A Neural Learning Approach For Prediction Of Research Citations Using Article Semantics

2020 6TH INTERNATIONAL CONFERENCE ON ADVANCED COMPUTING AND COMMUNICATION SYSTEMS (ICACCS)(2020)

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Abstract
Predicting scholarly output largely depend on the research citations received right from the inception. Classic research articles across multiple research domains as identified by Google Scholar tend to define articles published in 2006 which receive citations even after 10 years and counting. Though author and journal level features tend to attract early stage citations, it is for sure that only the righteousness in the article content would have triggered the continuity of citations all through the rest of years. Thus it is clear that for receiving 'citation sustainability', an article has to be well conceived, constructed and delivered. This work presents a neural learning approach that uses article semantic features for predicting the intensity of research citations for classic research articles.
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Key words
ANN, Citation, Classic Research Article, Semantic Analysis, Prediction
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