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The use of machine learning in species threats and conservation analysis

Vasco Veiga Branco, Luís Correia, Pedro Cardoso

2023Biological Conservation29 citationsDOIOpen Access PDF

Abstract

The concepts and methodologies of machine learning are increasingly used to create semi-autonomous programmes capable of adapting to a multitude of problems and decision-making scenarios. With its potential in big data analysis, machine learning is particularly useful for tackling global conservation problems that often involve vast amounts of data and complex interactions between variables. In this systematic review, we summarise the use of machine learning methods in the study of species threats and conservation measures, and their emergent trends. Maximum entropy, Bayesian (regression or classification models) and ensemble methods (tree-based models, either bagging or boosting) have gained wide popularity in the past years and are now commonly used for multiple problems. Their relevance to modern conservation issues (and associated data types), their relatively simple implementation, and availability in a variety of software packages are the most likely factors to explain their popularity. Neural networks, decision trees, support-vector machines and evolutionary algorithms have been used in more specific situations, with some model applications showing promise in dealing with increasingly complex data and scenarios.

Topics & Concepts

Machine learningComputer scienceDecision treeArtificial intelligencePopularityEnsemble learningData scienceVariety (cybernetics)Boosting (machine learning)Support vector machineSocial psychologyPsychologySpecies Distribution and Climate ChangeWildlife Ecology and ConservationEcology and Vegetation Dynamics Studies
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