DOI:​10.1016/J.CHEMOSPHERE.2004.10.032
Corpus ID: 14534882
Potential assessment of the "support vector machine" method in forecasting ambient air pollutant trends.
W. Lu, Wen-jian Wang
Published 2005
Computer Science, Medicine
Chemosphere
Monitoring and forecasting of air quality parameters are popular and important topics of atmospheric and environmental research today due to the health impact caused by exposing to air pollutants… Expand
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184 Citations
Highly Influential Citations
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pollutant
Projections and Predictions
Support Vector Machine
Neural Network Simulation
MAV protocol
Generalization (Psychology)
Air Pollutants
Learning Disorders
Population Parameter
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