Dear colleagues,
on behalf of my co-authors, I am pleased to announce our new publication in
Ecography:

Martino S*, Pace DS*, Moro S, Casoli E, Ventura D, Frachea A, Silvestri M,
Arcangeli A, Giacomini G, Ardizzone G, & Jona-Lasinio G (2021) Integration
of presence-only data from several data sources: A case study on dolphins'
spatial distribution.

*equal contribution

The article is open access and can be found here:
https://onlinelibrary.wiley.com/doi/full/10.1111/ecog.05843

Abstract
Presence-only data are typical occurrence information used in species
distribution modelling. Data may be originated from different sources, and
their integration is a challenging exercise in spatial ecology as detection
biases are rarely fully considered. We propose a new protocol for
presence-only data fusion, where information sources include social media
platforms, to investigate several possible solutions to reduce uncertainty
in the modelling outputs. As a case study, we use spatial data on two
dolphin species with different ecological characteristics and distribution,
collected in central Tyrrhenian through traditional research campaigns and
derived from a careful selection of social media images and videos. We
built a spatial log-Gaussian cox process that incorporates different
detection functions and thinning for each data source. To finalize the
model in a Bayesian framework, we specified priors for all model
parameters. We used slightly informative priors to avoid identifiability
issues when estimating both the animal intensity and the observation
process. We compared different types of detection function and
accessibility explanations. We showed how the detection function's
variation affects ecological findings on two species representatives for
different habitats and with different spatial distribution. Our findings
allow for a sound understanding of the species distribution in the study
area, confirming the proposed approach's appropriateness. Besides, the
straightforward implementation in the R software, and the provision of
examples' code with simulated data, consistently facilitate broader
applicability of the method and allow for further validations. The proposed
approach is widely functional and can be considered with different species
and ecological contexts.

With very best wishes,
Daniela

--
Daniela Silvia Pace, PhD
Department of Environmental Biology
Marine Ecology Lab
Sapienza University of Rome
Viale dell’Università 32
00185 Rome, Italy
mail: [email protected]
mobile: +39 346 1039652
office: +39 06 4991 4763
skype: lagenorinco
Orcid ID: https://orcid.org/0000-0001-5121-7080

[image: Risultati immagini per logo sapienza]

-- 
________________________________________________________
Le informazioni 
contenute in questo messaggio di posta elettronica sono strettamente 
riservate e indirizzate esclusivamente al destinatario. Si prega di non 
leggere, fare copia, inoltrare a terzi o conservare tale messaggio se non 
si è il legittimo destinatario dello stesso. Qualora tale messaggio sia 
stato ricevuto per errore, si prega di restituirlo al mittente e di 
cancellarlo permanentemente dal proprio computer.
The information contained 
in this e mail message is strictly confidential and intended for the use of 
the addressee only.  If you are not the intended recipient, please do not 
read, copy, forward or store it on your computer. If you have received the 
message in error, please forward it back to the sender and delete it 
permanently from your computer system.

-- 

Fai crescere i nostri giovani ricercatori
dona il 5 per mille alla 
Sapienza
*codice fiscale 80209930587*

_______________________________________________
MARMAM mailing list
[email protected]
https://lists.uvic.ca/mailman/listinfo/marmam

Reply via email to