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Effective Indexes and Classification Algorithms for Supervised Link Prediction Approach to Anticipating Technology Convergence: A Comparative Study

Author(s)
Hong, SuckwonLee, Changyong
Issued Date
2023-04
DOI
10.1109/TEM.2021.3098602
URI
https://scholarworks.unist.ac.kr/handle/201301/56600
Fulltext
https://ieeexplore.ieee.org/document/9508418
Citation
IEEE TRANSACTIONS ON ENGINEERING MANAGEMENT, v.70, no.4
Abstract
This article conducts a comparative analysis to investigate the effects of different classification algorithms and structural proximity indexes on the performance of the supervised link prediction approach to anticipating technology convergence at different forecast horizons. For this, we identify relationships between technologies of interest for different time periods and compute 10 structural proximity indexes among unconnected technologies at each period. We develop a set of classification models that identify potential convergence among unconnected technologies where each model is configured differently by a classification algorithm and a combination of the proximity indexes. We compare the performance of the classification models to investigate effective combinations of classification algorithms and proximity indexes at different forecast horizons. The empirical analysis on Wikipedia articles about artificial intelligence technology indicates that random forest outperforms others in short-term forecasting while support vector machine outperforms others in mid-term forecasting. We also identify structural proximity indexes that produce higher performance when combined with the most effective algorithm at each forecast horizon. The results of this article are expected to offer guidelines for choosing classification algorithms and indexes when applying the supervised link prediction approach in anticipating technology convergence.
Publisher
Institute of Electrical and Electronics Engineers
ISSN
0018-9391
Keyword (Author)
Classification algorithmscomparative studyIndexesInternetEncyclopediasElectronic publishingHypertext systemsproximity indexessupervised link prediction analysistechnology convergenceWikipedia hyperlinksConvergencePatents
Keyword
KNOWLEDGE FLOWSYSTEMSECOSYSTEMCITATION

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