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Diverse randomized agents vote to win

Research output: Contribution in Book/Report/Proceedings - With ISBN/ISSNConference contribution/Paperpeer-review

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Diverse randomized agents vote to win. / Xin Jiang, Albert; Soriano Marcolino, Leandro; Procaccia, Ariel D. et al.
Proceedings of the 28th Neural Information Processing Systems Conference (NIPS 2014). 2014. p. 0-0.

Research output: Contribution in Book/Report/Proceedings - With ISBN/ISSNConference contribution/Paperpeer-review

Harvard

Xin Jiang, A, Soriano Marcolino, L, Procaccia, AD, Sandholm, T, Shah, N & Tambe, M 2014, Diverse randomized agents vote to win. in Proceedings of the 28th Neural Information Processing Systems Conference (NIPS 2014). pp. 0-0. <https://papers.nips.cc/paper/5587-diverse-randomized-agents-vote-to-win>

APA

Xin Jiang, A., Soriano Marcolino, L., Procaccia, A. D., Sandholm, T., Shah, N., & Tambe, M. (2014). Diverse randomized agents vote to win. In Proceedings of the 28th Neural Information Processing Systems Conference (NIPS 2014) (pp. 0-0) https://papers.nips.cc/paper/5587-diverse-randomized-agents-vote-to-win

Vancouver

Xin Jiang A, Soriano Marcolino L, Procaccia AD, Sandholm T, Shah N, Tambe M. Diverse randomized agents vote to win. In Proceedings of the 28th Neural Information Processing Systems Conference (NIPS 2014). 2014. p. 0-0

Author

Xin Jiang, Albert ; Soriano Marcolino, Leandro ; Procaccia, Ariel D. et al. / Diverse randomized agents vote to win. Proceedings of the 28th Neural Information Processing Systems Conference (NIPS 2014). 2014. pp. 0-0

Bibtex

@inproceedings{de5ab1a53b9949678186fb77acbd40e3,
title = "Diverse randomized agents vote to win",
abstract = "We investigate the power of voting among diverse, randomized software agents. With teams of computer Go agents in mind, we develop a novel theoretical model of two-stage noisy voting that builds on recent work in machine learning. This model allows us to reason about a collection of agents with different biases (determined by the first-stage noise models), which, furthermore, apply randomized algorithms to evaluate alternatives and produce votes (captured by the second-stage noise models). We analytically demonstrate that a uniform team, consisting of multiple instances of any single agent, must make a significant number of mistakes, whereas a diverse team converges to perfection as the number of agents grows. Our experiments, which pit teams of computer Go agents against strong agents, provide evidence for the effectiveness of voting when agents are diverse.",
author = "{Xin Jiang}, Albert and {Soriano Marcolino}, Leandro and Procaccia, {Ariel D.} and Tuomas Sandholm and Nisarg Shah and Milind Tambe",
year = "2014",
month = dec,
language = "English",
pages = "0--0",
booktitle = "Proceedings of the 28th Neural Information Processing Systems Conference (NIPS 2014)",

}

RIS

TY - GEN

T1 - Diverse randomized agents vote to win

AU - Xin Jiang, Albert

AU - Soriano Marcolino, Leandro

AU - Procaccia, Ariel D.

AU - Sandholm, Tuomas

AU - Shah, Nisarg

AU - Tambe, Milind

PY - 2014/12

Y1 - 2014/12

N2 - We investigate the power of voting among diverse, randomized software agents. With teams of computer Go agents in mind, we develop a novel theoretical model of two-stage noisy voting that builds on recent work in machine learning. This model allows us to reason about a collection of agents with different biases (determined by the first-stage noise models), which, furthermore, apply randomized algorithms to evaluate alternatives and produce votes (captured by the second-stage noise models). We analytically demonstrate that a uniform team, consisting of multiple instances of any single agent, must make a significant number of mistakes, whereas a diverse team converges to perfection as the number of agents grows. Our experiments, which pit teams of computer Go agents against strong agents, provide evidence for the effectiveness of voting when agents are diverse.

AB - We investigate the power of voting among diverse, randomized software agents. With teams of computer Go agents in mind, we develop a novel theoretical model of two-stage noisy voting that builds on recent work in machine learning. This model allows us to reason about a collection of agents with different biases (determined by the first-stage noise models), which, furthermore, apply randomized algorithms to evaluate alternatives and produce votes (captured by the second-stage noise models). We analytically demonstrate that a uniform team, consisting of multiple instances of any single agent, must make a significant number of mistakes, whereas a diverse team converges to perfection as the number of agents grows. Our experiments, which pit teams of computer Go agents against strong agents, provide evidence for the effectiveness of voting when agents are diverse.

M3 - Conference contribution/Paper

SP - 0

EP - 0

BT - Proceedings of the 28th Neural Information Processing Systems Conference (NIPS 2014)

ER -