ABSTRACT
As users accumulate digital music in their digital devices,
the problem arises for them to manage the large number of tracks in their
devices. If a device contains thousands of tracks, it is difficult, painful,
and even impractical for a user to pick suitable tracks to listen to without
using predetermine organization such as playlists. The topic of this thesis is
computationally generated recommendations. Music recommendation is
significantly different from other types of recommendations, such as those for
movies, books and electronics. Because a same song can be recommended to a same
users many times if we successfully keep from him/her bored with it. A main
purpose of a music recommendation system is to minimize user's effort to
provide feedback and simultaneously to maximize the user's satisfaction by
playing appropriate song at the right time. Reducing the amount of feedback is
an important point in designing recommendation systems, since users are in
general lazy. We can evaluate user's attitude towards a song by examine whether
the user listens to the song entirely, and if not, how large a fraction he/she
does. In particular, we assume that if the user skips a recommended song, it is
a bad recommendation, regardless of the reason behind it. If the recommended
song is played completed, we infer that the user likes the song and it is a
satisfying recommendation. On the other hand, if the song is skipped while just
lasting a few seconds, we conclude that the user dislikes the song at that time
and the recommendation is less effective.
IKECHUKWU, J (2021). Music Recommendation Based On User Contex, Using Python Frame Work. Repository.mouau.edu.ng: Retrieved Nov 22, 2024, from https://repository.mouau.edu.ng/work/view/music-recommendation-based-on-user-contex-using-python-frame-work-7-2
JUSTICE, IKECHUKWU. "Music Recommendation Based On User Contex, Using Python Frame Work" Repository.mouau.edu.ng. Repository.mouau.edu.ng, 22 Oct. 2021, https://repository.mouau.edu.ng/work/view/music-recommendation-based-on-user-contex-using-python-frame-work-7-2. Accessed 22 Nov. 2024.
JUSTICE, IKECHUKWU. "Music Recommendation Based On User Contex, Using Python Frame Work". Repository.mouau.edu.ng, Repository.mouau.edu.ng, 22 Oct. 2021. Web. 22 Nov. 2024. < https://repository.mouau.edu.ng/work/view/music-recommendation-based-on-user-contex-using-python-frame-work-7-2 >.
JUSTICE, IKECHUKWU. "Music Recommendation Based On User Contex, Using Python Frame Work" Repository.mouau.edu.ng (2021). Accessed 22 Nov. 2024. https://repository.mouau.edu.ng/work/view/music-recommendation-based-on-user-contex-using-python-frame-work-7-2