Full Custom Layout of Neural Network Processing Element Using Push Pull D Flip Flop and Modified Carry Look Ahead Adder

Author(s):  
Adiwena Putra ◽  
Trio Adiono
2005 ◽  
Vol 76 (5) ◽  
pp. 053104 ◽  
Author(s):  
Martín G. González ◽  
Alejandro L. Peuriot ◽  
Verónica B. Slezak ◽  
Guillermo D. Santiago

2021 ◽  
Vol 336 ◽  
pp. 05010
Author(s):  
Ziteng Wu ◽  
Chengyun Song ◽  
Yunqing Chen ◽  
Lingxuan Li

The interaction history between users and items is usually stored and displayed in the form of bipartite graphs. Neural network recommendation based on the user-item bipartite graph has a significant effect on alleviating the long-standing data sparseness and cold start of the recommendation system. The whole paper is based on the bipartite graph. An review of the recommendation system of graphs summarizes the three characteristics of graph neural network processing bipartite graph data in the recommendation field: interchangeability, Multi-hop transportability, and strong interpretability. The biggest contribution of the full paper is that it summarizes the general framework of graph neural network processing bipartite graph recommendation from the models with the best recommendation effect in the past three years: embedding layer, propagation update layer, and prediction layer. Although there are subtle differences between different models, they are all this framework can be applied, and different models can be regarded as variants of this general model, that is, other models are fine-tuned on the basis of this framework. At the end of the paper, the latest research progress is introduced, and the main challenges and research priorities that will be faced in the future are pointed out.


2018 ◽  
Vol 4 (8) ◽  
pp. eaat5218 ◽  
Author(s):  
Steven G. Worswick ◽  
James A. Spencer ◽  
Gunnar Jeschke ◽  
Ilya Kuprov

Sign in / Sign up

Export Citation Format

Share Document