TITLE

Adaptation Learning and Optimization

ISSN

1867-4542

ISSN ELECTRONIC

1867-4534

CATEGORY

Engineering

DESCRIPTION

<p>The role of adaptation, learning and optimization are becoming increasingly essential and intertwined. The capability of a system to adapt either through modification of its physiological structure or via some revalidation process of internal mechanisms that directly dictate the response or behavior is crucial in many real world applications. Optimization lies at the heart of most machine learning approaches while learning and optimization are two primary means to effect adaptation in various forms. They usually involve computational processes incorporated within the system that trigger parametric updating and knowledge or model enhancement, giving rise to progressive improvement. This book series serves as a channel to consolidate work related to topics linked to adaptation, learning and optimization in systems and structures. Topics covered under this series include:</p> <ul> <li>complex adaptive systems including evolutionary computation, memetic computing, swarm intelligence, neural networks, fuzzy systems, tabu search, simulated annealing, etc. </li> <li>machine learning, data mining & mathematical programming</li> <li>hybridization of techniques that span across artificial intelligence and computational intelligence for synergistic alliance of strategies for problem-solving. </li> <li>aspects of adaptation in robotics </li> <li>agent-based computing</li> <li>autonomic/pervasive computing</li> <li>dynamic optimization/learning in noisy and uncertain environment</li></ul> <li>systemic alliance of stochastic and conventional search techniques</li> <li>all aspects of adaptations in man-machine systems. </li> <p>This book series bridges the dichotomy of modern and conventional mathematical and heuristic/meta-heuristics approaches to bring about effective adaptation, learning and optimization. It propels the maxim that the old and the new can come together and be combined synergistically to scale new heights in problem-solving. To reach such a level, numerous research issues will emerge and researchers will find the book series a convenient medium to track the progresses made.</p><p>*Indexing: The books of this series are submitted toDBLP, SCOPUS, Google Scholar and Springerlink.*</p><p><br></p>

Related objects

BOOK (manifestation)

  • Book: 978-3-642-17389-9 (Book)

  • How to use: Click on a object to move its position. Double click to open its homepage. Right click to preview its contents.

    Download the RDF metadata as:   json-ld nt turtle xml License info


    18 TRIPLES      13 PREDICATES      19 URIs      15 LITERALS

    Subject Predicate Object
    1 book-series:ed3b2649766e8b4c54a9282910fe5095 sg:category Engineering
    2 sg:ddsId 8335
    3 sg:description <p>The role of adaptation, learning and optimization are becoming increasingly essential and intertwined. The capability of a system to adapt either through modification of its physiological structure or via some revalidation process of internal mechanisms that directly dictate the response or behavior is crucial in many real world applications. Optimization lies at the heart of most machine learning approaches while learning and optimization are two primary means to effect adaptation in various forms. They usually involve computational processes incorporated within the system that trigger parametric updating and knowledge or model enhancement, giving rise to progressive improvement. This book series serves as a channel to consolidate work related to topics linked to adaptation, learning and optimization in systems and structures. Topics covered under this series include:</p> <ul> <li>complex adaptive systems including evolutionary computation, memetic computing, swarm intelligence, neural networks, fuzzy systems, tabu search, simulated annealing, etc. </li> <li>machine learning, data mining & mathematical programming</li> <li>hybridization of techniques that span across artificial intelligence and computational intelligence for synergistic alliance of strategies for problem-solving. </li> <li>aspects of adaptation in robotics </li> <li>agent-based computing</li> <li>autonomic/pervasive computing</li> <li>dynamic optimization/learning in noisy and uncertain environment</li></ul> <li>systemic alliance of stochastic and conventional search techniques</li> <li>all aspects of adaptations in man-machine systems. </li> <p>This book series bridges the dichotomy of modern and conventional mathematical and heuristic/meta-heuristics approaches to bring about effective adaptation, learning and optimization. It propels the maxim that the old and the new can come together and be combined synergistically to scale new heights in problem-solving. To reach such a level, numerous research issues will emerge and researchers will find the book series a convenient medium to track the progresses made.</p><p>*Indexing: The books of this series are submitted toDBLP, SCOPUS, Google Scholar and Springerlink.*</p><p><br></p>
    4 sg:issnElectronic 1867-4534
    5 sg:issnPrint 1867-4542
    6 sg:language En
    7 sg:license http://scigraph.springernature.com/explorer/license/
    8 sg:scigraphId ed3b2649766e8b4c54a9282910fe5095
    9 sg:shortTitle
    10 Adapt.,Learning,Optim.
    11 sg:title Adaptation Learning and Optimization
    12 Adaptation, Learning, and Optimization
    13 Evolutionary Learning and Optimization
    14 sg:webpage https://link.springer.com/8335
    15 rdf:type sg:BookSeries
    16 rdfs:label BookSeries: Adaptation Learning and Optimization
    17 BookSeries: Adaptation, Learning, and Optimization
    18 BookSeries: Evolutionary Learning and Optimization
    HOW TO GET THIS DATA PROGRAMMATICALLY:

    JSON-LD is a popular JSON format for linked data.

    curl -H 'Accept: application/ld+json' 'http://scigraph.springernature.com/things/book-series/ed3b2649766e8b4c54a9282910fe5095'

    N-Triples is a line-based linked data format ideal for batch operations .

    curl -H 'Accept: application/n-triples' 'http://scigraph.springernature.com/things/book-series/ed3b2649766e8b4c54a9282910fe5095'

    Turtle is a human-readable linked data format.

    curl -H 'Accept: text/turtle' 'http://scigraph.springernature.com/things/book-series/ed3b2649766e8b4c54a9282910fe5095'

    RDF/XML is a standard XML format for linked data.

    curl -H 'Accept: application/rdf+xml' 'http://scigraph.springernature.com/things/book-series/ed3b2649766e8b4c54a9282910fe5095'






    Preview window. Press ESC to close (or click here)


    ...