Abstract

As the country vigorously promotes the development of science and technology and tries to enhance independent innovation capabilities, more and more attention is paid on the protection of technology ownership. In recent years, China has developed rapidly in many scientific and technological fields, and the number of patent applications increased year by year. However, various patent quality problems including immature patent technology and low patent authorization rate appear. The indicators of patent quantification and quality evaluation are studied in this paper. First, we quantify the patent quality evaluation indicators and combine the content of the patent text to build a patent evaluation model. US patents with patent grade labels are used for training with multitask learning technology. Second, the evaluation model is transferred from the English patents to the Chinese patents, in which the active learning technology and transfer learning technology are used to minimize the work of manual labeling. Finally, a Chinese patent quality evaluation model based on collaborative training was designed and implemented. Methods used in this experiment have notably improved the prediction effect of the model and achieved a better migration effect. A large number of experimental results show that the Chinese patent quality evaluation model has achieved good evaluation results. This research uses deep learning and natural language processing technology to carry out research on patent quality evaluation models from different perspectives, to provide patent decision support for related companies, and to point out research directions for research institutions and patent inventors.

Highlights

  • Since the 18th CPC National Congress, the cause of intellectual property has entered a new era of vigorous development driven by policies

  • The experiment randomly shuffled the data set to ensure the uniform distribution of different label samples. 90% samples (53475) are for training and 10% samples (5942) are for testing

  • Different layers of the neural network model usually learn the characteristics of different levels of the sample

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Summary

Introduction

Since the 18th CPC National Congress, the cause of intellectual property has entered a new era of vigorous development driven by policies. In 2020, the total amount of national patent and trademark pledge financing reached 218 billion yuan, an increase of 43.9% year on year This fully demonstrates that there is a huge demand for patent value evaluation in China and the world, and it is increasingly not negligible in the fields of science and society. In recent years, with the country’s high requirements on the speed and efficiency of the transformation of the results of authorized national invention patents, how to objectively and automatically evaluate the value of massive Chinese patents has become a hot research topic and a scientific problem that needs to be solved urgently. Faced with the three common problems in the field of patent quality evaluation, this article mainly uses data mining and natural language processing technology to extract indicators from a large number of patent information data of different dimensions and uses deep learning methods to predict patent quality. The results of the evaluation show that the article method achieved a good migratory effect, with micro-F1 reaching 74%

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Full Text
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