Question and answer community recommendation method based on cross-platform tag fusion

A tag fusion and recommendation method technology, applied in the field of expert recommendation for cross-platform tag fusion, can solve problems such as inability to fully build user models, achieve the effect of improving community operation efficiency and reducing waiting time for answers

Inactive Publication Date: 2017-10-24
SICHUAN UNIV
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AI Technical Summary

Problems solved by technology

[0003] At present, the expert recommendation algorithm in the question-and-answer community generally uses the user documents or network structure of a single community to model and recommend users, but the data of a single platform usually only contains part of the characteristics of the user, and cannot comprehensively build a user model

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  • Question and answer community recommendation method based on cross-platform tag fusion
  • Question and answer community recommendation method based on cross-platform tag fusion
  • Question and answer community recommendation method based on cross-platform tag fusion

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Embodiment Construction

[0011] The present invention takes Zhihu question-and-answer community as an example to study the user feature relationship between Zhihu and Weibo platforms.

[0012] Through the analysis and data processing in the previous two sections, we have extracted the interest topics of common users on the two platforms. In order to obtain a comprehensive user interest model, we need to fuse the topic tags of the two platforms.

[0013] When analyzing the tag vectors of different platforms for each user, because the topic extraction algorithm models the topics by generating probabilities, without considering the semantic features of words, the result is that some users' tags contain many similar words. Therefore, if the words in the two feature spaces are directly merged, the user's label space will be too large, and the user's value on many feature words will be 0, resulting in data sparseness and affecting user modeling.

[0014] Therefore, we introduce semantic similarity analysis,...

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Abstract

The invention provides a question and answer community expert recommendation method for performing interest modeling by use of tag fusion across platforms. According to the method, cross-platform common users are utilized to construct word vectors of tags by combining an LDA topic model and word2vec, a tag semantic similarity matrix is constructed for text data of different platforms, a fusion feature space is generated, and a fusion space model of the users is obtained. Compared with a single-network user model, the cross-platform user model can cover different features of the users more comprehensively, and the user features are described more clearly. Meanwhile, answer abilities of the users and cross-platform community influences of the users are comprehensively considered, a PageRank algorithm based on a fusion network is used to perform authority evaluation on the users, and then community feedback is considered to perform ability evaluation on the users. Through experiment comparison with a reference interest model, the single-network user model, a collaborative filtering recommendation model and other algorithms, it is shown that the algorithm has a better recommendation effect.

Description

technical field [0001] The invention relates to expert recommendation research in a question-and-answer community, and is an expert recommendation method based on cross-platform tag fusion. Background technique [0002] With the development of the Internet and informatization, the community Q&A system has become an important platform for users to obtain information on the Internet. Users can ask questions about the content they want to know through natural language, and other users in the community can answer them. Through natural language communication, the question answering system can provide users with good knowledge and information sharing, and more conveniently meet the information needs of users. With the increase in the number of users in the community Q&A system, the number of questions also increases. Many questions in the community cannot be answered for a long time, or the quality of the answers obtained is not high, which cannot meet the needs of the questions a...

Claims

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): G06F17/30G06Q50/00
CPCG06F16/3329G06Q50/01
Inventor 彭舰冯勇领黄飞虎
Owner SICHUAN UNIV
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