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Young-Jin Park
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Cited by
Year
Adaptive Path-Integral Autoencoders: Representation Learning and Planning for Dynamical Systems
JS Ha, YJ Park, HJ Chae, SS Park, HL Choi
Advances in Neural Information Processing Systems, 8927-8938, 2018
302018
One4all user representation for recommender systems in e-commerce
K Shin, H Kwak, KM Kim, M Kim, YJ Park, J Jeong, S Jung
arXiv preprint arXiv:2106.00573, 2021
242021
Tripartite heterogeneous graph propagation for large-scale social recommendation
KM Kim, D Kwak, H Kwak, YJ Park, S Sim, JH Cho, M Kim, J Kwon, ...
13th ACM Conference on Recommender Systems, 2019
23*2019
Deep gaussian process-based bayesian inference for contaminant source localization
YJ Park, PM Tagade, HL Choi
Ieee Access 6, 49432-49449, 2018
162018
Multi-manifold learning for large-scale targeted advertising system
K Shin, YJ Park, KM Kim, S Kwon
arXiv preprint arXiv:2007.02334, 2020
72020
Vq-ar: Vector quantized autoregressive probabilistic time series forecasting
K Rasul, YJ Park, MN Ramström, KM Kim
arXiv preprint arXiv:2205.15894, 2022
62022
Online Gaussian process state-space model: Learning and planning for partially observable dynamical systems
SS Park, YJ Park, Y Min, HL Choi
International Journal of Control, Automation and Systems 20 (2), 601-617, 2022
52022
div2vec: diversity-emphasized node embedding
J Jeong, JM Yun, H Keam, YJ Park, Z Park, J Cho
arXiv preprint arXiv:2009.09588, 2020
52020
A worrying analysis of probabilistic time-series models for sales forecasting
S Jung, KM Kim, H Kwak, YJ Park
PMLR, 2020
52020
Global-local item embedding for temporal set prediction
S Jung, YJ Park, J Jeong, KM Kim, H Kim, M Kim, H Kwak
Proceedings of the 15th ACM Conference on Recommender Systems, 674-679, 2021
42021
A neural process approach for probabilistic reconstruction of no-data gaps in lunar digital elevation maps
YJ Park, HL Choi
Aerospace Science and Technology 113, 106672, 2021
32021
Distilling a hierarchical policy for planning and control via representation and reinforcement learning
JS Ha, YJ Park, HJ Chae, SS Park, HL Choi
2021 IEEE International Conference on Robotics and Automation (ICRA), 4459-4466, 2021
32021
Hop sampling: A simple regularized graph learning for non-stationary environments
YJ Park, K Shin, KM Kim
arXiv preprint arXiv:2006.14897, 2020
32020
Uncertainty-aware meta-learning for multimodal task distributions
C Almecija, A Sharma, N Azizan
22022
Bayesian Nonparametric State-Space Model for System Identification with Distinguishable Multimodal Dynamics
YJ Park, SS Park, HL Choi
Journal of Aerospace Information Systems 18 (3), 116-131, 2021
22021
Representation reliability and its impact on downstream tasks
YJ Park, H Wang, S Ardeshir, N Azizan
arXiv preprint arXiv:2306.00206, 2023
12023
A Large-Scale Ensemble Learning Framework for Demand Forecasting
YJ Park, D Kim, F Odermatt, J Lee, KM Kim
2022 IEEE International Conference on Data Mining (ICDM), 378-387, 2022
12022
Infossm: Interpretable unsupervised learning of nonparametric state-space model for multi-modal dynamics
YJ Park, HL Choi
AIAA Scitech 2019 Forum, 0681, 2019
12019
A bayesian approach to learning and planning for partially observable dynamical systems
SS Park, YJ Park, HL Choi
AIAA Scitech 2019 Forum, 0398, 2019
12019
Efficient sensor network planning based on approximate potential games
SJ Lee, YJ Park, HL Choi
International Journal of Distributed Sensor Networks 14 (6), 1550147718781454, 2018
12018
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Articles 1–20