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Titlebook: Machine Learning and Data Mining Approaches to Climate Science; Proceedings of the 4 Valliappa Lakshmanan,Eric Gilleland,Martin Tingley Con

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楼主: BULK
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n climate informatics.This book presents innovative work in Climate Informatics, a new field that reflects the application of data mining methods to climate science, and shows where this new and fast growing field is headed. Given its interdisciplinary nature, Climate Informatics offers insights, to
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Conference proceedings 2015hows where this new and fast growing field is headed. Given its interdisciplinary nature, Climate Informatics offers insights, tools and methods that are increasingly needed in order to understand the climate system, an aspect which in turn has become crucial because of the threat of climate change.
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Comparison of Linear and Tobit Modeling of Downscaled Daily Precipitation over the Missouri River Baore accuracy, it is not as successful in predicting the magnitude of the positive precipitation due to its heavy model dependency. The paper also lays the groundwork for a more extensive spatiotemporal modeling approach to be pursued in the future.
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Unsupervised Method for Water Surface Extent Monitoring Using Remote Sensing Datansing data to effectively monitor changes in surface water bodies. Using an independent validation dataset, we compare the proposed method with two cluster algorithms (K-MEANS and EM) as well as an image segmentation algorithm (normal-cut). We show that our method is more efficient and reliable.
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Using Causal Discovery Algorithms to Learn About Our Planet’s Climateing of probabilistic graphical models. Then we report on our recent progress, including some results on anticipated changes in the climate’s network structure for a warming climate and computational advances that allow us to move to three-dimensional networks.
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Kernel and Information-Theoretic Methods for the Extraction and Predictability of Organized Tropical. The predictability of the Madden-Julian oscillation (MJO) is then quantified using a cluster-based information-theoretic framework adapted for cyclostationary variables. Data clustering is performed in the space of the NLSA temporal patterns and the results show a strong influence of ENSO in the early MJO season.
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Machine Learning and Data Mining Approaches to Climate ScienceProceedings of the 4
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Machine Learning and Data Mining Approaches to Climate Science978-3-319-17220-0
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