master-Worker Computing

Christoforou, Evgenia and Fernández Anta, Antonio and Georgiou, Chryssis and Mosteiro, Miguel A. and Sánchez, Ángel (2013) Reputation-based Mechanisms for Evolutionary Master-Worker Computing. In: The 17th International Conference On Principles Of DIstributed Systems (OPODIS 2013), 16-18 Dec 2013, Nice, France.

PDF (Reputation-based Mechanisms for Evolutionary Master-Worker Computing) - Published Version
Download (453Kb) | Preview


We consider Internet-based Master-Worker task computing systems,such as SETI@home, where a master sends tasks to potentially unreliable workers, and the workers execute and report back the result. We model such computations using evolutionary dynamics and consider three type of workers: altruistic,malicious and rational. Altruistic workers always compute and return the correct result, malicious workers always return an incorrect result, and rational(selfish)workers decide to be truthful or to cheat, based on the strategy that increases their benefit. The goal of the master is to reach eventual correctness, that is, reach a state of the computation that always receives the correct results. To this respect, we propose a mechanism that uses reinforcement learning to induce a correct behavior to rational workers; to cope with malice we employ reputation schemes.We analyze our reputation-based mechanism modeling it as a Markov chain and we give provable guarantees under which truthful behavior can be ensured. Simulation results, obtained using parameter values that are likely to occur in practice, reveal interesting trade-offs between various metrics, parameters and reputation types, affecting cost, time of convergence to a truthful behavior and tolerance to cheaters.

Item Type: Conference or Workshop Papers (Paper)
Depositing User: Evgenia Christoforou
Date Deposited: 21 Nov 2013 13:24
Last Modified: 30 Nov 2016 12:00

Actions (login required)

View Item View Item