大学-产业技术转让的信任增强型专利推荐方法

Yuwen Chen, Peihu Zhu, Jian Ma, Xiaomin Huang, Jin Qin
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引用次数: 0

摘要

技术转让能使合法拥有者的技术为他人所用,是现代社会技术创新的关键。然而,由于 "文化鸿沟 "问题,从学术界向产业界转让技术已成为一项具有挑战性的任务。大学研究人员倾向于专注于知识发现,而企业则专注于通过应用成熟技术获取利润。这给企业使用大学发明的学术专利造成了不信任问题。针对技术转让提出了各种推荐方法,但很少有方法能解决文化差异造成的信任问题。本文提出了一种促进学术专利交易的多维信任增强推荐方法。该方法提取专利信息、用户在线互动和技术转让信息进行推荐计算。它包括:1)通过个性化 PageRank 模型衡量公司与专利之间的关联度;2)从专利质量、发明人和大学三个方面衡量潜在专利交易的可信度;3)采用逻辑回归模型整合上述衡量指标。基于用户的实验结果表明,与目前的推荐方法相比,建议的推荐方法获得了更高的平均命中率和意愿得分。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Trust-Enhanced Patent Recommendation Approach to University-Industry Technology Transfer
Technology transfer enables the technology from legal owners to be used by others, and it is essential for technology innovation in modern society. However, transferring technology from academia to industry has become a challenging task due to the "cultural divide" problem, where researchers in universities tend to focus on knowledge discovery, while companies focus on making profits with application of proven technologies. This creates a mistrust problem for companies to use academic patents invented by universities. Various recommendation methods have been proposed for technology transfer purposes, but few have addressed the trust issue caused by the cultural divide. This paper proposes a multidimensional trust-enhanced recommendation approach to promote academic patent trading. The approach extracts patent information, users' online interactions, and technology transfer information for recommendation calculation. It includes 1) measuring the degree of connectivity between companies and patents by the Personalized PageRank model; 2) measuring the trustworthiness of a potential patent transaction from the aspects of patent quality, inventor, and university; and 3) adopting a logistic regression model to integrate the above measurements. The results of our user-based experiment show that the proposed recommendation approach obtains higher average hit rate and higher willingness scores than current recommendation methods.
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