Machine Learning under Resource Constraints. / Applications / / ed. by Katharina Morik, Christian Wietfeld, Jörg Rahnenführer.

Machine Learning under Resource Constraints addresses novel machine learning algorithms that are challenged by high-throughput data, by high dimensions, or by complex structures of the data in three volumes. Resource constraints are given by the relation between the demands for processing the data a...

Full description

Saved in:
Bibliographic Details
MitwirkendeR:
HerausgeberIn:
Place / Publishing House:Berlin ;, Boston : : De Gruyter, , [2022]
©2023
Year of Publication:2022
Language:English
Series:De Gruyter STEM ; Volume 3
Physical Description:1 online resource (VIII, 470 p.)
Tags: Add Tag
No Tags, Be the first to tag this record!
Table of Contents:
  • Frontmatter
  • Contents
  • 1 Editorial
  • 2 Health / Medicine
  • 2.1 Machine Learning in Medicine
  • 2.2 Virus Detection
  • 2.3 Cancer Diagnostics and Therapy from Molecular Data
  • 2.4 Bayesian Analysis for Dimensionality and Complexity Reduction
  • 2.5 Survival Prediction and Model Selection
  • 2.6 Protein Complex Similarity
  • 3 Industry 4.0
  • 3.1 Keynote on Industry 4.0
  • 3.2 Quality Assurance in Interlinked Manufacturing Processes
  • 3.3 Label Proportion Learning
  • 3.4 Simulation and Machine Learning
  • 3.5 High-Precision Wireless Localization
  • 3.6 Indoor Photovoltaic Energy Harvesting
  • 3.7 Micro-UAV Swarm Testbed for Indoor Applications
  • 4 Smart City and Traffic
  • 4.1 Inner-City Traffic Flow Prediction with Sparse Sensors
  • 4.2 Privacy-Preserving Detection of Persons and Classification of Vehicle Flows
  • 4.3 Green Networking and Resource Constrained Clients for Smart Cities
  • 4.4 Vehicle to Vehicle Communications: Machine Learning-Enabled Predictive Routing
  • 4.5 Modelling of Hybrid Vehicular Traffic with Extended Cellular Automata
  • 4.6 Embedded Crowdsensing for Pavement Monitoring and its Incentive Mechanisms
  • 5 Communication Networks
  • 5.1 Capacity Analysis of IoT Networks in the Unlicensed Spectrum
  • 5.2 Resource-Efficient Vehicle-to-Cloud Communications
  • 5.3 Mobile-Data Network Analytics Highly Reliable Networks
  • 5.4 Machine Learning-Enabled 5G Network Slicing
  • 5.5 Potential of Millimeter Wave Communications
  • 6 Privacy
  • 6.1 Keynote: Construction of Inference-Proof Agent Interactions
  • Bibliography
  • Index
  • List of Contributors