Proceedings Article10.1145/1401890.1401944
Factorization meets the neighborhood: a multifaceted collaborative filtering model
Yehuda Koren
- 24 Aug 2008
- pp 426-434
TL;DR: The factor and neighborhood models can now be smoothly merged, thereby building a more accurate combined model and a new evaluation metric is suggested, which highlights the differences among methods, based on their performance at a top-K recommendation task.
read more
Abstract: Recommender systems provide users with personalized suggestions for products or services. These systems often rely on Collaborating Filtering (CF), where past transactions are analyzed in order to establish connections between users and products. The two more successful approaches to CF are latent factor models, which directly profile both users and products, and neighborhood models, which analyze similarities between products or users. In this work we introduce some innovations to both approaches. The factor and neighborhood models can now be smoothly merged, thereby building a more accurate combined model. Further accuracy improvements are achieved by extending the models to exploit both explicit and implicit feedback by the users. The methods are tested on the Netflix data. Results are better than those previously published on that dataset. In addition, we suggest a new evaluation metric, which highlights the differences among methods, based on their performance at a top-K recommendation task.
read more
Chat with Paper
AI Agents for this Paper
Find similar papers on Google Scholar, PubMed and Arxiv
Write a critical review of this paper
Analyze citations of this paper to find unaddressed research gaps
Citations
A collaborative user-centered framework for recommending items in Online Social Networks
TL;DR: This paper proposes a novel collaborative user-centered recommendation approach in which several aspects related to users and available in Online Social Networks are considered and integrated together with items' features and context information within a general framework that can support different applications using proper customizations.
92
Personalised rating prediction for new users using latent factor models
Yanir Seroussi,Fabian Bohnert,Ingrid Zukerman +2 more
- 06 Jun 2011
TL;DR: This paper addresses the new user problem by introducing several extensions to the basic matrix factorisation algorithm, which take user attributes into account when generating rating predictions, and considers both demographic attributes, explicitly supplied by users, and attributes inferred from user-generated texts.
91
Heterogeneous teaching evaluation network based offline course recommendation with graph learning and tensor factorization
TL;DR: A hybrid recommendation model by fusing network structured feature with graph neural networks and user interactive activities with tensor factorization was proposed, which outperforms other existing neural network and matrix factorization models including xSVD++, RTTF and DSE with a smaller predictive error as well as better recommendation accuracy.
91
Unified YouTube Video Recommendation via Cross-network Collaboration
Ming Yan,Jitao Sang,Changsheng Xu +2 more
- 22 Jun 2015
TL;DR: Experimental results show that the proposed cross-network collaborative solution achieves superior performance not only in term of accuracy, but also in improving the diversity and novelty of the recommended videos.
•Proceedings Article
Forecasting a Moving Target: Ensemble Models for ILI Case Count Predictions.
Prithwish Chakraborty,Pejman Khadivi,Bryan Lewis,Aravindan Mahendiran,Jiangzhuo Chen,Patrick Butler,Elaine O. Nsoesie,Sumiko R. Mekaru,John S. Brownstein,Madhav V. Marathe,Naren Ramakrishnan +10 more
- 01 Jan 2014
TL;DR: This paper presents a detailed prospective analysis on the generation of robust quantitative predictions about temporal trends of flu activity, using several surrogate data sources for 15 Latin American countries, and presents a novel matrix factorization approach using neighborhood embedding to predict flu case counts.
References
Latent dirichlet allocation
TL;DR: This work proposes a generative model for text and other collections of discrete data that generalizes or improves on several previous models including naive Bayes/unigram, mixture of unigrams, and Hofmann's aspect model.
•Proceedings Article
Latent Dirichlet Allocation
David M. Blei,Andrew Y. Ng,Michael I. Jordan +2 more
- 03 Jan 2001
TL;DR: This paper proposed a generative model for text and other collections of discrete data that generalizes or improves on several previous models including naive Bayes/unigram, mixture of unigrams, and Hof-mann's aspect model, also known as probabilistic latent semantic indexing (pLSI).
Indexing by Latent Semantic Analysis
TL;DR: A new method for automatic indexing and retrieval to take advantage of implicit higher-order structure in the association of terms with documents (“semantic structure”) in order to improve the detection of relevant documents on the basis of terms found in queries.
Toward the next generation of recommender systems: a survey of the state-of-the-art and possible extensions
TL;DR: This paper presents an overview of the field of recommender systems and describes the current generation of recommendation methods that are usually classified into the following three main categories: content-based, collaborative, and hybrid recommendation approaches.
Item-based collaborative filtering recommendation algorithms
Badrul Sarwar,George Karypis,Joseph A. Konstan,John Riedl +3 more
- 01 Apr 2001
TL;DR: This paper analyzes item-based collaborative ltering techniques and suggests that item- based algorithms provide dramatically better performance than user-based algorithms, while at the same time providing better quality than the best available userbased algorithms.
Related Papers (5)
Andriy Mnih,Ruslan Salakhutdinov +1 more
- 03 Dec 2007
Xiangnan He,Lizi Liao,Hanwang Zhang,Liqiang Nie,Xia Hu,Tat-Seng Chua +5 more
- 03 Apr 2017