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
References
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- Google API, [Internet]. Available: https://developers.google.com/apis-explorer
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