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Proceedings ArticleDOI

Alternating least squares for personalized ranking

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TLDR
This paper presents a computationally effective approach for the direct minimization of a ranking objective function, without sampling, and demonstrates by experiments on the Y!Music and Netflix data sets that the proposed method outperforms other implicit feedback recommenders in many cases in terms of the ErrorRate, ARP and Recall evaluation metrics.
Abstract
Two flavors of the recommendation problem are the explicit and the implicit feedback settings. In the explicit feedback case, users rate items and the user-item preference relationship can be modelled on the basis of the ratings. In the harder but more common implicit feedback case, the system has to infer user preferences from indirect information: presence or absence of events, such as a user viewed an item. One approach for handling implicit feedback is to minimize a ranking objective function instead of the conventional prediction mean squared error. The naive minimization of a ranking objective function is typically expensive. This difficulty is usually overcome by a trade-off: sacrificing the accuracy to some extent for computational efficiency by sampling the objective function. In this paper, we present a computationally effective approach for the direct minimization of a ranking objective function, without sampling. We demonstrate by experiments on the Y!Music and Netflix data sets that the proposed method outperforms other implicit feedback recommenders in many cases in terms of the ErrorRate, ARP and Recall evaluation metrics.

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Citations
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Proceedings ArticleDOI

Controlling Popularity Bias in Learning-to-Rank Recommendation

TL;DR: This paper introduces a flexible regularization-based framework to enhance the long-tail coverage of recommendation lists in a learning-to-rank algorithm and shows that regularization provides a tunable mechanism for controlling the trade-off between accuracy and coverage.
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Item Silk Road: Recommending Items from Information Domains to Social Users

TL;DR: This work presents a novel Neural Social Collaborative Ranking (NSCR) approach, which seamlessly sews up the user-item interactions in information domains and user-user connections in SNSs.
Proceedings ArticleDOI

BiNE: Bipartite Network Embedding

TL;DR: This work develops a representation learning method named BiNE, short for Bipartite Network Embedding, to learn the vertex representations for bipartite networks, and proposes a novel optimization framework by accounting for both the explicit and implicit relations in learning the vertices.
Journal ArticleDOI

Adaptive Bayesian personalized ranking for heterogeneous implicit feedbacks

TL;DR: A novel preference learning algorithm is designed to learn a confidence for each uncertain examination record with the help of transaction records and is called adaptive Bayesian personalized ranking (ABPR), which has the merits of uncertainty reduction on examination records and accurate pairwise preference learning on implicit feedbacks.
Journal ArticleDOI

Mining large streams of user data for personalized recommendations

TL;DR: An up-to-date overview of the use of data mining approaches for personalization and recommendation at Netflix and the most promising current research avenues and unsolved problems that deserve attention are pinpointed.
References
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Journal ArticleDOI

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.
Proceedings Article

BPR: Bayesian personalized ranking from implicit feedback

TL;DR: In this article, the authors proposed a generic optimization criterion BPR-Opt for personalized ranking that is the maximum posterior estimator derived from a Bayesian analysis of the problem, which is based on stochastic gradient descent with bootstrap sampling.
Journal ArticleDOI

A survey of collaborative filtering techniques

TL;DR: From basic techniques to the state-of-the-art, this paper attempts to present a comprehensive survey for CF techniques, which can be served as a roadmap for research and practice in this area.
Proceedings ArticleDOI

Collaborative Filtering for Implicit Feedback Datasets

TL;DR: This work identifies unique properties of implicit feedback datasets and proposes treating the data as indication of positive and negative preference associated with vastly varying confidence levels, which leads to a factor model which is especially tailored for implicit feedback recommenders.

The Netflix Prize

TL;DR: Netflix released a dataset containing 100 million anonymous movie ratings and challenged the data mining, machine learning and computer science communities to develop systems that could beat the accuracy of its recommendation system, Cinematch.
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