Adversarial dropout for supervised and semi-supervised learning S Park, JK Park, SJ Shin, IC Moon Proceedings of the AAAI conference on artificial intelligence 32 (1), 2018 | 204 | 2018 |
Refine myself by teaching myself: Feature refinement via self-knowledge distillation M Ji, S Shin, S Hwang, G Park, IC Moon Proceedings of the IEEE/CVF conference on computer vision and pattern …, 2021 | 178 | 2021 |
Mining social networks for personalized email prioritization S Yoo, Y Yang, F Lin, IC Moon Proceedings of the 15th ACM SIGKDD international conference on Knowledge …, 2009 | 151 | 2009 |
Analysis of twitter lists as a potential source for discovering latent characteristics of users D Kim, Y Jo, IC Moon, A Oh ACM CHI workshop on microblogging 6, 2010 | 147 | 2010 |
Modeling and simulating terrorist networks in social and geospatial dimensions IC Moon, KM Carley IEEE Intelligent Systems 22 (5), 40-49, 2007 | 132 | 2007 |
Dirichlet variational autoencoder W Joo, W Lee, S Park, IC Moon Pattern Recognition 107, 107514, 2020 | 113 | 2020 |
Refining generative process with discriminator guidance in score-based diffusion models D Kim, Y Kim, SJ Kwon, W Kang, IC Moon arXiv preprint arXiv:2211.17091, 2022 | 93 | 2022 |
Efficient extraction of domain specific sentiment lexicon with active learning S Park, W Lee, IC Moon Pattern Recognition Letters 56, 38-44, 2015 | 87 | 2015 |
Soft truncation: A universal training technique of score-based diffusion model for high precision score estimation D Kim, S Shin, K Song, W Kang, IC Moon arXiv preprint arXiv:2106.05527, 2021 | 84 | 2021 |
ORA User's Guide 2008 KM Carley, D Columbus, M DeReno, J Reminga, I Moon Institute for Software Research, School of Computer Science. Pittsburgh …, 2009 | 77 | 2009 |
Augmented variational autoencoders for collaborative filtering with auxiliary information W Lee, K Song, IC Moon Proceedings of the 2017 ACM on Conference on Information and Knowledge …, 2017 | 72 | 2017 |
Counterfactual fairness with disentangled causal effect variational autoencoder H Kim, S Shin, JH Jang, K Song, W Joo, W Kang, IC Moon Proceedings of the AAAI Conference on Artificial Intelligence 35 (9), 8128-8136, 2021 | 62 | 2021 |
Maximum likelihood training of implicit nonlinear diffusion model D Kim, B Na, SJ Kwon, D Lee, W Kang, IC Moon Advances in neural information processing systems 35, 32270-32284, 2022 | 51 | 2022 |
Sequential recommendation with relation-aware kernelized self-attention M Ji, W Joo, K Song, YY Kim, IC Moon Proceedings of the AAAI conference on artificial intelligence 34 (04), 4304-4311, 2020 | 40 | 2020 |
Diagnosis prediction via medical context attention networks using deep generative modeling W Lee, S Park, W Joo, IC Moon 2018 IEEE International Conference on Data Mining (ICDM), 1104-1109, 2018 | 40 | 2018 |
Lada: Look-ahead data acquisition via augmentation for deep active learning YY Kim, K Song, JH Jang, IC Moon Advances in Neural Information Processing Systems 34, 22919-22930, 2021 | 39 | 2021 |
Hierarchical context enabled recurrent neural network for recommendation K Song, M Ji, S Park, IC Moon Proceedings of the AAAI conference on artificial intelligence 33 (01), 4983-4991, 2019 | 37 | 2019 |
Are we treating networks seriously? The growth of network research in public administration & public policy S Hwang, IC Moon Connections 29 (2), 4-17, 2009 | 37 | 2009 |
Personalized email prioritization based on content and social network analysis Y Yang, S Yoo, F Lin, IC Moon IEEE Intelligent Systems 25 (04), 12-18, 2010 | 36 | 2010 |
Identifying prescription patterns with a topic model of diseases and medications S Park, D Choi, M Kim, W Cha, C Kim, IC Moon Journal of biomedical informatics 75, 35-47, 2017 | 34 | 2017 |