We’re applying this method to 600+ alien amphibians and reptiles 🦎🐸 to map their global invasion potential & understand global biotic homogenization 🌍
(8/8)
We’re applying this method to 600+ alien amphibians and reptiles 🦎🐸 to map their global invasion potential & understand global biotic homogenization 🌍
(8/8)
We sub-sample both presences & backgrounds across the full environmental gradient available to a species.
This helps SDMs better:
📌 Explain niches
📍 Predict current distributions
🕰️ Project future/range-shifting scenarios
(7/8)
We sub-sample both presences & backgrounds across the full environmental gradient available to a species.
This helps SDMs better:
📌 Explain niches
📍 Predict current distributions
🕰️ Project future/range-shifting scenarios
(7/8)
Goal: Predict the global invaded range of the cane toad 🐸
Data:
🇧🇷 1000 records from native Brazil
🇦🇺 2000 from invaded Australia
🇵🇭 100 from invaded Philippines
👉 All thinned using standard methods (SOA)
Result: SDMs accurately predicted AU and BR(overfit), but mehhh in PH
(5/8)
Goal: Predict the global invaded range of the cane toad 🐸
Data:
🇧🇷 1000 records from native Brazil
🇦🇺 2000 from invaded Australia
🇵🇭 100 from invaded Philippines
👉 All thinned using standard methods (SOA)
Result: SDMs accurately predicted AU and BR(overfit), but mehhh in PH
(5/8)
Apply 'Habitat Stratified Sampling Design' when thinning both data.
Our new methods:
1️⃣ Environmental clustering
2️⃣ Environmental distance thinning
Both outperform conventional approaches for:
🌍 Explaining
📍 Predicting
⏳ Projecting species distributions
(3/8)
Apply 'Habitat Stratified Sampling Design' when thinning both data.
Our new methods:
1️⃣ Environmental clustering
2️⃣ Environmental distance thinning
Both outperform conventional approaches for:
🌍 Explaining
📍 Predicting
⏳ Projecting species distributions
(3/8)
Environmental sampling bias = when some environmental conditions are oversampled just because they’re common or widespread across the landscape.
➡️ This skews the models and messes with predictive accuracy.
(2/8)
Environmental sampling bias = when some environmental conditions are oversampled just because they’re common or widespread across the landscape.
➡️ This skews the models and messes with predictive accuracy.
(2/8)