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Learning Heterogeneous Temporal Patterns of User Preference for Timely Recommendation

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TLDR
TimelyRec as discussed by the authors proposes a novel recommender system for timely recommendations, which jointly learns the heterogeneous temporal patterns of user preference considering all of the defined characteristics and proposes a cascade of two encoders to capture the temporal patterns.
Abstract
Recommender systems have achieved great success in modeling user’s preferences on items and predicting the next item the user would consume. Recently, there have been many efforts to utilize time information of users’ interactions with items to capture inherent temporal patterns of user behaviors and offer timely recommendations at a given time. Existing studies regard the time information as a single type of feature and focus on how to associate it with user preferences on items. However, we argue they are insufficient for fully learning the time information because the temporal patterns of user preference are usually heterogeneous. A user’s preference for a particular item may 1) increase periodically or 2) evolve over time under the influence of significant recent events, and each of these two kinds of temporal pattern appears with some unique characteristics. In this paper, we first define the unique characteristics of the two kinds of temporal pattern of user preference that should be considered in time-aware recommender systems. Then we propose a novel recommender system for timely recommendations, called TimelyRec, which jointly learns the heterogeneous temporal patterns of user preference considering all of the defined characteristics. In TimelyRec, a cascade of two encoders captures the temporal patterns of user preference using a proposed attention module for each encoder. Moreover, we introduce an evaluation scenario that evaluates the performance on predicting an interesting item and when to recommend the item simultaneously in top-K recommendation (i.e., item-timing recommendation). Our extensive experiments on a scenario for item recommendation and the proposed scenario for item-timing recommendation on real-world datasets demonstrate the superiority of TimelyRec and the proposed attention modules.

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Citations
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Proceedings ArticleDOI

Hierarchical Item Inconsistency Signal Learning for Sequence Denoising in Sequential Recommendation

TL;DR: A novel sequence denoising paradigm for sequential recommendation by learning hierarchical item inconsistency signals is proposed, which first learns two levels of inconsistency signals in input sequences, and then generates noiseless subsequences for subsequent sequential recommenders.
Posted Content

Time-aware Path Reasoning on Knowledge Graph for Recommendation

TL;DR: Wang et al. as mentioned in this paper proposed a novel Time-aware Path Reasoning for Recommendation (TPRec) method, which leverages the potential of temporal information to offer better recommendation with plausible explanations.
Journal ArticleDOI

Factorizing time-heterogeneous Markov transition for temporal recommendation

TL;DR: Zhang et al. as mentioned in this paper proposed the Neural-based Time-heterogeneous Markov Transition (NeuralTMT) model, where users' temporal behaviors are mathematically simplified as the third-order Markov transition tensors and a linear co-factorization model is proposed to learn the time-evolving user/item factors from these tensors.
Proceedings ArticleDOI

Multi-Faceted Global Item Relation Learning for Session-Based Recommendation

TL;DR: It is shown that learning negative relations is critical for session-based recommendation and a novel multi-faceted global item relation (MGIR) model is devised to encode different relations using different aggregation layers and generate enhanced session representations by fusing positive and negative relations.
Proceedings ArticleDOI

Temporal Contrastive Pre-Training for Sequential Recommendation

TL;DR: A unified contrastive learning framework with four specially designed pre-training objectives for fusing temporal information into sequential representations is developed, which is more stable than modeling periodicity at the item level.
References
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Proceedings ArticleDOI

Effective Approaches to Attention-based Neural Machine Translation

TL;DR: A global approach which always attends to all source words and a local one that only looks at a subset of source words at a time are examined, demonstrating the effectiveness of both approaches on the WMT translation tasks between English and German in both directions.
Proceedings ArticleDOI

Neural Collaborative Filtering

TL;DR: This work strives to develop techniques based on neural networks to tackle the key problem in recommendation --- collaborative filtering --- on the basis of implicit feedback, and presents a general framework named NCF, short for Neural network-based Collaborative Filtering.

Foundations of the PARAFAC procedure: Models and conditions for an "explanatory" multi-model factor analysis

TL;DR: It is shown that an extension of Cattell's principle of rotation to Proportional Profiles (PP) offers a basis for determining explanatory factors for three-way or higher order multi-mode data.
Proceedings ArticleDOI

Image-Based Recommendations on Styles and Substitutes

TL;DR: The approach is not based on fine-grained modeling of user annotations but rather on capturing the largest dataset possible and developing a scalable method for uncovering human notions of the visual relationships within.
Proceedings ArticleDOI

What to Do Next: Modeling User Behaviors by Time-LSTM.

TL;DR: Experimental results on two real-world datasets show the superiority of the recommendation method using TimeLSTM over the traditional methods.
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