Personalization Engines: Advanced Recommender Systems for Digital Commerce - Couverture souple

Malekpour Alamdari, Pegah

 
9798332858765: Personalization Engines: Advanced Recommender Systems for Digital Commerce

Synopsis

Unlock the transformative power of recommender systems with "Personalization Engines: Advanced Recommender Systems for Digital Commerce." This comprehensive guide delves into the heart of recommendation technologies, exploring their development, methodologies, and impact across various domains such as e-commerce, media and entertainment, social media, and online advertising.

Key Features:

  • In-Depth Exploration: Gain a deep understanding of the foundational principles and advanced techniques that underpin modern recommender systems, including collaborative filtering, content-based filtering, and hybrid models.
  • Cutting-Edge Technologies: Discover the latest advancements in deep learning, reinforcement learning, graph neural networks, and natural language processing, and how they are revolutionizing the field of recommender systems.
  • Real-World Case Studies: Learn from detailed case studies that highlight practical applications and the significant impact of recommender systems on user engagement, satisfaction, and business outcomes.
  • Ethical Considerations: Address the crucial ethical issues related to algorithmic bias, privacy, transparency, and fairness, and explore strategies to develop responsible and equitable recommender systems.
  • Comprehensive Evaluation Techniques: Master the tools and methodologies for evaluating recommender systems, including offline and online evaluation, A/B testing, and multi-armed bandits, to ensure their effectiveness and reliability.
  • Future Trends and Research Avenues: Stay ahead of the curve by exploring emerging trends and potential research directions that promise to shape the future of personalized digital experiences.

Les informations fournies dans la section « Synopsis » peuvent faire référence à une autre édition de ce titre.