Multimodal deep learning J Ngiam, A Khosla, M Kim, J Nam, H Lee, AY Ng ICML, 2011 | 2414 | 2011 |
On optimization methods for deep learning QV Le, J Ngiam, A Coates, A Lahiri, B Prochnow, AY Ng ICML, 2011 | 943 | 2011 |
Tiled convolutional neural networks J Ngiam, Z Chen, D Chia, PW Koh, QV Le, AY Ng Advances in neural information processing systems, 1279-1287, 2010 | 329 | 2010 |
Gpipe: Efficient training of giant neural networks using pipeline parallelism Y Huang, Y Cheng, A Bapna, O Firat, D Chen, M Chen, HJ Lee, J Ngiam, ... Advances in neural information processing systems, 103-112, 2019 | 328 | 2019 |
ICA with reconstruction cost for efficient overcomplete feature learning Q Le, A Karpenko, J Ngiam, A Ng Advances in neural information processing systems 24, 1017-1025, 2011 | 321 | 2011 |
Sparse filtering J Ngiam, Z Chen, SA Bhaskar, PW Koh, AY Ng Advances in neural information processing systems, 1125-1133, 2011 | 250 | 2011 |
Learning deep energy models J Ngiam, Z Chen, PW Koh, AY Ng Proceedings of the 28th international conference on machine learning (ICML …, 2011 | 141 | 2011 |
Scalability in perception for autonomous driving: Waymo open dataset P Sun, H Kretzschmar, X Dotiwalla, A Chouard, V Patnaik, P Tsui, J Guo, ... Proceedings of the IEEE/CVF Conference on Computer Vision and Pattern …, 2020 | 111 | 2020 |
A Classification-Based Polyphonic Piano Transcription Approach Using Learned Feature Representations. J Nam, J Ngiam, H Lee, M Slaney Ismir, 175-180, 2011 | 96 | 2011 |
UFLDL tutorial A Ng, J Ngiam, CY Foo, Y Mai, C Suen 2012)[2014-08-12]. http://deeplearning. stanford. edu/wiki/index. php …, 2010 | 92 | 2010 |
Experience is a double-edged sword: A computational model of the encoding/retrieval trade-off with familiarity LM Reder, C Paynter, RA Diana, J Ngiam, D Dickison Psychology of learning and motivation 48, 271-312, 2007 | 56 | 2007 |
Domain adaptive transfer learning with specialist models J Ngiam, D Peng, V Vasudevan, S Kornblith, QV Le, R Pang arXiv preprint arXiv:1811.07056, 2018 | 50 | 2018 |
End-to-end multi-view fusion for 3d object detection in lidar point clouds Y Zhou, P Sun, Y Zhang, D Anguelov, J Gao, T Ouyang, J Guo, J Ngiam, ... Conference on Robot Learning, 923-932, 2020 | 39 | 2020 |
The psychology of learning and motivation SK Reed, JA Johnsen, C Bower | 31 | 1977 |
Condconv: Conditionally parameterized convolutions for efficient inference B Yang, G Bender, QV Le, J Ngiam Advances in Neural Information Processing Systems, 1307-1318, 2019 | 29 | 2019 |
Unsupervised feature learning and deep learning A Ng, J Ngiam, CY Foo, Y Mai, C Suen, A Coates, A Maas, A Hannun, ... Technical report, Stanford University, 2013 | 26 | 2013 |
Deep learning A Ng, J Ngiam, CY Foo, Y Mai CS229 Lecture Notes, 1-30, 2014 | 23 | 2014 |
Starnet: Targeted computation for object detection in point clouds J Ngiam, B Caine, W Han, B Yang, Y Chai, P Sun, Y Zhou, X Yi, O Alsharif, ... arXiv preprint arXiv:1908.11069, 2019 | 18 | 2019 |
Using videos to evaluate image model robustness K Gu, B Yang, J Ngiam, Q Le, J Shlens arXiv preprint arXiv:1904.10076, 2019 | 16 | 2019 |
Improving 3D Object Detection through Progressive Population Based Augmentation S Cheng, Z Leng, ED Cubuk, B Zoph, C Bai, J Ngiam, Y Song, B Caine, ... arXiv preprint arXiv:2004.00831, 2020 | 9 | 2020 |