Knowledge Guided Machine Learning

Regular price €56.99
Quantity:
Delivery/Collection within 10-20 working days
Shipping & Delivery
ABM
Abundance Maps
advanced physical systems modelling
Age Group_Uncategorized
Age Group_Uncategorized
automatic-update
B01=Anuj Karpatne
B01=Ramakrishnan Kannan
B01=Vipin Kumar
Beam Influence
Category1=Non-Fiction
Category=KCH
Category=KCHS
Category=UFM
Category=UMK
Category=UNA
Category=UY
Category=UYA
Category=UYQM
Category=UYQP
Category=UYQV
Category=UYZM
COP=United Kingdom
Data Science Models
deep learning
Deep Learning Models
Deep Neural Networks
Delivery_Delivery within 10-20 working days
DMD
DNN Model
Energy Conservation
eq_bestseller
eq_business-finance-law
eq_computing
eq_isMigrated=2
eq_nobargain
eq_non-fiction
hybrid ecosystem modelling
Indian Pines Dataset
Lake Mendota
Language_English
Loss Function
machine learning
Ml Framework
Ml Method
Ml Model
MPC
MSE Loss
Net Ecosystem Exchange
neural networks
PA=Available
Physical Inconsistency
Physically Consistent
physics
Physics-Guided
physics-informed learning
Pod Mode
Price_€50 to €100
projection-based reduction
PS=Active
Reduced Order System
ROMs
scientific data integration
softlaunch
spatiotemporal modelling
system modeling
Test RMSE
Training Fraction
uncertainty quantification

Product details

  • ISBN 9780367698201
  • Weight: 920g
  • Dimensions: 178 x 254mm
  • Publication Date: 26 Aug 2024
  • Publisher: Taylor & Francis Ltd
  • Publication City/Country: GB
  • Product Form: Paperback
  • Language: English
Secure checkout Fast Shipping Easy returns

Given their tremendous success in commercial applications, machine learning (ML) models are increasingly being considered as alternatives to science-based models in many disciplines. Yet, these "black-box" ML models have found limited success due to their inability to work well in the presence of limited training data and generalize to unseen scenarios. As a result, there is a growing interest in the scientific community on creating a new generation of methods that integrate scientific knowledge in ML frameworks. This emerging field, called scientific knowledge-guided ML (KGML), seeks a distinct departure from existing "data-only" or "scientific knowledge-only" methods to use knowledge and data at an equal footing. Indeed, KGML involves diverse scientific and ML communities, where researchers and practitioners from various backgrounds and application domains are continually adding richness to the problem formulations and research methods in this emerging field.

Knowledge Guided Machine Learning: Accelerating Discovery using Scientific Knowledge and Data provides an introduction to this rapidly growing field by discussing some of the common themes of research in KGML using illustrative examples, case studies, and reviews from diverse application domains and research communities as book chapters by leading researchers.

KEY FEATURES

  • First-of-its-kind book in an emerging area of research that is gaining widespread attention in the scientific and data science fields
  • Accessible to a broad audience in data science and scientific and engineering fields
  • Provides a coherent organizational structure to the problem formulations and research methods in the emerging field of KGML using illustrative examples from diverse application domains
  • Contains chapters by leading researchers, which illustrate the cutting-edge research trends, opportunities, and challenges in KGML research from multiple perspectives
  • Enables cross-pollination of KGML problem formulations and research methods across disciplines
  • Highlights critical gaps that require further investigation by the broader community of researchers and practitioners to realize the full potential of KGML

Anuj Karpatne is an Assistant Professor in the Department of Computer Science at Virginia Tech. His research focuses on pushing on the frontiers of knowledge-guided machine learning by combining scientific knowledge and data in the design and learning of machine learning methods to solve scientific and societally relevant problems.

Ramakrishnan Kannan is the group leader for Discrete Algorithms at Oak Ridge National Laboratory. His research expertise is in distributed machine learning and graph algorithms on HPC platforms and their application to scientific data with a specific interest for accelerating scientific discovery.

Vipin Kumar is a Regents Professor at the University of Minnesota’s Computer Science and Engineering Department. His current major research focus is on knowledge-guided machine learning and its applications to understanding the impact of human induced changes on the Earth and its environment.