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Overcoming Data Scarcity in Earth Science



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Autore: Etcheverry Venturini Lorena Visualizza persona
Titolo: Overcoming Data Scarcity in Earth Science Visualizza cluster
Pubblicazione: MDPI - Multidisciplinary Digital Publishing Institute, 2020
Descrizione fisica: 1 electronic resource (94 p.)
Soggetto non controllato: geophysical monitoring
data scarcity
missing data
climate extreme indices (CEIs)
rule extraction
Dataset Licensedatabase
data assimilation
data imputation
support vector machines
environmental observations
multi-class classification
earth-science data
remote sensing
magnetotelluric monitoring
soil texture calculator
machine learning
ClimPACT
invasive species
species distribution modeling
3D-Var
ensemble learning
data quality
water quality
microhabitat
k-Nearest Neighbors
Expert Team on Climate Change Detection and Indices (ETCCDI)
decision trees
processing
attribute reduction
Expert Team on Sector-specific Climate Indices (ET-SCI)
core attribute
rough set theory
GLDAS
arthropod vector
environmental modeling
statistical methods
Persona (resp. second.): Chreties CerianiChristian
Castro CasalesAlberto
GorgoglioneAngela
Sommario/riassunto: heavily Environmental mathematical models represent one of the key aids for scientists to forecast, create, and evaluate complex scenarios. These models rely on the data collected by direct field observations. However, assembly of a functional and comprehensive dataset for any environmental variable is difficult, mainly because of i) the high cost of the monitoring campaigns and ii) the low reliability of measurements (e.g., due to occurrences of equipment malfunctions and/or issues related to equipment location). The lack of a sufficient amount of Earth science data may induce an inadequate representation of the response’s complexity in any environmental system to any type of input/change, both natural and human-induced. In such a case, before undertaking expensive studies to gather and analyze additional data, it is reasonable to first understand what enhancement in estimates of system performance would result if all the available data could be well exploited. Missing data imputation is an important task in cases where it is crucial to use all available data and not discard records with missing values. Different approaches are available to deal with missing data. Traditional statistical data completion methods are used in different domains to deal with single and multiple imputation problems. More recently, machine learning techniques, such as clustering and classification, have been proposed to complete missing data. This book showcases the body of knowledge that is aimed at improving the capacity to exploit the available data to better represent, understand, predict, and manage the behavior of environmental systems at all practical scales.
Titolo autorizzato: Overcoming Data Scarcity in Earth Science  Visualizza cluster
ISBN: 3-03928-211-5
Formato: Materiale a stampa
Livello bibliografico Monografia
Lingua di pubblicazione: Inglese
Record Nr.: 9910404080803321
Lo trovi qui: Univ. Federico II
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