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Spatially Explicit Hyperparameter Optimization for Neural Networks

Spatially Explicit Hyperparameter Optimization for Neural Networks

Spatially Explicit Hyperparameter Optimization for Neural Networks
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Spatially Explicit Hyperparameter Optimization for Neural Networks Other -

by Minrui Zheng

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Details

  • Title Spatially Explicit Hyperparameter Optimization for Neural Networks
  • Author Minrui Zheng
  • Binding Other
  • Condition New
  • Pages 108
  • Volumes 1
  • Language ENG
  • Publisher Springer
  • Publication date
  • Illustrated Yes
  • Features Illustrated
  • Bookseller's Inventory # 6395912160
  • ISBN 9789811654015 / 9811654018
  • Weight 0.42 lbs (0.19 kg)
  • Dimensions 9.21 x 6.14 x 0.28 in (23.39 x 15.60 x 0.71 cm)
  • Category Computers - General Information
  • Quantity available 4

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Reader reviews for Spatially Explicit Hyperparameter Optimization for Neural Networks

From the publisher

Neural networks as the commonly used machine learning algorithms, such as artificial neural networks (ANNs) and convolutional neural networks (CNNs), have been extensively used in the GIScience domain to explore the nonlinear and complex geographic phenomena. However, there are a few studies that investigate the parameter settings of neural networks in GIScience. Moreover, the model performance of neural networks often depends on the parameter setting for a given dataset. Meanwhile, adjusting the parameter configuration of neural networks will increase the overall running time. Therefore, an automated approach is necessary for addressing these limitations in current studies. This book proposes an automated spatially explicit hyperparameter optimization approach to identify optimal or near-optimal parameter settings for neural networks in the GIScience field. Also, the approach improves the computing performance at both model and computing levels. This book is writtenfor researchers of the GIScience field as well as social science subjects.


From the rear cover

Neural networks as the commonly used machine learning algorithms, such as artificial neural networks (ANNs) and convolutional neural networks (CNNs), have been extensively used in the GIScience domain to explore the nonlinear and complex geographic phenomena. However, there are a few studies that investigate the parameter settings of neural networks in GIScience. Moreover, the model performance of neural networks often depends on the parameter setting for a given dataset. Meanwhile, adjusting the parameter configuration of neural networks will increase the overall running time. Therefore, an automated approach is necessary for addressing these limitations in current studies. This book proposes an automated spatially explicit hyperparameter optimization approach to identify optimal or near-optimal parameter settings for neural networks in the GIScience field. Also, the approach improves the computing performance at both model and computing levels. This book is written for researchers of the GIScience field as well as social science subjects.

About the author

Dr. Minrui Zheng is an Associate Professor in the School of Public Administration and Policy at Renmin University of China. She earned her M.S. in mathematical finance and her Ph.D. from the University of North Carolina at Charlotte. She has published over 10 articles in peer-reviewed journals and book chapters, and is a Member of several professional organizations including the American Association of Geographers and the North American Regional Science Council. Her research and teaching interests focus on GIScience, spatial analysis and modeling, machine learning, high-performance and parallel computing, and land change modeling. Her work focuses on using advanced spatial modeling techniques and high-performance and parallel computing to analyze big data-driven spatial problems.


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