• Title of article

    Applications of symbolic machine learning to ecological modelling

  • Author/Authors

    DZEROSKI، SASO نويسنده , , Sa?o، نويسنده ,

  • Pages
    11
  • From page
    263
  • To page
    273
  • Abstract
    Symbolic machine learning methods induce explicitly represented symbolic models from data. The models can thus be inspected, modified, used and verified by human experts and have the potential to become part of the knowledge in the respective application domain. Applications of symbolic machine learning methods to ecological modelling problems are numerous and varied, ranging from modelling algal growth in lagoons and lakes (e.g. in the Venice lagoon) to predicting biodegradation rates for chemicals. This paper gives an overview of machine learning applications to ecological modelling, focussing on applications of symbolic machine learning and giving more detailed accounts of several such applications.
  • Keywords
    Population dynamics , Environmental monitoring , habitat suitability , Equation discovery , Machine Learning , decision trees
  • Journal title
    Astroparticle Physics
  • Record number

    2036811