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Published December 2016 | Submitted + Supplemental Material + Published
Book Section - Chapter Open

Fundamental Limits of Budget-Fidelity Trade-off in Label Crowdsourcing

Abstract

Digital crowdsourcing (CS) is a modern approach to perform certain large projects using small contributions of a large crowd. In CS, a taskmaster typically breaks down the project into small batches of tasks and assigns them to so-called workers with imperfect skill levels. The crowdsourcer then collects and analyzes the results for inference and serving the purpose of the project. In this work, the CS problem, as a human-in-the-loop computation problem, is modeled and analyzed in an information theoretic rate-distortion framework. The purpose is to identify the ultimate fidelity that one can achieve by any form of query from the crowd and any decoding (inference) algorithm with a given budget. The results are established by a joint source channel (de)coding scheme, which represent the query scheme and inference, over parallel noisy channels, which model workers with imperfect skill levels. We also present and analyze a query scheme dubbed k-ary incidence coding and study optimized query pricing in this setting.

Additional Information

© 2005 Neural Information Processing Systems Foundation, Inc.

Attached Files

Published - NIPS-2016-fundamental-limits-of-budget-fidelity-trade-off-in-label-crowdsourcing-Paper.pdf

Submitted - 1608.07328.pdf

Supplemental Material - NIPS-2016-fundamental-limits-of-budget-fidelity-trade-off-in-label-crowdsourcing-Supplemental.zip

Files

1608.07328.pdf

Additional details

Created:
August 19, 2023
Modified:
March 5, 2024