Multi-level attentive deep user-item representation learning for recommendation system

2021 ◽  
Vol 433 ◽  
pp. 119-130
Author(s):  
Aminu Da'u ◽  
Naomie Salim ◽  
Rabiu Idris
Author(s):  
Ting-Hsiang Wang ◽  
Hsiu-Wei Yang ◽  
Chih-Ming Chen ◽  
Ming-Feng Tsai ◽  
Chuan-Ju Wang

Author(s):  
Hong Wen ◽  
Jing Zhang ◽  
Quan Lin ◽  
Keping Yang ◽  
Pipei Huang

Developing effective and efficient recommendation methods is very challenging for modern e-commerce platforms. Generally speaking, two essential modules named “ClickThrough Rate Prediction” (CTR) and “Conversion Rate Prediction” (CVR) are included, where CVR module is a crucial factor that affects the final purchasing volume directly. However, it is indeed very challenging due to its sparseness nature. In this paper, we tackle this problem by proposing multiLevel Deep Cascade Trees (ldcTree), which is a novel decision tree ensemble approach. It leverages deep cascade structures by stacking Gradient Boosting Decision Trees (GBDT) to effectively learn feature representation. In addition, we propose to utilize the cross-entropy in each tree of the preceding GBDT as the input feature representation for next level GBDT, which has a clear explanation, i.e., a traversal from root to leaf nodes in the next level GBDT corresponds to the combination of certain traversals in the preceding GBDT. The deep cascade structure and the combination rule enable the proposed ldcTree to have a stronger distributed feature representation ability. Moreover, inspired by ensemble learning, we propose an Ensemble ldcTree (E-ldcTree) to encourage the model’s diversity and enhance the representation ability further. Finally, we propose an improved Feature learning method based on EldcTree (F-EldcTree) for taking adequate use of weak and strong correlation features identified by pretrained GBDT models. Experimental results on off-line data set and online deployment demonstrate the effectiveness of the proposed methods.


IEEE Access ◽  
2019 ◽  
Vol 7 ◽  
pp. 73970-73982 ◽  
Author(s):  
Jianming Lv ◽  
Jiajie Zhong ◽  
Jintao Liang ◽  
Zhenguo Yang

Entropy ◽  
2021 ◽  
Vol 23 (11) ◽  
pp. 1453
Author(s):  
Chunrui Zhang ◽  
Shen Wang ◽  
Dechen Zhan ◽  
Mingyong Yin ◽  
Fang Lou

Users of social networks have a variety of social statuses and roles. For example, the users of Weibo include celebrities, government officials, and social organizations. At the same time, these users may be senior managers, middle managers, or workers in companies. Previous studies on this topic have mainly focused on using the categorical, textual and topological data of a social network to predict users’ social statuses and roles. However, this cannot fully reflect the overall characteristics of users’ social statuses and roles in a social network. In this paper, we consider what social network structures reflect users’ social statuses and roles since social networks are designed to connect people. Taking an Enron email dataset as an example, we analyzed a preprocessing mechanism used for social network datasets that can extract users’ dynamic behavior features. We further designed a novel social network representation learning algorithm in order to infer users’ social statuses and roles in social networks through the use of an attention and gate mechanism on users’ neighbors. The extensive experimental results gained from four publicly available datasets indicate that our solution achieves an average accuracy improvement of 2% compared with GraphSAGE-Mean, which is the best applicable inductive representation learning method.


Author(s):  
Zhu Sun ◽  
Jie Yang ◽  
Jie Zhang ◽  
Alessandro Bozzon ◽  
Yu Chen ◽  
...  

Representation learning (RL) has recently proven to be effective in capturing local item relationships by modeling item co-occurrence in individual user's interaction record. However, the value of RL for recommendation has not reached the full potential due to two major drawbacks: 1) recommendation is modeled as a rating prediction problem but should essentially be a personalized ranking one; 2) multi-level organizations of items are neglected for fine-grained item relationships. We design a unified Bayesian framework MRLR to learn user and item embeddings from a multi-level item organization, thus benefiting from RL as well as achieving the goal of personalized ranking. Extensive validation on real-world datasets shows that MRLR consistently outperforms state-of-the-art algorithms.


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