Difference between revisions of "Fall 2017 CS595I Advanced NLP/ML Seminar"

From courses
Jump to: navigation, search
 
(3 intermediate revisions by the same user not shown)
Line 4: Line 4:
 
If you registered this class, you should contact the instructor to lead the discussion of one paper below.
 
If you registered this class, you should contact the instructor to lead the discussion of one paper below.
 
If you don't lead the discussion, you will then need to write a 3-page final report in NIPS 2017 style,  
 
If you don't lead the discussion, you will then need to write a 3-page final report in NIPS 2017 style,  
comparing any two of the papers below.
+
comparing any two of the papers below. '''Due: 12/18, 23:59pm PT''' to william@cs.ucsb.edu.
  
 
*09/26:  
 
*09/26:  
Line 43: Line 43:
  
 
*11/28:
 
*11/28:
 +
** Austin: Deep Reinforcement Learning that Matters, Henderson et al., arxiv https://arxiv.org/pdf/1709.06560.pdf
 
** Adam: Generalization in Deep Learning, https://arxiv.org/pdf/1710.05468.pdf  
 
** Adam: Generalization in Deep Learning, https://arxiv.org/pdf/1710.05468.pdf  
** Austin: Deep Reinforcement Learning that Matters, Henderson et al., arxiv https://arxiv.org/pdf/1709.06560.pdf
 
  
 
*12/05: No meeting, NIPS conference.
 
*12/05: No meeting, NIPS conference.

Latest revision as of 17:00, 28 November 2017

Time: Tuesday 5-6pm. Location: HFH 1132.

If you registered this class, you should contact the instructor to lead the discussion of one paper below. If you don't lead the discussion, you will then need to write a 3-page final report in NIPS 2017 style, comparing any two of the papers below. Due: 12/18, 23:59pm PT to william@cs.ucsb.edu.

  • 09/26:
    • Mahnaz Summer research presentation: Reinforced Pointer-Generator Network for Abstractive Summarization.
    • Xin: FeUdal Networks for Hierarchical Reinforcement Learning, Vezhnevets et al., ICML 2017 https://arxiv.org/pdf/1703.01161.pdf
  • 12/05: No meeting, NIPS conference.
  • 12/12: No meeting, NAACL deadline.

Word Embeddings

Relational Learning and Reasoning

Reinforcement Learning

Generation

Dialog

NLP for Computational Social Science