This shows you the differences between two versions of the page.
Both sides previous revision Previous revision Next revision | Previous revision | ||
attention_workshop [2018/07/30 01:58] ahpong |
attention_workshop [2018/10/10 23:29] (current) cwtsai |
||
---|---|---|---|
Line 107: | Line 107: | ||
* materials: https:// | * materials: https:// | ||
+ | |||
+ | |||
+ | ====== Content-based Recommendation Workshop ====== | ||
+ | |||
+ | ===== Date & Location ===== | ||
+ | * Date : 2018/10/12 Friday 14:00-16:30 | ||
+ | * Location: | ||
+ | |||
+ | ===== Agenda ===== | ||
+ | * materials: [[https:// | ||
+ | * pdf: | ||
====== Talks in Emotibot====== | ====== Talks in Emotibot====== | ||
- | ^Name^Talk Title^Date & Time ^Abstract^ | + | ^Name^Talk Title^Date & Time ^Abstract^Slides^ |
- | | 邱德旺 | Attention Model on Stance Classification | 8/2 14:00~15:00 | Stance classification is the task aiming to understand the two given inputs and determine the relation between the stance of them. One of the given inputs is a target claim, which is a statement about a certain target. The other is a headline or an article that agrees with, opposes to, or discusses the target claim. In this paper, we propose a model with the polarity classifier and attention mechanism, the Attention Model(AM) with similarity function to extract the important information from both short and long content. The experiments show that the proposed methods perform better than the baseline and competitors. | | + | | 邱德旺 | Attention Model on Stance Classification | 8/2 14:00~15:00 | Stance classification is the task aiming to understand the two given inputs and determine the relation between the stance of them. One of the given inputs is a target claim, which is a statement about a certain target. The other is a headline or an article that agrees with, opposes to, or discusses the target claim. In this paper, we propose a model with the polarity classifier and attention mechanism, the Attention Model(AM) with similarity function to extract the important information from both short and long content. The experiments show that the proposed methods perform better than the baseline and competitors. |
- | |Zi-Pong Lim| Deep Reinforcement Learning for Team Draft Recommendations in MOBA Games | 8/9 15:00-16:00 |Multiplayer Online Battle Arena (MOBA) is a genre of games in which two teams of players compete against each other for a certain objective. Both teams taking turns picking one draft at a time from a pool of characters before a match begins. In this paper, we propose a team draft recommendation system based on Deep Reinforcement Learning, that recommends drafts for a team, given current enemy drafts and ally drafts. All the experiments and results in this paper will be based on a popular MOBA called DOTA2.| | + | | 林宗興 | Finding Adversarial Examples for Text Classification: |
- | |Chao-Chung Wu| An Attention Based Neural Network Model for Unsupervised Lyrics Rewriting | + | |Chih-Te Lai| Non-parallel Text Style Transfer by Latent Space Alignment |
+ | |Zi-Pong Lim| Deep Reinforcement Learning for Team Draft Recommendations in MOBA Games | 8/9 15:00-16:00 |Multiplayer Online Battle Arena (MOBA) is a genre of games in which two teams of players compete against each other for a certain objective. Both teams taking turns picking one draft at a time from a pool of characters before a match begins. In this paper, we propose a team draft recommendation system based on Deep Reinforcement Learning, that recommends drafts for a team, given current enemy drafts and ally drafts. All the experiments and results in this paper will be based on a popular MOBA called DOTA2.|[[https:// | ||
+ | |Chao-Chung Wu| An Attention Based Neural Network Model for Unsupervised Lyrics Rewriting |