个性化电影推荐系统

S. H K, K Praghnya Iyer, Himaja K R, Rahisha Pokharel
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引用次数: 1

摘要

在今天的数字世界里,有无数的内容可供消费,包括电影、书籍、视频、文章等等,找到符合自己口味的内容变得很有挑战性。另一方面,数字内容提供商希望尽可能长时间地让更多的人使用他们的服务。这就是推荐系统发挥作用的地方,内容提供者根据用户的偏好向用户推荐内容。提供各种服务并根据用户兴趣自动推荐某些服务的Web应用程序越来越依赖于推荐系统。不同的业务服务在当前营销领域的成功中都扮演着重要的角色。个性化推荐技术是网站提供个性化服务最有价值的工具之一。当涉及到电子商务的在线营销工作时,这个策略非常有用。为了构建提案框架,合作筛选是推荐框架领域中非常有益的进展。推荐引擎的准确性是当今网络中许多问题的根源。因此,为了提高推荐系统的多样性和准确性,需要采用多种策略。在生成推荐时,基本的推荐系统通常会考虑以下内容之一:基于内容的过滤,它基于用户的偏好,它描述事物,我们使用用户个人资料以外的关键字来显示用户喜欢和不喜欢的内容。换句话说,CBF算法建议人们过去喜欢的产品或与之相似的产品。它会查看你过去喜欢的东西,并提出最佳匹配建议,或者一个协同过滤系统根据用户和/或物品的相似度来推荐物品。CF系统只推荐受同类用户欢迎的产品。该系统的目标是开发一个基于分类的推荐、更精确的结果、提高效率和克服冷启动的电影推荐系统。
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Personalized Movie Recommendation System
In the digital world of today, where there is an infinite amount of content to consume, including movies, books, videos, articles, and so on, finding content that appeals to one's tastes has become challenging. On the other hand, providers of digital content want to keep as many people using their service for as long as possible. This is where the recommender system comes into play, where content providers suggest content to users based on their preferences. Web applications that offer a variety of services and automatically suggest some services based on user interest increasingly rely on recommendation systems. Different business services each play a significant role in the success of the current marketing field. The personalize recommendation technique is one of the most valuable tools for providing personalized service on websites. When it comes to e-Commerce's online marketing efforts, this strategy is extremely useful. To build the proposal framework, the cooperative sifting is exceptionally helpful advances in the field of recommender frameworks. The accuracy of recommendation engines is the source of many issues in today's web. Therefore, a variety of strategies are utilized to enhance the recommendation system's diversity and accuracy. When generating recommendations, the fundamental recommender systems typically take one of the following into account: The Content-Based Filtering, which is based on the user's preferences, it describes things, and we use keywords other than the user's profile to show what the user likes and dislikes. To put it another way, CBF algorithms suggest products that people have liked in the past or products that are similar to them. It looks at what you've liked in the past and suggests the best match, Or a collaborative filtering system makes recommendations for items based on how similar users and/or items are measured. The CF system only suggests products that are popular with similar types of users. The development of a movie recommendation system with category-based recommendations, more precise results, increased efficiency, and overcoming the cold start are the goals of this system.
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