Difference between revisions of "Spring 2017 CS292F Syllabus"
From courses
Line 3: | Line 3: | ||
*04/11 Word embeddings | *04/11 Word embeddings | ||
** [https://ronan.collobert.com/pub/matos/2008_nlp_icml.pdf A Unified Architecture for Natural Language Processing: Deep Neural Networks with Multitask Learning, Collobert and Weston, ICML 2008] | ** [https://ronan.collobert.com/pub/matos/2008_nlp_icml.pdf A Unified Architecture for Natural Language Processing: Deep Neural Networks with Multitask Learning, Collobert and Weston, ICML 2008] | ||
+ | ** [http://www.anthology.aclweb.org/D/D14/D14-1162.pdf Glove: Global Vectors for Word Representation, J Pennington, R Socher, CD Manning - EMNLP, 2014] | ||
** [http://www.aclweb.org/anthology/P15-1173 AutoExtend: Extending Word Embeddings to Embeddings for Synsets and Lexemes, Rothe and Schutze, ACL 2015] | ** [http://www.aclweb.org/anthology/P15-1173 AutoExtend: Extending Word Embeddings to Embeddings for Synsets and Lexemes, Rothe and Schutze, ACL 2015] | ||
− | |||
*04/13 Knowledge base embeddings | *04/13 Knowledge base embeddings | ||
** [http://machinelearning.wustl.edu/mlpapers/paper_files/ICML2011Nickel_438.pdf A three-way model for collective learning on multi-relational data, M Nickel, V Tresp, HP Kriegel, ICML 2011] | ** [http://machinelearning.wustl.edu/mlpapers/paper_files/ICML2011Nickel_438.pdf A three-way model for collective learning on multi-relational data, M Nickel, V Tresp, HP Kriegel, ICML 2011] |
Revision as of 12:02, 5 April 2017
- 04/04 Introduction, logistics, NLP, and deep learning.
- 04/06 Tips for a successful class project
- 04/11 Word embeddings
- A Unified Architecture for Natural Language Processing: Deep Neural Networks with Multitask Learning, Collobert and Weston, ICML 2008
- Glove: Global Vectors for Word Representation, J Pennington, R Socher, CD Manning - EMNLP, 2014
- AutoExtend: Extending Word Embeddings to Embeddings for Synsets and Lexemes, Rothe and Schutze, ACL 2015
- 04/13 Knowledge base embeddings
- A three-way model for collective learning on multi-relational data, M Nickel, V Tresp, HP Kriegel, ICML 2011
- Translating embeddings for modeling multi-relational data, A Bordes, N Usunier, A Garcia-Duran, NIPS 2013
- A Review of Relational Machine Learning for Knowledge Graphs, Nichel et al., Proceedings of the IEEE
- 04/18 Neural network basics (Project proposal due, HW1 out)
- 04/20 Recursive Neural Networks
- 04/25 RNNs (NLP seminar: Stanford NLP's Jiwei Li 04/26)
- 04/27 LSTMs/GRUs
- 05/02 Sequence-to-sequence models and neural machine translation (HW1 due and HW2 out)
- 05/04 Attention mechanisms
- 05/09 Project: mid-term presentation (1)
- 05/11 Project: mid-term presentation (2)
- 05/16 Convolutional Neural Networks (HW2 due)
- 05/18 Language and vision
- 05/23 Deep Reinforcement Learning 1
- 05/25 Deep Reinforcement Learning 2
- 05/30 Unsupervised Learning
- 06/01 Project: final presentation (1)
- 06/06 Project: final presentation (2)
- 06/08 Project: final presentation (3)
- 06/10 23:59PM PT Project Final Report Due.