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DLRS 2016: Proceedings of the 1st Workshop on Deep Learning for Recommender Systems
ACM2016 Proceeding
Publisher:
  • Association for Computing Machinery
  • New York
  • NY
  • United States
Conference:
DLRS 2016: Workshop on Deep Learning for Recommender Systems Boston MA USA 15 September 2016
ISBN:
978-1-4503-4795-2
Published:
15 September 2016
In-Cooperation:
IBMR

Bibliometrics
Abstract

No abstract available.

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invited-talk
Keynote: Deep learning for audio-based music recommendation

The advent of deep learning has made it possible to extract high-level information from perceptual signals without having to specify manually and explicitly how to obtain it; instead, this can be learned from examples. This creates opportunities for ...

research-article
Neural Autoregressive Collaborative Filtering for Implicit Feedback

This paper proposes implicit CF-NADE, a neural autoregressive model for collaborative filtering tasks using implicit feedback( e.g. click/watch/browse behaviors). We first convert a user's implicit feedback into a "like" vector and a confidence vector, ...

research-article
Open Access
Wide & Deep Learning for Recommender Systems

Generalized linear models with nonlinear feature transformations are widely used for large-scale regression and classification problems with sparse inputs. Memorization of feature interactions through a wide set of cross-product feature transformations ...

research-article
Hybrid Recommender System based on Autoencoders

A standard model for Recommender Systems is the Matrix Completion setting: given partially known matrix of ratings given by users (rows) to items (columns), infer the unknown ratings. In the last decades, few attempts where done to handle that objective ...

research-article
Improved Recurrent Neural Networks for Session-based Recommendations

Recurrent neural networks (RNNs) were recently proposed for the session-based recommendation task. The models showed promising improvements over traditional recommendation approaches. In this work, we further study RNN-based models for session-based ...

research-article
Exploring Deep Space: Learning Personalized Ranking in a Semantic Space

Recommender systems leverage both content and user interactions to generate recommendations that fit users' preferences. The recent surge of interest in deep learning presents new opportunities for exploiting these two sources of information. To ...

research-article
Recurrent Coevolutionary Latent Feature Processes for Continuous-Time Recommendation

Matching users to the right items at the right time is a fundamental task in recommender systems. As users interact with different items over time, users' and items' feature may drift, evolve and co-evolve over time. Traditional models based on static ...

research-article
Infusing Collaborative Recommenders with Distributed Representations

Recommender systems assist users in navigating complex information spaces and focus their attention on the content most relevant to their needs. Often these systems rely on user activity or descriptions of the content. Social annotation systems, in ...

Cited By

  1. Gu S, Wang C, Zhao G and Wu L (2023). Movie Recommendation Model Based on Attention Mechanism for Dynamically Capturing User Interest Evolution 2023 5th International Conference on Machine Learning, Big Data and Business Intelligence (MLBDBI), 10.1109/MLBDBI60823.2023.10481926, 979-8-3503-5993-0, (319-323)
  2. Li X, Sun L, Chen S, Wang H, Wen Q, Zhang X, Ding X and Loskot P (2023). Behavior sequence aggregation and attention mechanism-based interest recommendation Third International Conference on Advanced Algorithms and Neural Networks (AANN 2023), 10.1117/12.3005141, 9781510668355, (130)
  3. Wang H, Chen X and Srivastava H (2023). Analysis and visualization of the parameter space of matrix factorization-based recommender systems 2023 3rd International Conference on Applied Mathematics, Modelling and Intelligent Computing (CAMMIC 2023), 10.1117/12.2686703, 9781510667600, (209)
  4. Wang H, Chen X and Srivastava H (2023). Evolution of the online rating platform data structures and its implications for recommender systems 2023 3rd International Conference on Applied Mathematics, Modelling and Intelligent Computing (CAMMIC 2023), 10.1117/12.2686575, 9781510667600, (204)
  5. Xia X, Chen H, Zhu Y and Pei Z (2022). Automatic learning explicit and implicit feature interactions for click-through rate prediction International Conference on Mechanisms and Robotics (ICMAR 2022), 10.1117/12.2653077, 9781510657328, (202)
  6. Antunez L, Castellanos Avila J, Raposo G, Murga C, Walker A, Rittner L, Romero Castro E, Lepore N, Brieva J and Linguraru M (2021). A flexible AI pipeline for medical imaging in a radiology workflow Seventeenth International Symposium on Medical Information Processing and Analysis, 10.1117/12.2606146, 9781510650527, (22)
  7. Kuo K (2019). DeepTriangle: A Deep Learning Approach to Loss Reserving, Risks, 10.3390/risks7030097, 7:3, (97)
Contributors
  • Gravity Research & Development Ltd
  • Gravity Research & Development Ltd
  • Amazon.com, Inc.
  • Ben-Gurion University of the Negev
  • Ben-Gurion University of the Negev
  • Ben-Gurion University of the Negev

Recommendations

Acceptance Rates

Overall Acceptance Rate11of27submissions,41%
YearSubmittedAcceptedRate
DLRS 201811436%
DLRS 201716744%
Overall271141%