Multi-National Information Sharing -- Cross Domain Collaborative Information Environment (CDCIE) Solution. Revision 4

2005 ◽  
Author(s):  
Boyd Fletcher ◽  
Dana Hare
Author(s):  
Michael Atighetchi ◽  
Jonathan Webb ◽  
Partha Pal ◽  
Joseph Loyall ◽  
Azer Bestavros ◽  
...  

Author(s):  
Aibo Guo ◽  
Xinyi Li ◽  
Ning Pang ◽  
Xiang Zhao

Community Q&A forum is a special type of social media that provides a platform to raise questions and to answer them (both by forum participants), to facilitate online information sharing. Currently, community Q&A forums in professional domains have attracted a large number of users by offering professional knowledge. To support information access and save users’ efforts of raising new questions, they usually come with a question retrieval function, which retrieves similar existing questions (and their answers) to a user’s query. However, it can be difficult for community Q&A forums to cover all domains, especially those emerging lately with little labeled data but great discrepancy from existing domains. We refer to this scenario as cross-domain question retrieval. To handle the unique challenges of cross-domain question retrieval, we design a model based on adversarial training, namely, X-QR , which consists of two modules—a domain discriminator and a sentence matcher. The domain discriminator aims at aligning the source and target data distributions and unifying the feature space by domain-adversarial training. With the assistance of the domain discriminator, the sentence matcher is able to learn domain-consistent knowledge for the final matching prediction. To the best of our knowledge, this work is among the first to investigate the domain adaption problem of sentence matching for community Q&A forums question retrieval. The experiment results suggest that the proposed X-QR model offers better performance than conventional sentence matching methods in accomplishing cross-domain community Q&A tasks.


Author(s):  
Chen Liu ◽  
Bao-Hong Shen ◽  
Soon Y. Oh ◽  
Mario Gerla ◽  
Jens Palsberg ◽  
...  

2010 ◽  
Author(s):  
Michael Atighetchi ◽  
Jonathan Webb ◽  
Partha Pal ◽  
Joseph Loyall ◽  
Azer Bestavros ◽  
...  

The main trend of mass media evolution in the world is the desire for creation of the information environment, primarily related to the latest occurrence of digital technologies. Today, Russian and Western journalism is on the eve of a transition to a new level. Over the past decades, all traditional mass media models have become digital. These changes contribute to the active development of “new mass media", that is, the acquisition of their increasing relevance in public life. This paper identifies features of the modern mass media space. The main features of the “new mass media”, its characteristics are described. The paper is devoted to the analysis of the development of new mass media in the Republic of Tatarstan. The main goal of the work is to identify the characteristics of promotion of Tatar-speaking mass media in the Internet environment in the context of the process of their multimediaization and the emergence of convergent editions, forecasting the future vector of development of national Tatar-speaking journalism. In the national information space, new mass media are becoming increasingly active and successful. They are gradually replacing traditional mass media resources. However, their promotion tactics can be applied to traditional mass media. This applies primarily to reformatting the same material for different social networks, primarily for multimedia. Thus, the need arises for the convergence of traditional journalism. The authors found that in the present conditions the most convergent publications among the Tatar-speaking mass media are Tatar-inform, Internet and Azatlyk Radiosy (Radio Liberty).


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