BOOKS - Recommender Systems Algorithms and their Applications
Recommender Systems Algorithms and their Applications - Pushpendu Kar, Monideepa Roy, Sujoy Datta 2024 PDF | EPUB Springer BOOKS
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Recommender Systems Algorithms and their Applications
Author: Pushpendu Kar, Monideepa Roy, Sujoy Datta
Year: 2024
Pages: 174
Format: PDF | EPUB
File size: 19.9 MB
Language: ENG



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Book Recommender Systems Algorithms and their Applications Introduction: In today's digital age, recommendation systems have become an integral part of our lives. From streaming services like Netflix and Amazon to social media platforms like Facebook and Instagram, these systems play a crucial role in shaping our online experiences. The purpose of this book is to provide a comprehensive overview of recommender systems, their algorithms, and their applications in various industries. The book covers the evolution of technology, the need for a personal paradigm to understand the technological process, and the importance of developing attack-resistant and trust-centric recommender systems for sensitive data applications. Chapter 1: Evolution of Technology The chapter begins by exploring the history of recommendation systems and how they have evolved over time. It discusses the early days of collaborative filtering, content-based filtering, and matrix factorization, and how these techniques have been refined and combined to create more sophisticated algorithms. The chapter also highlights the growing importance of deep learning techniques in modern recommender systems.
Book Recommendant Systems Algorithms and their Applications Введение: В современную цифровую эпоху рекомендательные системы стали неотъемлемой частью нашей жизни. От стриминговых сервисов, таких как Netflix и Amazon, до социальных сетей, таких как Facebook и Instagram, эти системы играют решающую роль в формировании нашего онлайн-опыта. Цель этой книги - предоставить всесторонний обзор рекомендательных систем, их алгоритмов и их приложений в различных отраслях. Книга освещает эволюцию технологий, необходимость личной парадигмы для понимания технологического процесса и важность разработки устойчивых к атакам и ориентированных на доверие рекомендательных систем для приложений с конфиденциальными данными. Глава 1: Эволюция технологий Глава начинается с изучения истории рекомендательных систем и того, как они развивались с течением времени. В нем обсуждаются первые дни совместной фильтрации, фильтрации на основе содержимого и факторизации матриц, а также то, как эти методы были усовершенствованы и объединены для создания более сложных алгоритмов. В главе также подчеркивается растущее значение методов глубокого обучения в современных рекомендательных системах.
Book Recommendant Systems Algorithms and their Applications Introduction : À l'ère numérique moderne, les systèmes de recommandation sont devenus une partie intégrante de nos vies. Des services de streaming comme Netflix et Amazon aux réseaux sociaux comme Facebook et Instagram, ces systèmes jouent un rôle crucial dans la formation de notre expérience en ligne. L'objectif de ce livre est de fournir un aperçu complet des systèmes de recommandation, de leurs algorithmes et de leurs applications dans différents secteurs. livre met en lumière l'évolution de la technologie, la nécessité d'un paradigme personnel pour comprendre le processus technologique et l'importance de développer des systèmes de recommandation résistants aux attaques et axés sur la confiance pour les applications contenant des données sensibles. Chapitre 1 : L'évolution des technologies chapitre commence par une étude de l'histoire des systèmes de recommandation et de leur évolution au fil du temps. Il traite des premiers jours du filtrage collaboratif, du filtrage basé sur le contenu et de la factorisation matricielle, ainsi que de la façon dont ces méthodes ont été améliorées et combinées pour créer des algorithmes plus complexes. chapitre souligne également l'importance croissante des techniques d'apprentissage profond dans les systèmes de recommandation modernes.
Book Recommendant Systems Algorithms and their Applications Introducción: En la era digital moderna, los sistemas de recomendación se han convertido en una parte integral de nuestras vidas. Desde servicios de streaming como Netflix y Amazon hasta redes sociales como Facebook e Instagram, estos sistemas juegan un papel crucial en la formación de nuestra experiencia online. objetivo de este libro es proporcionar una visión general completa de los sistemas de recomendación, sus algoritmos y sus aplicaciones en diferentes industrias. libro destaca la evolución de la tecnología, la necesidad de un paradigma personal para entender el proceso tecnológico y la importancia de desarrollar sistemas de recomendación resistentes a los ataques y centrados en la confianza para aplicaciones con datos sensibles. Capítulo 1: La evolución de la tecnología capítulo comienza con el estudio de la historia de los sistemas de recomendación y cómo han evolucionado a lo largo del tiempo. Se discuten los primeros días de filtrado colaborativo, filtrado basado en contenido y factorización de matrices, así como la forma en que estas técnicas fueron mejoradas y combinadas para crear algoritmos más complejos. capítulo también destaca la creciente importancia de los métodos de aprendizaje profundo en los sistemas de recomendación modernos.
Buch Empfehlende Systeme Algorithmen und ihre Anwendungen Einführung: Im heutigen digitalen Zeitalter sind Empfehlungssysteme zu einem festen Bestandteil unseres bens geworden. Von Streaming-Diensten wie Netflix und Amazon bis hin zu sozialen Netzwerken wie Facebook und Instagram spielen diese Systeme eine entscheidende Rolle bei der Gestaltung unseres Online-Erlebnisses. Ziel dieses Buches ist es, einen umfassenden Überblick über Empfehlungssysteme, deren Algorithmen und deren Anwendungen in verschiedenen Branchen zu geben. Das Buch beleuchtet die Entwicklung der Technologie, die Notwendigkeit eines persönlichen Paradigmas zum Verständnis des technologischen Prozesses und die Bedeutung der Entwicklung von angriffsresistenten und vertrauensorientierten Empfehlungssystemen für Anwendungen mit sensiblen Daten. Kapitel 1: Die Entwicklung der Technologie Das Kapitel beginnt mit dem Studium der Geschichte der Empfehlungssysteme und wie sie sich im Laufe der Zeit entwickelt haben. Es diskutiert die Anfänge der kollaborativen Filterung, inhaltsbasierten Filterung und Matrixfaktorisierung und wie diese Techniken verbessert und kombiniert wurden, um komplexere Algorithmen zu erstellen. Das Kapitel hebt auch die wachsende Bedeutung von Deep-arning-Methoden in modernen Empfehlungssystemen hervor.
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Kitap Öneri stemleri Algoritmalar ve Uygulamaları Giriş: Modern dijital çağda, öneri sistemleri hayatımızın ayrılmaz bir parçası haline gelmiştir. Netflix ve Amazon gibi yayın hizmetlerinden Facebook ve Instagram gibi sosyal medyaya kadar, bu sistemler çevrimiçi deneyimimizi şekillendirmede kritik bir rol oynamaktadır. Bu kitabın amacı, tavsiye sistemleri, algoritmaları ve endüstrilerdeki uygulamaları hakkında kapsamlı bir genel bakış sağlamaktır. Kitap, teknolojinin evrimini, teknolojik süreci anlamak için kişisel bir paradigmaya duyulan ihtiyacı ve hassas veri uygulamaları için saldırıya dayanıklı ve güven odaklı öneri sistemleri geliştirmenin önemini vurgulamaktadır. Bölüm 1: Teknolojinin Evrimi Bölüm, tavsiye sistemlerinin tarihini ve zaman içinde nasıl geliştiklerini inceleyerek başlar. İşbirlikçi filtreleme, içerik tabanlı filtreleme ve matris faktörizasyonunun ilk günlerini ve bu tekniklerin daha karmaşık algoritmalar oluşturmak için nasıl rafine edildiğini ve birleştirildiğini tartışıyor. Bölüm ayrıca, modern öneri sistemlerinde derin öğrenme tekniklerinin artan önemini vurgulamaktadır.
خوارزميات أنظمة توصيات الكتب وتطبيقاتها مقدمة: في العصر الرقمي الحديث، أصبحت أنظمة التوصية جزءًا لا يتجزأ من حياتنا. من خدمات البث مثل Netflix و Amazon إلى وسائل التواصل الاجتماعي مثل Facebook و Instagram، تلعب هذه الأنظمة دورًا مهمًا في تشكيل تجربتنا عبر الإنترنت. الغرض من هذا الكتاب هو تقديم نظرة عامة شاملة على أنظمة التوصية وخوارزمياتها وتطبيقاتها عبر الصناعات. يسلط الكتاب الضوء على تطور التكنولوجيا، والحاجة إلى نموذج شخصي لفهم العملية التكنولوجية، وأهمية تطوير أنظمة توصيات مقاومة للهجوم وموجهة نحو الثقة لتطبيقات البيانات الحساسة. الفصل 1: يبدأ فصل تطور التكنولوجيا بفحص تاريخ أنظمة التوصية وكيف تطورت بمرور الوقت. يناقش الأيام الأولى من الترشيح التعاوني، والتصفية القائمة على المحتوى، وعامل المصفوفة، وكيف تم تحسين هذه التقنيات ودمجها لإنشاء خوارزميات أكثر تعقيدًا. كما يسلط الفصل الضوء على الأهمية المتزايدة لتقنيات التعلم العميق في أنظمة التوصيات الحديثة.

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