基于内容的视频推荐的新挑战

Aly Mohamed, Amr Sherif, Foad Osama, Youssef Roshdy, Mennat Allah Hassan, Walaa H. El Ashmawi
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引用次数: 2

摘要

当涉及到在线搜索时,海量的信息是可用的,很难根据用户的兴趣提供相关的信息。虽然在根据用户输入搜索数据时,他们需要搜索整个数据库,这也非常令人沮丧和耗时。视频消费在大多数用户的生活中变得必不可少。在大多数视频平台上,用户都是基于一定的算法、计算、隐式反馈、观看、搜索行为和搜索历史来获得推荐视频的。新视频遭受冷启动,这发生在新上传的视频中,没有数据或评论可用。因此,向一些用户推荐这些视频并不容易。用户每天面临的另一个实际问题是,找到想要的内容取决于视频是否被标记或有多个视图。搜索引擎将根据关键字或标签找到视频,而不是视频中的内容。解决这个问题的方法之一是根据内容推荐视频。本文提出了一个新的挑战,提出了一个基于内容的视频推荐系统,该系统使用对象和特征,具有搜索或阻止特定场景的能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A new challenge on video recommendation by content
When it comes to searching online, massive information is available, it is really hard to provide relevant information to users based on their interest. Although while searching for data based on user inputs, they need to search the entire database, which is also very frustrating and time-consuming. Video consumption becoming essential in most users' life. On the most video platforms, users get their recommended videos based on some algorithms, calculations, implicit feed-backs, watch, search behaviors and search history. New videos suffer from cold-start which happens to freshly uploaded videos in which no data or reviews are available. Therefore, it is not easy to recommend these videos to some users. Another real problem that users face every day is that finding the desired content depends on the video being labeled or has multiple views. The search engine will find the videos based on keywords or tags, not on the content inside the video. One of the solutions for this problem is recommending videos based on content. This paper presents a new challenge on proposing a video recommendation system based on content using objects and features with the ability to search or block specific scenes.
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