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Approval Voting and Incentives in Crowdsourcing
v1v2v3 (latest)

Approval Voting and Incentives in Crowdsourcing

19 February 2015
Nihar B. Shah
Dengyong Zhou
Yuval Peres
ArXiv (abs)PDFHTML

Papers citing "Approval Voting and Incentives in Crowdsourcing"

17 / 17 papers shown
Multi-Party Data Pricing for Complex Data Trading Markets: A Rubinstein Bargaining Approach
Multi-Party Data Pricing for Complex Data Trading Markets: A Rubinstein Bargaining Approach
Bing Mi
Zhengwang Han
Kongyang Chen
280
0
0
22 Feb 2025
Multi-winner Approval Voting Goes Epistemic
Multi-winner Approval Voting Goes EpistemicConference on Uncertainty in Artificial Intelligence (UAI), 2022
Tahar Allouche
J. Lang
Florian Yger
178
2
0
17 Jan 2022
Truth-tracking via Approval Voting: Size Matters
Truth-tracking via Approval Voting: Size Matters
Tahar Allouche
J. Lang
Florian Yger
154
8
0
07 Dec 2021
Incentivizing an Unknown Crowd
Incentivizing an Unknown Crowd
Jing Dong
Shuai Li
Baoxiang Wang
OffRL
114
0
0
09 Sep 2021
Data Pricing in Machine Learning Pipelines
Data Pricing in Machine Learning Pipelines
Zicun Cong
Xuan Luo
Jian Pei
Feida Zhu
Yong Zhang
279
70
0
18 Aug 2021
Unsatisfied Today, Satisfied Tomorrow: a simulation framework for
  performance evaluation of crowdsourcing-based network monitoring
Unsatisfied Today, Satisfied Tomorrow: a simulation framework for performance evaluation of crowdsourcing-based network monitoringComputer Communications (Comput. Commun.), 2020
Andrea Pimpinella
Marianna Repossi
A. Redondi
119
6
0
30 Oct 2020
Denoising Multi-Source Weak Supervision for Neural Text Classification
Denoising Multi-Source Weak Supervision for Neural Text ClassificationFindings (Findings), 2020
Wendi Ren
Yinghao Li
Hanting Su
David Kartchner
Cassie S. Mitchell
Chao Zhang
NoLa
325
75
0
09 Oct 2020
Joint Multi-Dimensional Model for Global and Time-Series Annotations
Joint Multi-Dimensional Model for Global and Time-Series AnnotationsIEEE Transactions on Affective Computing (IEEE TAC), 2020
Anil Ramakrishna
Rahul Gupta
Shrikanth Narayanan
84
4
0
06 May 2020
Practice of Efficient Data Collection via Crowdsourcing at Large-Scale
Practice of Efficient Data Collection via Crowdsourcing at Large-Scale
Alexey Drutsa
V. Farafonova
Valentina Fedorova
Olga Megorskaya
Evfrosiniya Zerminova
Olga Zhilinskaya
145
14
0
10 Dec 2019
Rewarding High-Quality Data via Influence Functions
Rewarding High-Quality Data via Influence Functions
A. Richardson
Aris Filos-Ratsikas
Boi Faltings
FedMLTDI
181
43
0
30 Aug 2019
Uncertainty about Uncertainty: Optimal Adaptive Algorithms for
  Estimating Mixtures of Unknown Coins
Uncertainty about Uncertainty: Optimal Adaptive Algorithms for Estimating Mixtures of Unknown Coins
Jasper C. H. Lee
Paul Valiant
267
2
0
19 Apr 2019
A Technical Survey on Statistical Modelling and Design Methods for
  Crowdsourcing Quality Control
A Technical Survey on Statistical Modelling and Design Methods for Crowdsourcing Quality Control
Yuan Jin
Mark J. Carman
Ye Zhu
Yong Xiang
210
40
0
05 Dec 2018
Unlearn What You Have Learned: Adaptive Crowd Teaching with
  Exponentially Decayed Memory Learners
Unlearn What You Have Learned: Adaptive Crowd Teaching with Exponentially Decayed Memory Learners
Yao Zhou
A. R. Nelakurthi
Jingrui He
202
39
0
17 Apr 2018
Adaptive Matching for Expert Systems with Uncertain Task Types
Adaptive Matching for Expert Systems with Uncertain Task Types
Virag Shah
Lennart Gulikers
Laurent Massoulie
Milan Vojnović
196
22
0
02 Mar 2017
Avoiding Imposters and Delinquents: Adversarial Crowdsourcing and Peer
  Prediction
Avoiding Imposters and Delinquents: Adversarial Crowdsourcing and Peer Prediction
Jacob Steinhardt
Gregory Valiant
Moses Charikar
289
46
0
16 Jun 2016
Parametric Prediction from Parametric Agents
Parametric Prediction from Parametric Agents
Yuan Luo
Nihar B. Shah
Jianwei Huang
J. Walrand
220
18
0
24 Feb 2016
Double or Nothing: Multiplicative Incentive Mechanisms for Crowdsourcing
Double or Nothing: Multiplicative Incentive Mechanisms for CrowdsourcingJournal of machine learning research (JMLR), 2014
Nihar B. Shah
Dengyong Zhou
FedML
458
110
0
06 Aug 2014
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