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Local Item-Item Models For Top-N Recommendation

Published: 07 September 2016 Publication History
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  • Abstract

    Item-based approaches based on SLIM (Sparse LInear Methods) have demonstrated very good performance for top-N recommendation; however they only estimate a single model for all the users. This work is based on the intuition that not all users behave in the same way -- instead there exist subsets of like-minded users. By using different item-item models for these user subsets, we can capture differences in their preferences and this can lead to improved performance for top-N recommendations. In this work, we extend SLIM by combining global and local SLIM models. We present a method that computes the prediction scores as a user-specific combination of the predictions derived by a global and local item-item models. We present an approach in which the global model, the local models, their user-specific combination, and the assignment of users to the local models are jointly optimized to improve the top-N recommendation performance. Our experiments show that the proposed method improves upon the standard SLIM model and outperforms competing top-N recommendation approaches.

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    cover image ACM Conferences
    RecSys '16: Proceedings of the 10th ACM Conference on Recommender Systems
    September 2016
    490 pages
    ISBN:9781450340359
    DOI:10.1145/2959100
    Permission to make digital or hard copies of all or part of this work for personal or classroom use is granted without fee provided that copies are not made or distributed for profit or commercial advantage and that copies bear this notice and the full citation on the first page. Copyrights for components of this work owned by others than ACM must be honored. Abstracting with credit is permitted. To copy otherwise, or republish, to post on servers or to redistribute to lists, requires prior specific permission and/or a fee. Request permissions from [email protected]

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    Published: 07 September 2016

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    Author Tags

    1. collaborative filtering
    2. local models
    3. slim
    4. top-n recommendation

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    RecSys '16: Tenth ACM Conference on Recommender Systems
    September 15 - 19, 2016
    Massachusetts, Boston, USA

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    RecSys '16 Paper Acceptance Rate 29 of 159 submissions, 18%;
    Overall Acceptance Rate 254 of 1,295 submissions, 20%

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    • (2024)GCNSLIM: Graph convolutional network with sparse linear methods for e-government service recommendationKnowledge-Based Systems10.1016/j.knosys.2024.111593292(111593)Online publication date: May-2024
    • (2024)Multi-view social recommendation via matrix factorization with sub-linear convergence rateExpert Systems with Applications10.1016/j.eswa.2023.121687237(121687)Online publication date: Mar-2024
    • (2024)Deep recommendation with iteration directional adversarial trainingComputing10.1007/s00607-024-01326-6Online publication date: 17-Jul-2024
    • (2024)Matrix Factorization Model in Collaborative Filtering Algorithms Based on Feedback DatasetsProceedings of the 7th International Conference on Economic Management and Green Development10.1007/978-981-97-0523-8_128(1405-1412)Online publication date: 27-Feb-2024
    • (2023)Targeted Training for Multi-organization RecommendationACM Transactions on Recommender Systems10.1145/36035081:3(1-18)Online publication date: 14-Jul-2023
    • (2023)AdaMCT: Adaptive Mixture of CNN-Transformer for Sequential RecommendationProceedings of the 32nd ACM International Conference on Information and Knowledge Management10.1145/3583780.3614773(976-986)Online publication date: 21-Oct-2023
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    • (2023)Fine-tuning Partition-aware Item Similarities for Efficient and Scalable RecommendationProceedings of the ACM Web Conference 202310.1145/3543507.3583240(823-832)Online publication date: 30-Apr-2023
    • (2023)Graph Collaborative Signals Denoising and Augmentation for RecommendationProceedings of the 46th International ACM SIGIR Conference on Research and Development in Information Retrieval10.1145/3539618.3591994(2037-2041)Online publication date: 19-Jul-2023
    • (2023)An Item–Item Collaborative Filtering Recommender System Based on Item Reviews: An Approach with Deep LearningVietnam Journal of Computer Science10.1142/S219688882350012410:04(517-536)Online publication date: 13-Sep-2023
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