Media content association mining method based on event relationship discovery

A media content and event correlation technology, applied in the field of information retrieval, can solve the problems of strong interpretability, complicated labels, and inability to dig deep relationships of media content, and achieve the effect of clear context and strong interpretability.

Pending Publication Date: 2022-04-15
CHINA TELEVISION INFORMATION TECH BEIJINGCO
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  • Description
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AI Technical Summary

Problems solved by technology

[0003] The problems with the above methods are: On the one hand, using semantic information similarity to mine association relationships can only mine related content with similar semantics, ignoring related content with dissimilar semantics but logically related
On the other hand, using media content tags to establish the relationship between media content, the establishment of a media content tagging system requires a lot of human resources or there are problems with complicated tags and untargeted tags, and the related content that has been mined has limitations and cannot Digging into deeper relationships between media content
Finally, the relationship between the related content obtained by the above two types of mining methods is single, undirected, and indiscriminate, resulting in poor interpretability of the related relationship between the contents, and it is impossible to clearly understand the related content of the target content. Interpretive organization

Method used

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  • Media content association mining method based on event relationship discovery
  • Media content association mining method based on event relationship discovery
  • Media content association mining method based on event relationship discovery

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Embodiment Construction

[0132] In order to make the technical problems, technical solutions and beneficial effects solved by the present invention clearer, the present invention will be further described in detail below in conjunction with the accompanying drawings and embodiments. It should be understood that the specific embodiments described here are only used to explain the present invention, not to limit the present invention.

[0133] The invention provides a media content association mining method based on event relationship discovery. The invention extracts events and event elements in media content, mines various types of association relationships between media contents, and reasonably Effectively organize related content, describe target media content and expand information from different angles, present a clear and interpretable list of related content for users, and improve user reading experience.

[0134] The present invention provides a media content association mining method based on ...

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Abstract

The invention provides a media content association mining method based on event relationship discovery. The method comprises the following steps: constructing a media content library; constructing and training a media content event extraction model, and identifying and extracting events contained in each piece of media content in the media content library; identifying and extracting event elements contained in each event; constructing a media content event association graph based on the extracted events and event elements; an event-based content relationship mining module is used to mine relationships between media contents, including a sequential relationship, a correlativity, a causal relationship and a supplemental relationship. According to the method, the events and the event elements in the media contents are extracted, multiple types of association relationships among the media contents are mined, the association contents are reasonably and effectively organized according to the relationship types among the media contents, and description and information expansion are performed on the target media contents from different angles; the associated content list with clear veins and high interpretability is displayed for the user, and the reading experience of the user is improved.

Description

technical field [0001] The invention belongs to the technical field of information retrieval, and in particular relates to a media content association mining method based on event relationship discovery. Background technique [0002] The existing media content association mining methods are generally divided into two categories: 1. Learning the semantic features corresponding to the media content through natural language processing, image recognition and other methods, and obtaining the associated content of the media content by calculating the semantic similarity of the media content. 2. Mining the relationship between media content based on media content tags. [0003] The problems of the above methods are as follows: On the one hand, using the semantic information similarity to mine the association relationship can only mine the associated content with similar semantics, ignoring the associated content that is not similar in semantics but logically related. On the other ...

Claims

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Application Information

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IPC IPC(8): G06F16/2458G06F16/242G06F16/28
Inventor 郑晨烨孙剑
Owner CHINA TELEVISION INFORMATION TECH BEIJINGCO
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