DOI: 10.31979/etd.548a-yyn2
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Resolving Cold Start Problem Using User Demographics and Machine Learning Techniques for Movie Recommender Systems

Abstract: There is a substantial increase in demand for recommender systems which have applications in a variety of domains. The goal of recommendations is to provide relevant choices to users. In practice, there are multiple methodologies in which recommendations take place like Collaborative Filtering (CF), Content-based filtering and Hybrid approach. For this paper, we will consider these approaches to be traditional approaches. The advantages of these approaches are in their design, functionality and efficiency. How… Show more

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“…Sahil et al [24] devised a way to solve the cold start problem by using user demographics, different clustering algorithms, and machine learning techniques to train classifier models for better Movie Recommender Systems. This method solves the problem of starting up when it's cold by using information about the users.…”
Section: Related Workmentioning
confidence: 99%
“…Sahil et al [24] devised a way to solve the cold start problem by using user demographics, different clustering algorithms, and machine learning techniques to train classifier models for better Movie Recommender Systems. This method solves the problem of starting up when it's cold by using information about the users.…”
Section: Related Workmentioning
confidence: 99%