Concepedia

Concept

human-in-the-loop machine learning

Parents

121

Publications

8.9K

Citations

417

Authors

179

Institutions

About

Human-in-the-loop machine learning is a methodological paradigm that deliberately incorporates human intelligence into the machine learning process, establishing an iterative cycle of model training and refinement through direct human interaction and feedback. This concept investigates the synergistic integration of human cognitive abilities and computational power to enhance learning performance, particularly in tasks where data is scarce, ambiguous, or requires domain expertise for accurate labeling or validation. Key characteristics include the iterative nature of the feedback loop, the active role of humans in providing annotations, corrections, or evaluations, and the system's ability to leverage this human input to improve model accuracy, robustness, or decision-making. Its significance lies in enabling the development of more accurate and reliable AI systems by efficiently utilizing human expertise to overcome limitations in data availability or purely automated learning processes.

Top Authors

Rankings shown are based on concept H-Index.

SA

Microsoft (United States)

EM

Universidade da Coruña

EH

Universidade da Coruña

JB

Universidade da Coruña

DA

Universidade da Coruña

Top Institutions

Rankings shown are based on concept H-Index.

University of Washington

Seattle, United States

Pittsburgh, United States

Microsoft (United States)

Redmond, United States

Georgia Institute of Technology

Atlanta, United States

Goldsmiths University of London

London, United Kingdom