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Pythagoras0 (토론 | 기여)님의 2020년 12월 26일 (토) 06:26 판 (→‎메타데이터: 새 문단)
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  • The main difference between collaborative filtering and content-based filtering is conceptual.[1]
  • Where content-based filtering is built around the attributes of a given object, collaborative filtering relies on the behavior of users.[1]
  • There are two approaches to collaborative filtering, one based on items, the other on users.[1]
  • Building a recommender system with collaborative filtering is a major project that involves both data science and engineering challenges.[1]
  • This article outlines the background theory for matrix factorization-based collaborative filtering as applied to recommendation systems.[2]
  • What is collaborative filtering, and how can you use insights gained from it?[2]
  • Many matrix factorization techniques are used for collaborative filtering, including SVD and Stochastic Gradient Descent.[2]
  • Besides collaborative filtering, content-based filtering is another important class of recommender systems.[3]
  • Amazon is known for its use of collaborative filtering, matching products to users based on past purchases.[4]
  • Collaborative filtering is commonly used for recommender systems.[5]
  • The approach used in spark.ml to deal with such data is taken from Collaborative Filtering for Implicit Feedback Datasets.[5]
  • This approach is named “ALS-WR” and discussed in the paper “Large-Scale Parallel Collaborative Filtering for the Netflix Prize”.[5]
  • Collaborative filtering looks at the interactions between users and the set of items they interact with.[6]
  • Collaborative filtering will generate recommendations for each unique user based on how similar users liked the item.[6]
  • Collaborative filtering uses logic to recommend new products or items to users, but in some cases this isn’t enough.[6]
  • Articles like this one detail how to create your own recommendation system with collaborative filtering.[6]
  • Collaborative filtering often makes incorrect assumptions that can negatively impact the quality of your recommendations.[6]
  • Negative data points are not leveraged by collaborative filtering.[6]
  • Collaborative filtering is arguably the most effective method for building a recommender system.[7]
  • In the past decade, matrix factorization (MF) has become a widely adopted method of collaborative filtering.[7]
  • typically adopt user-relevant attributes as their auxiliary information under collaborative filtering.[7]
  • This model uses a combination of collaborative filtering and Stacked Denoising Auto-Encoder (SDAE).[7]
  • This recommendation approach integrates the collaborative filtering and search-based approaches.[8]
  • This image shows an example of predicting of the user's rating using collaborative filtering.[9]
  • A key problem of collaborative filtering is how to combine and weight the preferences of user neighbors.[9]
  • This falls under the category of user-based collaborative filtering.[9]
  • Collaborative Filtering, on the other hand, doesn’t need anything else except users’ historical preference on a set of items.[10]
  • The standard method of Collaborative Filtering is known as Nearest Neighborhood algorithm.[10]
  • Collaborative Filtering provides strong predictive power for recommender systems, and requires the least information at the same time.[10]
  • On the other hand, Collaborative Filtering is faced with cold start.[10]
  • Before reading further, I hope that the you have basic understanding of collaborative filtering and its application in recommender systems.[11]
  • For user-based collaborative filtering, two users’ similarity is measured as the cosine of the angle between the two users’ vectors.[11]
  • : There is a ton of research material on collaborative filtering using matrix factorization or similarity matrix.[11]
  • But there is lack on online material to learn how to use deep learning models for collaborative filtering.[11]
  • This package has been specially developed to make recommendation based on collaborative filtering easy.[11]
  • Most easiest and well-researched method out there is collaborative filtering.[11]

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