Knowledge Learning with Crowdsourcing: A Brief Review and Systematic
Perspective
- URL: http://arxiv.org/abs/2206.09315v1
- Date: Sun, 19 Jun 2022 03:06:23 GMT
- Title: Knowledge Learning with Crowdsourcing: A Brief Review and Systematic
Perspective
- Authors: Jing Zhang
- Abstract summary: This concentrated survey paper comprehensively reviews the technical progress in crowdsourcing learning from a systematic perspective.
The paper places a particular emphasis on providing some promising blueprints on each dimension as well as discussing the lessons learned from our past research work.
- Score: 6.724831294165237
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Big data have the characteristics of enormous volume, high velocity,
diversity, value-sparsity, and uncertainty, which lead the knowledge learning
from them full of challenges. With the emergence of crowdsourcing, versatile
information can be obtained on-demand so that the wisdom of crowds is easily
involved to facilitate the knowledge learning process. During the past thirteen
years, researchers in the AI community made great efforts to remove the
obstacles in the field of learning from crowds. This concentrated survey paper
comprehensively reviews the technical progress in crowdsourcing learning from a
systematic perspective that includes three dimensions of data, models, and
learning processes. In addition to reviewing existing important work, the paper
places a particular emphasis on providing some promising blueprints on each
dimension as well as discussing the lessons learned from our past research
work, which will light up the way for new researchers and encourage them to
pursue new contributions.
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