A Human/Computer Learning Network to Improve Biodiversity Conservation and Research

Kelling, Steve (Cornell University) | Gerbracht, Jeff (Cornell University) | Fink, Daniel (Cornell University) | Lagoze, Carl (Cornell University) | Wong, Weng-Keen (Oregon State University) | Yu, Jun (Oregon State University) | Damoulas, Theodoros (Cornell University) | Gomes, Carla (Cornell University)

AI Magazine 

Alternatively, the web can be used to engage volunteers to actively collect data and submit it to central data repositories. Human observers and AI processes synergistically improve the overall quality of the entire system. Additionally, AI is used to generate analyses. These analyses also improve as the quantity and quality of the incoming data improves. By guiding Now systems are being developed that employ observers with immediate feedback on both human and mechanical computation to solve observation accuracy AI processes contribute to complex problems through active learning and advancing observer expertise. These human/computer learning observer data quality improves, the training data networks (HCLNs) can leverage the contributions on which the AI processes make their decisions of broad recruitment of human observers and also improves.

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