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    J. Comput. Sci. Eng.  Vol. 37 (2018) 979-989
 

The psychological aspect: a study of implementing moral theories into real life

 
 

Bella Dong

   
J. Comput. Sci. Eng. 37 (2018) 979-983Published  5 September 2018    
 

Abstract: Moral development has been studied from various perspectives, and the fundamental structure is based on Piaget and Kohlberg¨s theories. The purpose of this research is to identify and classify different stages according to Kohlberg¨s theory, and moral is the sense of making the right choice or distinguishing right from wrong. The first phase of this project includes face-to-face interviews with 7th and 10th graders and their identity is anonymous. The final phase involves identifying and analyzing their stages regarding to their answers. By discovering their stages and contrasting results from 7th and 10th graders, I tend to focus on their differences in their interviews and answers. This will allow for more understanding towards moral developments in different stages, and may direct more and offer more experiences for further study on moral development for the researcher.

   
Keywords: Moral development; Lawrence Kohlberg; Piaget, Real-life application; Interviews.

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A survey of research on fine-grained sentiment analysis in Chinese

 
 

Yimeng Tang, Peijian Zhang, Youwei Yu

   
J. Comput. Sci. Eng. 37 (2018) 984-989Published  25 September 2018    
 

Abstract: To review the research progress of fine-grained sentiment analysis, and the classification (namely machine learning classification and classification based on dependency syntax and lexicon). We investigated the key issues, technologies, and application. The research of Chinese fine-grained sentiment analysis in China and the construction of corpus and other resources were introduced. Finally, the application prospect of fine-grained text analysis was introduced. This study helps to understand the key issues and key methods of the current research on fine-grained sentiment analysis.

   
Keywords: Fine-grained sentiment analysis; Weight calculation; Evaluation word extraction; Attribute word.

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A local transition for a class of stable graph

 
 

Rui Wang, Cheng Xu, Qianwen Zang

   
J. Comput. Sci. Eng. 37 (2018) 990-993Published  25 September 2018    
 

Abstract: In this paper, two classes of stable graphs with three types of edges are studied. These include the class of MC graphs and the class of ribbonless graphs. Their stability ensures the equivalence between graphs before and after the marginalizing and conditioning process. We propose a transition method of them so that simpler graph structures could be obtained.

   
Keywords: MC graph; Bayesian networks; Ribbonless graph.

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Heteroatom doped germanene and stanene as anchoring materials for lithium-sulfur batteries: a density functional theory study

 
 

Yue Yu, Aiping Fu, Yingqi Tang, Xiaotong Mao, Zonghua Wang

   
J. Comput. Sci. Eng. 37 (2018) 994-998Published  25 September 2018    
 

Abstract: With a high theoretical energy density, lithium sulfur (Li-S) batteries become one of the most promising candidates for next-generation energy storage devices. Effectively anchoring Li2Sn species on specific substrate is an important method to suppress the ^shuttle effect ̄. In this work, we have explored the adsorption and decomposition of Li2Sn species on heteroatom doped germanene and stanene monolayer using DFT computations. The results revealed that all Li2Sn species can be effectively adsorbed on the given substrates. Furthermore, the Li2Sn species on B-doped germanene can keep intactness, which suggest that the B-doped germanene is the most promising anchoring materials for Li-S batteries.

   
Keywords: Lithium sulfur batteries; density functional theory; shuttle effect; 2D materials.

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