This is an old revision of the document!
Active Learning Workshop
-
Active Learning for Multi-Label Classification
Multi-Label Active Learning from Crowds, arXiv, 2015
Effective Multi-Label Active Learning for Text Classification, KDD, 2009
Active Learning with Multi-label SVM Classification, IJCAI, 2013
Active Query Driven by Uncertainty and Diversity for Incremental Multi-label Learning, ICDM, 2013
Active Learning by Querying Informative and Representative Examples, IEEE Transactions on Pattern Analysis and Machine Intelligence, 2014
Multi-Label Active Learning: Query Type Matters, IJCAI, 2015
-
Machine Reasoning Workshop
This workshop is prepared for Emotibot.
Date & Location
Agenda
Attention Workshop
This workshop is prepared for Emotibot.
Date & Location
Agenda
* Whole PDF : Attention Workshop
Session1 : Introduction to Attention
Session2 : Different Attention Mechanism
Session3 : More Different Attention Mechanism
Graph Embedding Workshop
This workshop is prepared for Emotibot.
Date & Location
Agenda
Adversarial Examples Workshop
Date & Location
Agenda
Session 1 (45 mins) Introduction (Fred)
Intro
Session 2 (45 mins) Defense (Alicia)
Defense
-
Deep Natural Language generation Workshop
Date & Location
Agenda
Session 1 (15 mins) Introduction
Session 2 (45 mins) Basic and traditional tasks introduction
Session 3 (1.5 hr) More tasks and advanced solution models.
materials:
Privacy-preserving Machine Learning Workshop
Date & Location
Agenda
Talks in Emotibot
Name | Talk Title | Date & Time | Abstract |
Chao-Chung Wu | An Attention Based Neural Network Model for Unsupervised Lyrics Rewriting | 8/9 16:00-17:00 | Creative writing has become a standard task to showcase the power of artificial intelligence. This work tackles a challenging task in this area, the lyrics rewriting. We rewrite the original lyrics to lyrics which are similar with the original lyrics in terms of segmentation, but user may designate different style of rewriting in PoS, rhyme and emotion as the rewritten lyrics. We propose a multi-encoder RNN based model for this task and do automatic evaluation and human study to evaluate the effectiveness of the model. Last but not least, we observe the attention changes during the training of model, and explain how the model learns the rhymes and PoS with our model structure. |