Revival: Genetic Algorithms for Pattern Recognition

Revival: Genetic Algorithms for Pattern Recognition

Pas encore d'évaluations
Sep 20, 2017 · Anglais · Relié (336 pages)
Ajouter à l'étagère

Évaluer ce livre


Exporter le journal de lecture

Détails du livre

Format Relié
Pages 336
Langue Anglais
Publié Sep 20, 2017
Éditeur CRC Press
ISBN-10 1138105570
ISBN-13 9781138105577

Description

Creating solutions for complex pattern recognition challenges often entails significant computational demands. The authors delve into the innovative field of genetic algorithms, showcasing their applicability in tackling various recognition problems with remarkable efficiency. These algorithms draw inspiration from evolutionary biology, mimicking the process of natural selection to evolve solutions over generations.

As a comprehensive exploration, the text examines how genetic algorithms can adaptively search through vast datasets to identify patterns and optimize outcomes. The contributions from various experts highlight practical applications, along with theoretical frameworks, providing a well-rounded perspective on the efficacy of these methods in diverse fields such as image processing and data mining.

The eclectic collaboration of authors situates the work within the larger context of artificial intelligence and machine learning, presenting insights into the latest trends and techniques. Through compelling examples and case studies, readers are encouraged to appreciate the transformative possibilities these algorithms hold for the future of pattern recognition.

Ultimately, the book stands as a testament to the power of interdisciplinary collaboration, bridging concepts from computer science, engineering, and biology to foster innovative solutions. The exploration of genetic algorithms encapsulates a pivotal moment in the evolution of pattern recognition methodologies, offering a valuable resource for researchers and practitioners alike.

Genres

Science & Technologie

Livres similaires

Ajouter à l'étagère

Évaluer ce livre


Exporter le journal de lecture