Literature DB >> 28951893

Optimizing Open-Ended Crowdsourcing: The Next Frontier in Crowdsourced Data Management.

Aditya Parameswaran1, Akash Das Sarma2, Vipul Venkataraman1.   

Abstract

Crowdsourcing is the primary means to generate training data at scale, and when combined with sophisticated machine learning algorithms, crowdsourcing is an enabler for a variety of emergent automated applications impacting all spheres of our lives. This paper surveys the emerging field of formally reasoning about and optimizing open-ended crowdsourcing, a popular and crucially important, but severely understudied class of crowdsourcing-the next frontier in crowdsourced data management. The underlying challenges include distilling the right answer when none of the workers agree with each other, teasing apart the various perspectives adopted by workers when answering tasks, and effectively selecting between the many open-ended operators appropriate for a problem. We describe the approaches that we've found to be effective for open-ended crowdsourcing, drawing from our experiences in this space.

Entities:  

Year:  2016        PMID: 28951893      PMCID: PMC5610657     

Source DB:  PubMed          Journal:  Bull Tech Comm Data Eng


  3 in total

1.  Towards Globally Optimal Crowdsourcing Quality Management: The Uniform Worker Setting.

Authors:  Akash Das Sarma; Aditya Parameswaran; Jennifer Widom
Journal:  Proc ACM SIGMOD Int Conf Manag Data       Date:  2016 Jun-Jul

2.  Debiasing Crowdsourced Batches.

Authors:  Honglei Zhuang; Aditya Parameswaran; Dan Roth; Jiawei Han
Journal:  KDD       Date:  2015-08

3.  Surpassing Humans and Computers with JellyBean: Crowd-Vision-Hybrid Counting Algorithms.

Authors:  Akash Das Sarma; Ayush Jain; Arnab Nandi; Aditya Parameswaran; Jennifer Widom
Journal:  Proc AAAI Conf Hum Comput Crowdsourc       Date:  2015-11
  3 in total

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