Fig. 1 Recommendation System analysis flowchart
Fig. 2 Pseudo code of scoring function
Fig. 3 # of subscriber per channel
Fig. 5 # of video likes per channel
Fig. 6 # of video comments per channel
Fig. 7 Correlation between video and comments per channel (i.e., Table Analysis)
Fig. 8 Correlation between video and comments per channel (i.e., Graph Analysis)
Fig. 4 # of video per channel
Fig. 9 (Normalization) # of subscriber per channel
Fig. 10 (Normalization) # of video comments per channel
Fig. 11 (Normalization) # of video likes per channel
Fig. 12 (Normalization) Correlation between video and comments per channel
참고문헌
- J. H. Lee, and H. K. Lee, "A study on unstructured text mining algorithm through R programming based on data dictionary," Journal of the Korea Industrial Information Systems Research, vol. 20, no. 2, pp. 113-124, Apr. 2015. https://doi.org/10.9723/jksiis.2015.20.2.113
- Y.H. Chan, R. Rong, and H. Oh, "A Study on the Automatic Ranking of Most Recognizable Channel in YouTube," Proceedings of Symposium of the Korean Institute of communications and Information Sciences, pp. 1431-1431, Jun. 2017.
- J. H. Lee, and H. Oh, "Flipped Learning Maximization based on Explicit and Implicit Data Analysis of YouTube Channel," The Korean Institute of Communications and Information Sciences, pp.101-104, Oct. 2018.
- P. Covington, J. Adams, and E. Sargin, "Deep Neural Networks for YouTube Recommendations," RecSys, pp. 1001-1012, 2016.
- Socialblade, [Internet]. Available: https://socialblade.com
- Google API, [Internet]. Available: https://developers.google.com/apis-explorer
- Youtube Tuber API, [Internet]. Available: https://cran.r-project.org/web/packages/tuber/tuber.pdf
- Recommderlab API, [Internet]. Available: https://cran.r-project.org/package=recommenderlab/recommenderlab.pdf