Optimization method based on random walk relationship discovery

A technology of random walk and optimization method, applied in the field of knowledge graph, can solve problems such as speeding up relationship discovery and increasing overhead, and achieve the effect of ensuring accuracy, improving speed, and speeding up the process of relationship discovery

Inactive Publication Date: 2018-07-17
BEIJING INSTITUTE OF TECHNOLOGYGY
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Problems solved by technology

[0008] The purpose of the present invention is to solve the problem that the existing random walk relationship discovery algorithm of knowledge graph has too many levels of time and space complexity when dealing with large-scale knowledge bases. The existing random walk relationship discovery algorithm of knowledge graph In the process of calculating the iterative convergence results of the affinity of the random walk, the algorithm needs to calculate the inve...

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  • Optimization method based on random walk relationship discovery
  • Optimization method based on random walk relationship discovery
  • Optimization method based on random walk relationship discovery

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Embodiment 1

[0059] This embodiment illustrates the process of applying the "an optimization method based on random walk relationship discovery" of the present invention to the medical knowledge map.

[0060] The applicant analyzes the traditional random walk relationship discovery algorithm and its improved algorithms B_LIN and NB_LIN. Taking the traditional random walk algorithm as an example, if the algorithm is directly applied to the relationship discovery of the knowledge map, it will consume in the preprocessing process a lot of time and storage space. As the knowledge base grows larger, the relation discovery process becomes unbearably time-consuming and storage-intensive.

[0061] The embodiment of the present application provides an optimization method of a random walk-based relationship discovery algorithm, which can generate subgraphs with the help of breadth-first search according to the characteristics of the knowledge graph belonging to the vertical field in the example, and...

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Abstract

The invention discloses an optimization method based on random walk relationship discovery, belongs to the technical field of knowledge maps, and relates to a relationship discovery problem in the knowledge map. The invention provides the random walking optimization method under a defined radius based on the random walk relationship discovery. The method is characterized in that aiming at a largescale knowledge base, the magnitude of knowledge map nodes is excessive along with the base, a local submap obtaining the defined radius under a breadth-first search is combined, and a large amount oftime and storage space consumed when preprocessing is conducted are accelerated by adopting the obtained local submap but not the whole map. Compared with a tradition random walk algorithm, random walking is conducted under the local submap so that the preprocessing time and the magnitude of space complicity can be greatly reduced to shorten random walking time on the basis of ensuring the accuracy of the relationship discovery.

Description

technical field [0001] The invention relates to an optimization method based on random walk relationship discovery, which belongs to the technical field of Knowledge Graph. Background technique [0002] Relational discovery in knowledge graphs, also known as relational reasoning, refers to starting from the existing relationships in the knowledge base and finding potential relationships through computer algorithms and programs, thereby further expanding the knowledge graph. Relationship discovery is very important in the process of creating and expanding knowledge graphs. At present, there are mainly two methods for relationship discovery in knowledge graphs: logic-based reasoning methods and graph-based reasoning methods. [0003] Logic-based relational reasoning mainly includes first-order predicate logic, description logic and rule-based reasoning. The first-order predicate logic is based on propositions. In the concept of first-order predicate logic, propositions are ...

Claims

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Application Information

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IPC IPC(8): G06F17/30G06N5/02
CPCG06F16/367G06N5/02
Inventor 孙新徐晶严西敏
Owner BEIJING INSTITUTE OF TECHNOLOGYGY
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