LGMLJun 18, 2013

Bioclimating Modelling: A Machine Learning Perspective

arXiv:1306.4152v11 citations
Originality Synthesis-oriented
AI Analysis

It provides a comprehensive analysis to inform technique selection for researchers in ecology and climate science, but is incremental as it synthesizes existing knowledge.

This paper reviews machine learning-based bioclimatic models for predicting organism geographic ranges under climate change, analyzing factors that influence their success, including comparisons with conventional statistical techniques.

Many machine learning (ML) approaches are widely used to generate bioclimatic models for prediction of geographic range of organism as a function of climate. Applications such as prediction of range shift in organism, range of invasive species influenced by climate change are important parameters in understanding the impact of climate change. However, success of machine learning-based approaches depends on a number of factors. While it can be safely said that no particular ML technique can be effective in all applications and success of a technique is predominantly dependent on the application or the type of the problem, it is useful to understand their behaviour to ensure informed choice of techniques. This paper presents a comprehensive review of machine learning-based bioclimatic model generation and analyses the factors influencing success of such models. Considering the wide use of statistical techniques, in our discussion we also include conventional statistical techniques used in bioclimatic modelling.

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