A Citation Recommendation System Using Deep Reinforcement Learning

Author(s):  
Akhil M. Nair ◽  
Nibir Kumar Paul ◽  
Jossy P. George
2021 ◽  
Author(s):  
Flavia Pires ◽  
Bilal Ahmad ◽  
Antonio Paulo Moreira ◽  
Paulo Leitao

2021 ◽  
Vol 12 (6) ◽  
pp. 1-21
Author(s):  
Pengzhan Guo ◽  
Keli Xiao ◽  
Zeyang Ye ◽  
Wei Zhu

Vehicle mobility optimization in urban areas is a long-standing problem in smart city and spatial data analysis. Given the complex urban scenario and unpredictable social events, our work focuses on developing a mobile sequential recommendation system to maximize the profitability of vehicle service providers (e.g., taxi drivers). In particular, we treat the dynamic route optimization problem as a long-term sequential decision-making task. A reinforcement-learning framework is proposed to tackle this problem, by integrating a self-check mechanism and a deep neural network for customer pick-up point monitoring. To account for unexpected situations (e.g., the COVID-19 outbreak), our method is designed to be capable of handling related environment changes with a self-adaptive parameter determination mechanism. Based on the yellow taxi data in New York City and vicinity before and after the COVID-19 outbreak, we have conducted comprehensive experiments to evaluate the effectiveness of our method. The results show consistently excellent performance, from hourly to weekly measures, to support the superiority of our method over the state-of-the-art methods (i.e., with more than 98% improvement in terms of the profitability for taxi drivers).


2021 ◽  
Author(s):  
Salman Sadiq Shuvo ◽  
Yasin Yilmaz

Aras activity dataset<div>NYISO dynamic electricity price</div><div>A2C implementation in Python</div><div><br></div><div>Article under review in IEEE Transactions on Smart Grid </div>


2021 ◽  
Author(s):  
Tham Vo

Abstract Recent KG-oriented recommendation techniques mainly focus on the direct interaction between entities in the given KGs as the rich information sources for leveraging the quality of recommendation outputs. However, they are still hindered by the heterogeneity, type-varied entities and their relationships in knowledge graphs (KG) as the heterogeneous information networks (HIN). This limitation seems challenging to build up an effective approach for the KG-based recommendation system in both semantic path-based exploitation and heterogeneous information extraction. To meet these challenges, we proposed a novel integrated HIN embedding with reinforcement learning (RL)-based feature engineering for recommendation, called as: HINRL4Rec. First of all, we apply the combined textual meta-path-based embedding approach for learning multiple-rich-schematic representations of user/item and their associated entities. Then, these extracted multi-typed embeddings of user and item entities are fused into the unified embedding spaces during the KG embedding process. Finally, the unified representations of users and items are then used to facilitate the RL-based policy-driven searching process in the next steps for performing the recommendation task. Extensive experiments in real-world datasets demonstrate the effectiveness of our proposed model in comparing with recent state-of-the-art recommendation baselines.


2021 ◽  
Author(s):  
Salman Sadiq Shuvo ◽  
Yasin Yilmaz

Aras activity dataset<div>NYISO dynamic electricity price</div><div>A2C implementation in Python</div><div><br></div><div>Article under review in IEEE Transactions on Smart Grid </div>


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