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公开(公告)号:US11645860B2
公开(公告)日:2023-05-09
申请号:US15463774
申请日:2017-03-20
Applicant: Oath Inc.
Inventor: Suleyman Cetintas , Kuang-chih Lee , Jia Li
IPC: G06K9/62 , G06F3/04842 , G06F16/58 , G06V10/44 , G06V20/10 , G06V30/413 , G06N3/08
CPC classification number: G06K9/6267 , G06F3/04842 , G06F16/58 , G06K9/6201 , G06K9/626 , G06K9/627 , G06N3/08 , G06V10/454 , G06V20/10 , G06V30/413
Abstract: Briefly, embodiments of methods and/or systems of generating preference indices for contiguous portions of digital images are disclosed. For one embodiment, as an example, parameters of a neural network may be developed to generate object labels for digital images. The developed parameters may be transferred to a neural network utilized to generate signal sample value levels corresponding to preference indices for contiguous portions of digital images.
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公开(公告)号:US11269962B2
公开(公告)日:2022-03-08
申请号:US16724949
申请日:2019-12-23
Applicant: Oath Inc.
Inventor: Suleyman Cetintas , Kuang-chih Lee
IPC: G06F16/951 , G06F16/33
Abstract: Users may consume and/or share information through various types of content items. For example, user may post a family photo through a social network, create a running blog through a microblogging service, etc. Because users may be overwhelmed by the amount of available content items, it may be advantageous to recommend content items, such as blogs to follow, to users. Accordingly, inductive matrix completion is used to evaluate user interactions with content items (e.g., a user following a blog), content item features (e.g., text and/or images of a blog is evaluated to identify a topic of the blog), and/or user features (e.g., a user liking or reblogging a blog, user demographics, user interests, etc.) to determine whether to recommend a content item to a user. Additionally, graph proximity is used to recommend content items based upon weights of edges connecting user nodes to content item nodes within a directed graph.
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公开(公告)号:US10515127B2
公开(公告)日:2019-12-24
申请号:US14682603
申请日:2015-04-09
Applicant: Oath Inc.
Inventor: Suleyman Cetintas , Kuang-chih Lee
IPC: G06F16/951 , G06F16/33
Abstract: Users may consume and/or share information through various types of content items. For example, user may post a family photo through a social network, create a running blog through a microblogging service, etc. Because users may be overwhelmed by the amount of available content items, it may be advantageous to recommend content items, such as blogs to follow, to users. Accordingly, inductive matrix completion is used to evaluate user interactions with content items (e.g., a user following a blog), content item features (e.g., text and/or images of a blog is evaluated to identify a topic of the blog), and/or user features (e.g., a user liking or reblogging a blog, user demographics, user interests, etc.) to determine whether to recommend a content item to a user. Additionally, graph proximity is used to recommend content items based upon weights of edges connecting user nodes to content item nodes within a directed graph.
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