This book serves as an essential practitioner's guide to the world of recommender algorithms as it stands in early 2026. We begin with the indispensable baselines—from classic neighborhood models to powerful matrix factorization—and build toward the sophisticated deep learning architectures that power today's largest platforms, including hybrids for CTR prediction and state-of-the-art sequential models.
A core theme of this guide is the practical integration of the latest technological breakthroughs. We dedicate significant attention to the transformative impact of Large Language Models (LLMs), offering architectural blueprints for leveraging them as powerful semantic feature extractors, building reliable Retrieval-Augmented Generation (RAG) pipelines, and designing the next wave of generative and conversational recommender agents. Furthermore, we explore the critical role of multimodal models like CLIP for solving visual cold-start problems and provide insights into specialized areas like debiasing and fairness.
This is more than a survey; it is a toolkit for the modern engineer. Each section balances conceptual depth with pragmatic advice on implementation, scalability, and production readiness, making it the definitive resource for professionals tasked with creating value through personalization.
Foundational and Heuristic-Driven Algorithms
Les informations fournies dans la section « Synopsis » peuvent faire référence à une autre édition de ce titre.
Vendeur : GreatBookPrices, Columbia, MD, Etats-Unis
Etat : New. N° de réf. du vendeur 51840403-n
Quantité disponible : Plus de 20 disponibles
Vendeur : California Books, Miami, FL, Etats-Unis
Etat : New. Print on Demand. N° de réf. du vendeur I-9798267744188
Quantité disponible : Plus de 20 disponibles
Vendeur : GreatBookPrices, Columbia, MD, Etats-Unis
Etat : As New. Unread book in perfect condition. N° de réf. du vendeur 51840403
Quantité disponible : Plus de 20 disponibles
Vendeur : Grand Eagle Retail, Bensenville, IL, Etats-Unis
Paperback. Etat : new. Paperback. This book serves as an essential practitioner's guide to the world of recommender algorithms as it stands in early 2026. We begin with the indispensable baselines-from classic neighborhood models to powerful matrix factorization-and build toward the sophisticated deep learning architectures that power today's largest platforms, including hybrids for CTR prediction and state-of-the-art sequential models. A core theme of this guide is the practical integration of the latest technological breakthroughs. We dedicate significant attention to the transformative impact of Large Language Models (LLMs), offering architectural blueprints for leveraging them as powerful semantic feature extractors, building reliable Retrieval-Augmented Generation (RAG) pipelines, and designing the next wave of generative and conversational recommender agents. Furthermore, we explore the critical role of multimodal models like CLIP for solving visual cold-start problems and provide insights into specialized areas like debiasing and fairness. This is more than a survey; it is a toolkit for the modern engineer. Each section balances conceptual depth with pragmatic advice on implementation, scalability, and production readiness, making it the definitive resource for professionals tasked with creating value through personalization. Foundational and Heuristic-Driven AlgorithmsVector Space Model (VSM)TF-IDFEmbedding-based Similarity (Word2Vec)CBOW (Continuous Bag-of-Words)FastTextClassic Rule-Based SystemsTop PopularApriori / FP-Growth / EclatInteraction-Driven Recommendation AlgorithmsItemKNN / UserKNNSARSlopeOneAttribute-Aware k-NNFunkSVDPMFWRMFBPRSVD++TimeSVD++SLIM & FISMNon-Negative Matrix Factorization (NonNegMF)CMLNCF & NeuMFDeepFM & xDeepFMAutoencoder-based (DAE & VAE)SimpleXEASEGRU4RecNextItNetSASRec & BERT4RecCL4SRecTBGRecallIRGANDiffRecGFN4RecIDNP (Interest Dynamics Neural Process)WMFBPR (Weighted MF + BPR)ASVD (Asymmetric SVD)SKNN (Session-Based KNN)Text-Driven Recommendation AlgorithmsDeepCoNNNARREMultimodal Recommendation AlgorithmsCLIPALBEF (Align Before Fuse)Context-Aware Recommendation AlgorithmsFactorization Machines (FM)AMF (Attentional Factorization Machine)Wide & DeepGBDTXGBoosLightGBMDCNKnowledge-Aware Recommendation AlgorithmsNGCFLightGCNSGLEmbedding-based (CKE, KTUP)Path-based (RippleNet)GNN-based (KGCN, KGAT, KGIN)Specialized Recommendation TasksMF-IPSCausEFairRecCMFCoNetMeLUNew Algorithmic ParadigmsReinforcement Learning (RL) for RecSysCausal Inference in RecSysInverse Propensity Scoring (IPS)Doubly Robust (DR) MethodsUplift ModelingSCM-Based Debiasing (PDA, DecRS, IV4Rec)Counterfactuals (CauseRec, PSF-RS, CountER)Explainable AI (XAI) for RecSysFairness-Aware RecSysDiversity and Novelty Optimization (MMR)Please be aware that the depth of explanation varies across different algorithms. Foundational concepts may be covered in greater detail, while others are presented more concisely. Complimentary app: Complimentary app (deployed): https: //recommender-algorithms.streamlit.app/ This item is printed on demand. Shipping may be from multiple locations in the US or from the UK, depending on stock availability. N° de réf. du vendeur 9798267744188
Quantité disponible : 1 disponible(s)
Vendeur : GreatBookPricesUK, Woodford Green, Royaume-Uni
Etat : As New. Unread book in perfect condition. N° de réf. du vendeur 51840403
Quantité disponible : Plus de 20 disponibles
Vendeur : GreatBookPricesUK, Woodford Green, Royaume-Uni
Etat : New. N° de réf. du vendeur 51840403-n
Quantité disponible : Plus de 20 disponibles
Vendeur : CitiRetail, Stevenage, Royaume-Uni
Paperback. Etat : new. Paperback. This book serves as an essential practitioner's guide to the world of recommender algorithms as it stands in early 2026. We begin with the indispensable baselines-from classic neighborhood models to powerful matrix factorization-and build toward the sophisticated deep learning architectures that power today's largest platforms, including hybrids for CTR prediction and state-of-the-art sequential models. A core theme of this guide is the practical integration of the latest technological breakthroughs. We dedicate significant attention to the transformative impact of Large Language Models (LLMs), offering architectural blueprints for leveraging them as powerful semantic feature extractors, building reliable Retrieval-Augmented Generation (RAG) pipelines, and designing the next wave of generative and conversational recommender agents. Furthermore, we explore the critical role of multimodal models like CLIP for solving visual cold-start problems and provide insights into specialized areas like debiasing and fairness. This is more than a survey; it is a toolkit for the modern engineer. Each section balances conceptual depth with pragmatic advice on implementation, scalability, and production readiness, making it the definitive resource for professionals tasked with creating value through personalization. Foundational and Heuristic-Driven AlgorithmsVector Space Model (VSM)TF-IDFEmbedding-based Similarity (Word2Vec)CBOW (Continuous Bag-of-Words)FastTextClassic Rule-Based SystemsTop PopularApriori / FP-Growth / EclatInteraction-Driven Recommendation AlgorithmsItemKNN / UserKNNSARSlopeOneAttribute-Aware k-NNFunkSVDPMFWRMFBPRSVD++TimeSVD++SLIM & FISMNon-Negative Matrix Factorization (NonNegMF)CMLNCF & NeuMFDeepFM & xDeepFMAutoencoder-based (DAE & VAE)SimpleXEASEGRU4RecNextItNetSASRec & BERT4RecCL4SRecTBGRecallIRGANDiffRecGFN4RecIDNP (Interest Dynamics Neural Process)WMFBPR (Weighted MF + BPR)ASVD (Asymmetric SVD)SKNN (Session-Based KNN)Text-Driven Recommendation AlgorithmsDeepCoNNNARREMultimodal Recommendation AlgorithmsCLIPALBEF (Align Before Fuse)Context-Aware Recommendation AlgorithmsFactorization Machines (FM)AMF (Attentional Factorization Machine)Wide & DeepGBDTXGBoosLightGBMDCNKnowledge-Aware Recommendation AlgorithmsNGCFLightGCNSGLEmbedding-based (CKE, KTUP)Path-based (RippleNet)GNN-based (KGCN, KGAT, KGIN)Specialized Recommendation TasksMF-IPSCausEFairRecCMFCoNetMeLUNew Algorithmic ParadigmsReinforcement Learning (RL) for RecSysCausal Inference in RecSysInverse Propensity Scoring (IPS)Doubly Robust (DR) MethodsUplift ModelingSCM-Based Debiasing (PDA, DecRS, IV4Rec)Counterfactuals (CauseRec, PSF-RS, CountER)Explainable AI (XAI) for RecSysFairness-Aware RecSysDiversity and Novelty Optimization (MMR)Please be aware that the depth of explanation varies across different algorithms. Foundational concepts may be covered in greater detail, while others are presented more concisely. Complimentary app: Complimentary app (deployed): https: //recommender-algorithms.streamlit.app/ This item is printed on demand. Shipping may be from our UK warehouse or from our Australian or US warehouses, depending on stock availability. N° de réf. du vendeur 9798267744188
Quantité disponible : 1 disponible(s)