Combined wrong question recommendation method based on knowledge graph

A technology of knowledge graph and recommendation method, which is applied in the field of computer software, can solve the problems that new users cannot produce good recommendations, the quality of recommendations is low, and the similarity measurement is inaccurate, so as to avoid cold start problems, solve cold start problems, and recommend The results are precise

Active Publication Date: 2017-10-20
BEIJING UNIV OF TECH
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AI Technical Summary

Problems solved by technology

Content-based recommendations are not friendly enough to deal with complex attributes, and at the same time cannot produce good recommendations for new users
Rule-based recommendation technology relies too much on grammatical rules defined by language experts in professional fields. It takes a lot of time to extract rules, and the labor cost is too high. At the same time, the migration cost is huge.
The similarity measurement is inaccurate and the recommendation quality is low in the case of extremely sparse data in the item-based collaborative filtering recommendation algorithm.
At the same time, with the continuous development of recommendation algorithms, people are beginning to realize the defects of existing recommendation systems, such as the cold start problem caused by data sparseness, recommendation accuracy and Gray sheep

Method used

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  • Combined wrong question recommendation method based on knowledge graph
  • Combined wrong question recommendation method based on knowledge graph
  • Combined wrong question recommendation method based on knowledge graph

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Embodiment Construction

[0017] In order to make the purpose, technical solutions and characteristics of the present invention clearer, the following in conjunction with specific implementation examples, and with reference to the appended Figure 1-3 , the present invention is further detailed description.

[0018] step one:

[0019] Perform a word segmentation operation on each test question in the test question bank to obtain the keywords of each test question, further extract the knowledge features of the keywords, and obtain the knowledge points corresponding to each test question, thereby determining the relationship between the knowledge points and the test questions Mapping relationship, so as to build a knowledge map of test questions with each knowledge point and test question as nodes and keywords as edges.

[0020] Step two:

[0021] Calculate the similarity weight of test questions and knowledge points to obtain the similarity matrix of test papers and knowledge points. The row i and co...

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Abstract

The invention discloses a combined wrong question recommendation method based on a knowledge graph. Wrong questions relevant to weak knowledge points of a learner can be accurately recommended for the learner by adopting the method. The method comprises the steps that knowledges are extracted from large-scale unstructured test question data to establish the knowledge graph; text mining and word segmentation are conducted on the wrong questions of the learner to extract wrong question keywords, and thus knowledge points including in the wrong questions are determined; semantic near neighbors of the knowledge points are obtained by analyzing semantic similarity of the test questions; the wrong question knowledge points are mapped into the knowledge graph to obtain test question entities conforming to their knowledge points. In addition, similarity weight calculation is conducted on a test question library to obtain similarity matrixes of test paper, a collaborative filtering technology is utilized to obtain recommended test questions of the wrong questions. Finally, two recommendation results are further combined in weighing, mixing, superposing and element-level modes, and a final recommendation result is given.

Description

technical field [0001] The invention belongs to the technical field of computer software, and in particular relates to a method for recommending combined wrong questions based on knowledge graphs. Background technique [0002] With the rapid development of the Internet, people have gradually entered an era of information overload from an era of information scarcity. The explosive growth of information has made the problem of information flooding in the network extremely serious. It is difficult for users to find valuable data for themselves from the massive data, and some useful information that is rarely paid attention to is often overwhelmed In the ocean of information, become an island of information. The recommendation system is an effective way to solve such problems, and its essence is to find resource objects that match their interests and preferences for users. [0003] In recent years, in view of the great value of recommendation technology in various fields, expe...

Claims

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): G06F17/30
CPCG06F16/367G06F16/9535
Inventor 杨涛竹翠
Owner BEIJING UNIV OF TECH
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