Wild Pollinator Count Nieuwegein的日誌

期刊歸檔用於 2023年9月

2023年09月23日

iNaturalist, A Cultivator of Community and Collector of Crucial Wildlife Data, Goes Solo

iNaturalist, A Cultivator of Community and Collector of Crucial Wildlife Data, Goes Solo

https://podcasts.google.com/feed/aHR0cHM6Ly9mZWVkcy5tZWdhcGhvbmUuZm0vS1FJTkM5NTU3MzgxNjMz/episode/Yjk1NzYzODItNThiYi0xMWVlLTg5OGEtOWYxNGY4MGVmYzUy?sa=X&ved=0CAIQuIEEahcKEwjQiJzrycCBAxUAAAAAHQAAAAAQLA

Heb je ooit een raar insect of plant gezien en gedacht: “Oh mijn God. Wat is dat?" Dan is iNaturalist, een uitvinding uit California, het sociale platform voor jou. Begonnen als een schoolproject, ontvangt het nu honderdduizenden maandelijkse natuurwaarnemingen van natuurliefhebbers over de hele wereld. Gebruikers plaatsen foto's van wat ze hebben gezien en waar ze het hebben gevonden, en mede-burgerwetenschappers, en vaak echte wetenschappers, helpen bij het determineren van de flora, fauna en habitat. Sommige iNaturalist-liefhebbers hebben zelfs nieuwe soorten geïdentificeerd. Nu wordt de site onafhankelijk met behulp van een subsidie ​​van $10 miljoen. We zullen het verleden en de toekomst onderzoeken van deze opmerkelijke Bay Area-bijdrage aan ons collectieve begrip van de wereld.

Gasten:
Ken-ichi Ueda, co-director, iNaturalist
Scott Loarie, co-director, iNaturalist
Jennifer Rycenga, professor emeritus in the Humanities Department, San Jose State University; former president of the Sequoia Audubon Society in San Mateo.
Prakrit Jain, student of evolutionary biology, University of California, Berkeley

由使用者 optilete optilete2023年09月23日 11:06 所貼文 | 0 評論 | 留下評論

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@cthawley I agree that the model makes assumptions about species absences that might not be correct, there may be biases that aren't being fully accounted for, and uncertainty/error in those predictions is much large in places that are not well sampled (both errors of commission and errors of omission) - and explicitly modeling probability of being observed separate from probability of occurrence is probably a good future direction to better deal with these biases.

@pfau_tarleton you can read more about the methodology here and here. If you pull out the deep learning location encoding which essentially allows each species to draw on information from all the other species the model collapses to Logistic Regression niche model (LR in Table 1 in the first paper). But a huge part of the strength of this approach as opposed to a single species niche model is that the species learns from all other 80k species being modeled (much like the Computer Vision Model) so the model gets a good sense for co-occurrence, biogeography and the kind of things species distributions tend to do without having to rely so much on environmental covariates alone as a crutch as traditional niche models do. This is why the predictions are pretty good using just elevation as a covariate and not including other typical covariates like precipitation etc. We tested adding those covariates and didn't get significant improvement but made the model more complicated.

I agree this is just a baby step though, lots of avenues for improvement, and different approaches might be needed to push these into other applications and scales. We're focused on improving computer vision suggestions at the moment even though I'm also excited by some of these future directions.

由使用者 optilete optilete2023年09月23日 20:33 所貼文 | 0 評論 | 留下評論