Facilitating CoDesign with Automatic Code Similarity Learning

Author(s):  
Tan Nguyen ◽  
Erich Strohmaier ◽  
John Shalf
Author(s):  
Zhuoxin Zhan ◽  
Liulan Zhong ◽  
Jing Lin ◽  
Weike Pan ◽  
Zhong Ming
Keyword(s):  

Author(s):  
Jongseong Choi ◽  
Ju An Park ◽  
Shirley J. Dyke ◽  
Chul Min Yeum ◽  
Xiaoyu Liu ◽  
...  

Author(s):  
Cuicui Kang ◽  
Shengcai Liao ◽  
Yonghao He ◽  
Jian Wang ◽  
Wenjia Niu ◽  
...  
Keyword(s):  

Author(s):  
Bjørn Magnus Mathisen ◽  
Kerstin Bach ◽  
Agnar Aamodt

AbstractAquaculture as an industry is quickly expanding. As a result, new aquaculture sites are being established at more exposed locations previously deemed unfit because they are more difficult and resource demanding to safely operate than are traditional sites. To help the industry deal with these challenges, we have developed a decision support system to support decision makers in establishing better plans and make decisions that facilitate operating these sites in an optimal manner. We propose a case-based reasoning system called aquaculture case-based reasoning (AQCBR), which is able to predict the success of an aquaculture operation at a specific site, based on previously applied and recorded cases. In particular, AQCBR is trained to learn a similarity function between recorded operational situations/cases and use the most similar case to provide explanation-by-example information for its predictions. The novelty of AQCBR is that it uses extended Siamese neural networks to learn the similarity between cases. Our extensive experimental evaluation shows that extended Siamese neural networks outperform state-of-the-art methods for similarity learning in this task, demonstrating the effectiveness and the feasibility of our approach.


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