標題: A Deep-Learning Approach to Determine the Dependency between Two Subject Types in the Web of Science
作者: Phoa, Frederick Kin Hing
Lai, Hsin-Yi
Chang, Livia Lin-Hsuan
Honda, Keisuke
統計學研究所
Institute of Statistics
關鍵字: Deep Learning;Multilayer Perceptron;Classification;Web of Science;Dependency
公開日期: 1-Jan-2019
摘要: Traditional wisdom always suggests that some subjects have strong relationships, while others are almost mutual independent. However. there is a lack of quantitative approach to formulate these relationships in a systematic and unbiased way. In this work, we train a classification machine via deep learning to determine whether two subject types are independent based on the citation information from the Web of Science database. This machine not only achieves very high accuracy in estimating the dependency among subject types in the database, but also is able to predict the dependency when one or both subject types do not exist in the database.
URI: http://hdl.handle.net/11536/153837
ISBN: 978-88-3381-118-5
ISSN: 2175-1935
期刊: 17TH INTERNATIONAL CONFERENCE ON SCIENTOMETRICS & INFORMETRICS (ISSI2019), VOL I
起始頁: 1329
結束頁: 1338
Appears in Collections:Conferences Paper