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Machine learning for ecology and sustainable natural resource management

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dc.contributor.author Humphries, Grant R. W. ed.
dc.contributor.author Huettmann, Falk ed.
dc.contributor.author Magness, Dawn R. ed.
dc.date.accessioned 2019-03-25T17:42:09Z
dc.date.available 2019-03-25T17:42:09Z
dc.date.issued 2018
dc.identifier.isbn 978-3-319-96976-3
dc.identifier.uri http://hdl.handle.net/123456789/11424
dc.description.abstract Ecologists and natural resource managers are charged with making complex management decisions in the face of a rapidly changing environment resulting from climate change, energy development, urban sprawl, invasive species and globalization. Advances in Geographic Information System (GIS) technology, digitization, online data availability, historic legacy datasets, remote sensors and the ability to collect data on animal movements via satellite and GPS have given rise to large, highly complex datasets. These datasets could be utilized for making critical management decisions, but are often "messy" and difficult to interpret. Basic artificial intelligence algorithms (i.e., machine learning) are powerful tools that are shaping the world and must be taken advantage of in the life sciences. In ecology, machine learning algorithms are critical to helping resource managers synthesize information to better understand complex ecological systems. Machine Learning has a wide variety of powerful applications, with three general uses that are of particular interest to ecologists: (1) data exploration to gain system knowledge and generate new hypotheses, (2) predicting ecological patterns in space and time, and (3) pattern recognition for ecological sampling. Machine learning can be used to make predictive assessments even when relationships between variables are poorly understood. When traditional techniques fail to capture the relationship between variables, effective use of machine learning can unearth and capture previously unattainable insights into an ecosystem's complexity. Currently, many ecologists do not utilize machine learning as a part of the scientific process. This volume highlights how machine learning techniques can complement the traditional methodologies currently applied in this field. es
dc.language.iso en es
dc.publisher Springer es
dc.rights Este documento es reproducido por la biblioteca universitaria de la UCLV bajo el amparo de la legislación cubana vigente sobre derecho de autor. Los usuarios podrán utilizar este material bajo la siguiente licencia: Reconociendo a los autores de la obra mediante las citas y referencias bibliográficas correspondientes, utilizar solo para fines No Comerciales y No realizar reproducciones u obras derivadas. es
dc.subject Recursos Naturales es
dc.subject Administración es
dc.subject Toma de Decisiones es
dc.subject Aprendizaje Automático es
dc.subject Computadoras es
dc.subject Ecología es
dc.subject Computación Aplicada en Ciencias de la Vida es
dc.subject Bioestadística es
dc.subject Minería de Datos y Descubrimiento del Conocimiento es
dc.subject Reconocimiento de Patrones es
dc.subject Natural Resources es
dc.subject Management es
dc.subject Decision Making es
dc.subject Machine Learning es
dc.subject Computers es
dc.subject Ecology es
dc.subject Computer Appl. in Life Sciences es
dc.subject Biostatistics es
dc.subject Data Mining and Knowledge Discovery es
dc.subject Pattern Recognition es
dc.title Machine learning for ecology and sustainable natural resource management es
dc.type Book es


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