Multi-Label Learning from Crowds

Volume: 31, Issue: 7, Pages: 1369 - 1382
Published: Jul 1, 2019
Abstract
We consider multi-label crowdsourcing learning in two scenarios. In the first scenario, we aim at inferring instances' groundtruth given the crowds' annotations. We propose two approaches NAM/RAM (Neighborhood/Relevance Aware Multi-label crowdsourcing) modeling the crowds' expertise and label correlations from different perspectives. Extended from single-label crowdsourcing methods, NAM models the crowds' expertise on individual labels, but...
Paper Details
Title
Multi-Label Learning from Crowds
Published Date
Jul 1, 2019
Volume
31
Issue
7
Pages
1369 - 1382
Citation AnalysisPro
  • Scinapse’s Top 10 Citation Journals & Affiliations graph reveals the quality and authenticity of citations received by a paper.
  • Discover whether citations have been inflated due to self-citations, or if citations include institutional bias.