Computer Engineering and Networking pp 201-208 | Cite as
A Recommendation System for Paper Submission Based on Vertical Search Engine
Abstract
In this work, the proposed orchestrating and sharing system for online paper aims at managing papers from information collecting, paper editing, paper type-setting, and paper submitting to paper sharing. In the five aspects above, there are many available tools which help science researchers write papers, but these tools work separately not cooperatively. Orchestrating and sharing system for online paper integrates functions of these tools, which offers one-stop service. As an important part of this system, the recommendation for paper submission is to provide valuable information about the latest international conferences and journal for paper publication. When papers are written, our system, a context-aware solution for paper, automatically obtains the keywords from context. Given that the recommendation for paper submission is subject-oriented search, we design a recommendation system for paper submission based on vertical search engine, which enhances the search accuracy by the improved URL-based filtering algorithm and the improved content-based filtering algorithm.
Keywords
Index Module Vector Space Model Online Paper PageRank Algorithm Paper EditingNotes
Acknowledgments
This work was supported by the Natural Science Foundation of P. R. of China (90912003, 90812001 and 61073193), the Key Science and Technology Foundation of Gansu Province (1102FKDA010), Natural Science Foundation of Gansu Province (1107RJZA188), and the Fundamental Research Funds for the Central Universities (lzujbky-2012-47, lzujbky-2012-48).
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