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Chenhao Wang
Chenhao Wang
The Chinese University of Hong Kong (ShenZhen)
Verified email at link.cuhk.edu.cn
Title
Cited by
Cited by
Year
When advertising meets assortment planning: Joint advertising and assortment optimization under multinomial logit model
C Wang, Y Wang, S Tang
International Conference on Combinatorial Optimization and Applications, 16-42, 2023
52023
Effective streaming low-tubal-rank tensor approximation via frequent directions
Q Yi, C Wang, K Wang, Y Wang
IEEE Transactions on Neural Networks and Learning Systems, 2022
32022
Simple is Enough: A Cascade Approximation for Attention-Based Satisficing Choice Models
P Gao, Y Liu, C Wang, Z Wang
Available at SSRN 4529802, 2023
22023
Assortment optimization for the multinomial logit model with repeated customer interactions
N Chen, P Gao, C Wang, Y Wang
Available at SSRN 4526247, 2023
22023
Sequential recommendation and pricing under the mixed cascade model
Y Liu, C Wang, P Gao, Z Wang
Available at SSRN 4382163, 2023
22023
Assortment optimization with repeated exposures and product-dependent patience cost
S Tang, J Yuan, C Wang, Y Wang, L Chen
Operations Research Letters 50 (1), 8-15, 2022
22022
A Bilevel View for Fluid Stockout-Based Substitution
Y Guo, C Wang, J Zhang
Available at SSRN, 2023
12023
An Improved Frequent Directions Algorithm for Low-Rank Approximation via Block Krylov Iteration
C Wang, Q Yi, X Liao, Y Wang
IEEE Transactions on Neural Networks and Learning Systems, 2023
12023
Deep Reinforcement Learning for Online Assortment Customization: A Data-Driven Approach
T Li, C Wang, Y Wang, S Tang
Available at SSRN 4413200, 2023
2023
A Fast and Accurate Frequent Directions Algorithm for Low Rank Approximation via Block Krylov Iteration
Q Yi, C Wang, X Liao, Y Wang
ICASSP 2020-2020 IEEE International Conference on Acoustics, Speech and …, 2020
2020
Sequential Recommendation and Pricing Under the Mixed Cascade Model
P Gao, Y Liu, C Wang, Z Wang
Web and Internet Economics LNCS 14413, 689, 0
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