Anime4You: An Intelligent Analytical Framework for Anime Recommendation and Personalization using AI and Big Data Analysis
Author(s) -
Kaiho Cheung,
Ishmael Rico,
Tao Li,
Sun Yu
Publication year - 2021
Publication title -
natural language processing.
Language(s) - English
Resource type - Conference proceedings
ISSN - 2977-0424
DOI - 10.5121/csit.2021.112317
Subject(s) - computer science , python (programming language) , personalization , popularity , recommender system , support vector machine , artificial intelligence , big data , anime , machine learning , face (sociological concept) , data science , world wide web , data mining , programming language , psychology , social science , sociology , social psychology
In recent years the popularity of anime has steadily grown. Similar to other forms of media consumers often face a pressing issue: “What do I watch next?”. In this study, we thoroughly examined the current method of solving this issue and determined that the learning curve to effectively utilize the current solution is too high. We developed a program to ensure easier answers to the issue. The program uses a Python-based machine learning algorithm from ScikitLearn and data from My Animelist to create an accurate model that delivers what consumers want, good recommendations [9]. We also carried out different experiments with several iterations to study the difference in accuracy when applying different factors. Through these tests, we have successfully created a reliable Support vector machine model with 57% accuracy in recommending users what to watch.
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