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Predicting potential distributions of geographic events using one-class data: concepts and methods
Authors:Q Guo  W Li  Y Liu  D Tong
Institution:1. School of Engineering, Sierra Nevada Research Institute , University of California Merced , Merced, CA, USA qguo@ucmerced.edu;3. School of Engineering, Sierra Nevada Research Institute , University of California Merced , Merced, CA, USA;4. Institute of Remote Sensing and Geographic Information Systems , Peking University , Beijing, China;5. Department of Geography and Regional Development , The University of Arizona , Tucson, AZ, USA
Abstract:One common problem with geographic data is that, for a specific geographic event, only occurrence information is available; information about the absence of the event is not available. We refer to these specific types of geospatial data as geographic one-class data (GOCD). Predicting the potential spatial distributions that a particular geographic event may occur from GOCD is difficult because traditional binary classification methods that require availability of both positive and negative training samples cannot be used. The objective of this research is to define GOCD and propose novel approaches for modelling potential spatial distributions of geographic events using GOCD. We investigate the effectiveness of one-class support vector machine (OCSVM), maximum entropy (MAXENT) and the newly proposed positive and unlabelled learning (PUL) algorithm for solving GOCD problems using a case study: species distribution modelling from synthetic data. Our experimental results indicate that generally OCSVM, MAXENT and PUL are effective in modelling the GOCD. Each method has advantages and disadvantages, but PUL seems to be the most promising method.
Keywords:geographic one-class data  one-class support vector machine  maximum entropy  positive and unlabelled learning  ecological niche modelling
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