Habitat Prediction and Knowledge Extraction from Musa gracilis Holttum with Limited Data
Species distribution models are a powerful tool to predict suitability map addressing ecology and conservation, especially of rare species. However, the limited occurrence data often decrease the performances of the prediction models. In this research, the Random Forest with Fuzzy selection of pseud...
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th-mahidol.732482022-08-04T11:50:06Z Habitat Prediction and Knowledge Extraction from Musa gracilis Holttum with Limited Data Thanayut Changruenngam Sasivimon Chomchalow Swangpol Jantrararuk Tovaranonte Mae Fah Luang University Mahidol University Biochemistry, Genetics and Molecular Biology Chemistry Materials Science Mathematics Physics and Astronomy Species distribution models are a powerful tool to predict suitability map addressing ecology and conservation, especially of rare species. However, the limited occurrence data often decrease the performances of the prediction models. In this research, the Random Forest with Fuzzy selection of pseudo absence point (RFFA) method was created for habitat prediction of species with limited distribution data. In our study, Musa gracilis Holttum is naturally found only in Narathiwat, one of the southernmost provinces in Thailand. With only three collected localities, the species was used as a sample to test efficacy of the RFFA method. The comparing the model results with real data, the statistical relationship, and the feasibility assessment of the two species distribution models. MaxEnt and RFFA methods showed that the performance of the RFFA model did not differ significantly from that of MaxEnt in terms of efficiency. It can be concluded from the model using the three-occurrence data that M. gracilis distributes in approximately 7,000 square kilometers, with limited boundary in Thailand peninsular and is facing a risk of extinction in the wild. 2022-08-04T03:39:20Z 2022-08-04T03:39:20Z 2022-07-01 Article Chiang Mai Journal of Science. Vol.49, No.4 (2022), 1050-1062 10.12982/CMJS.2022.076 01252526 2-s2.0-85134399493 https://repository.li.mahidol.ac.th/handle/123456789/73248 Mahidol University SCOPUS https://www.scopus.com/inward/record.uri?partnerID=HzOxMe3b&scp=85134399493&origin=inward |
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Biochemistry, Genetics and Molecular Biology Chemistry Materials Science Mathematics Physics and Astronomy Thanayut Changruenngam Sasivimon Chomchalow Swangpol Jantrararuk Tovaranonte Habitat Prediction and Knowledge Extraction from Musa gracilis Holttum with Limited Data |
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Species distribution models are a powerful tool to predict suitability map addressing ecology and conservation, especially of rare species. However, the limited occurrence data often decrease the performances of the prediction models. In this research, the Random Forest with Fuzzy selection of pseudo absence point (RFFA) method was created for habitat prediction of species with limited distribution data. In our study, Musa gracilis Holttum is naturally found only in Narathiwat, one of the southernmost provinces in Thailand. With only three collected localities, the species was used as a sample to test efficacy of the RFFA method. The comparing the model results with real data, the statistical relationship, and the feasibility assessment of the two species distribution models. MaxEnt and RFFA methods showed that the performance of the RFFA model did not differ significantly from that of MaxEnt in terms of efficiency. It can be concluded from the model using the three-occurrence data that M. gracilis distributes in approximately 7,000 square kilometers, with limited boundary in Thailand peninsular and is facing a risk of extinction in the wild. |
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Mae Fah Luang University |
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Mae Fah Luang University Thanayut Changruenngam Sasivimon Chomchalow Swangpol Jantrararuk Tovaranonte |
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Thanayut Changruenngam Sasivimon Chomchalow Swangpol Jantrararuk Tovaranonte |
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Thanayut Changruenngam |
title |
Habitat Prediction and Knowledge Extraction from Musa gracilis Holttum with Limited Data |
title_short |
Habitat Prediction and Knowledge Extraction from Musa gracilis Holttum with Limited Data |
title_full |
Habitat Prediction and Knowledge Extraction from Musa gracilis Holttum with Limited Data |
title_fullStr |
Habitat Prediction and Knowledge Extraction from Musa gracilis Holttum with Limited Data |
title_full_unstemmed |
Habitat Prediction and Knowledge Extraction from Musa gracilis Holttum with Limited Data |
title_sort |
habitat prediction and knowledge extraction from musa gracilis holttum with limited data |
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2022 |
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https://repository.li.mahidol.ac.th/handle/123456789/73248 |
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1763494390139977728 |