Multi-Agent Technologies and Machine Learning / / edited by I. A. Sheremet.

This book discusses multi-agent technologies (MATs) and machine learning (ML). These tools can be integrated and applied in industry, commerce, energy, medicine, psychology, and other areas. This volume consists of six chapters in three sections that discuss the integration, applications, and advanc...

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Bibliographic Details
Superior document:Artificial Intelligence
TeilnehmendeR:
Place / Publishing House:London : : IntechOpen,, 2023.
©2023
Year of Publication:2023
Language:English
Series:Artificial intelligence (IntechOpen (Firm))
Physical Description:1 online resource (132 pages).
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Table of Contents:
  • Preface
  • Section 1 Advanced Results in the Area of Integration of Multi-Agent Technologies and Machine Learning
  • Chapter 1 A State-of-the-Art Survey on Various Domains of Multi-Agent Systems and Machine Learning by Aida Huerta Barrientos and Alejandro Nila Luevano
  • Chapter 2 Deep Multiagent Reinforcement Learning Methods Addressing the Scalability Challenge by Theocharis Kravaris and George A. Vouros
  • Section 2 Applications of Multi-Agent Technologies Combined with Machine Learning
  • Chapter 3 Role of an Optimal Multiagent Scheduling in Different Applications Using ML by Fahmina Taranum, Sridevi K, Maniza Hijab, Syeda Fouzia Sayeedunissa, Afshan Kaleem and Niraja K.S
  • Chapter 4 On an Approach to Knowledge Management and the Development of the Knowledge-Based Multi-Agent System by Evgeniy Zaytsev and Elena Nurmatova
  • Section 3 Advanced Developments in Multi-Agent Technologies and Machine Learning Creating Potential for Their Further Integration 71
  • Chapter 5 Modeling Electric Vehicle Charging Station Behavior Using Multiagent System by Jaslin Shaleem Khan, Malligama Arachchige Uditha Sudheera Navaratne and Janaka Bandara Ekanayake
  • Chapter 6 Approximate Dynamic Programming: An Efficient Machine Learning Algorithm.