Mining Technological Innovation Talents Based on Patent Index using t-SNE Algorithms*: Take the Field of Intelligent Robot as an Example

Ning Zhao, Guohui Yang, Yang Cao
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引用次数: 1

Abstract

The purpose of this paper is to effectively evaluate the innovation ability and classification of technical talents in the intelligent robot field, and to be able to carry out adaptive learning and mining technical innovation talents according to the real-time change data corresponding to different indicators. Taking inventor's patent information retrieved and cleaned from DI database as research object, it constructs the evaluation index system of technological innovation talents. It reduces the dimension of the index and cluster automatically, shows the visual effect, and mines the similar technical innovation talents through t-SNE algorithm. For a large number of patent information data, machine learning algorithm improves the traditional recognition method. According to inventor similarity, automatic classification is realized. Combined with DWPI manual code mining, the corresponding innovators and members of the technical team in the intelligent robot technology field were found. According to the results of visual dimensional reduction, the specific inventors can be traced. Machine learning algorithm t-SNE can reduce dimension and analysis clustering. It breaks the limitations of artificial statistics, deals with the larger order of magnitude data, and analyzes data timely, accurate and intuitive.
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基于t-SNE算法的专利索引挖掘技术创新人才*——以智能机器人领域为例
本文的目的是有效评价智能机器人领域技术人才的创新能力和分类,能够根据不同指标对应的实时变化数据进行自适应学习和挖掘技术创新人才。以从DI数据库中检索整理的发明人专利信息为研究对象,构建了技术创新人才评价指标体系。该算法通过自动降维的指标和聚类,呈现视觉效果,并通过t-SNE算法挖掘相似的技术创新人才。对于大量的专利信息数据,机器学习算法改进了传统的识别方法。根据发明人相似度实现自动分类。结合DWPI手工代码挖掘,找到智能机器人技术领域相应的创新者和技术团队成员。根据视觉降维的结果,可以追踪到具体的发明者。机器学习算法t-SNE可以降维分析聚类。它打破了人工统计的局限,处理更大数量级的数据,分析数据及时、准确、直观。
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