评估生成专利语言模型

IF 2.2 Q2 INFORMATION SCIENCE & LIBRARY SCIENCE
Jieh-Sheng Lee
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引用次数: 3

摘要

生成语言模型有望在各个领域帮助人类写作。本文旨在建立专利领域的生成语言模型,并从以人为本的角度评估模型性能。其目的是测量基于生成专利语言模型的自动完成可以保存的击键比例。更高的比率意味着一个更有效的模型,可以节省更多的按键。此度量可用于对模型性能进行基准测试。该度量是基于键击的,不同于传统的基于令牌的以机器为中心的度量。就模型尺寸而言,这份手稿中构建的最大模型是专利GPT-J-6B,它在专利领域是最先进的。基于该度量,发现最大的模型不一定是以人为中心的度量的最佳模型。这一发现意味着,如果目的是帮助人类书写自动完成,那么在专利领域保持不断增加的模型大小可能是不必要的。在这项研究中,几个专利语言模型是从头开始预先训练的。预先训练好的模型将发布给未来的研究人员。还提供了一些可视化工具。在专利领域建立生成语言模型的重要性在于它有可能促进未来的创造力和创新。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Evaluating generative patent language models

Generative language models are promising for assisting human writing in various domains. This manuscript aims to build generative language models in the patent domain and evaluate model performance from a human-centric perspective. The perspective is to measure the ratio of keystrokes that can be saved by autocompletion based on generative patent language models. A higher ratio means a more effective model which can save more keystrokes. This metric can be used to benchmark model performance. The metric is keystroke-based and different from conventional machine-centric metrics that are token-based. In terms of model size, the largest model built in this manuscript is PatentGPT-J-6B, which is state-of-the-art in the patent domain. Based on the metric, it is found that the largest model is not necessarily the best for the human-centric metric. The finding means that keeping increasing model sizes in the patent domain might be unnecessary if the purpose is to assist human writing with autocompletion. Several patent language models are pre-trained from scratch in this research. The pre-trained models are released for future researchers. Several visualization tools are also provided. The importance of building a generative language model in the patent domain is its potential to facilitate creativity and innovations in the future.

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来源期刊
World Patent Information
World Patent Information INFORMATION SCIENCE & LIBRARY SCIENCE-
CiteScore
3.50
自引率
18.50%
发文量
40
期刊介绍: The aim of World Patent Information is to provide a worldwide forum for the exchange of information between people working professionally in the field of Industrial Property information and documentation and to promote the widest possible use of the associated literature. Regular features include: papers concerned with all aspects of Industrial Property information and documentation; new regulations pertinent to Industrial Property information and documentation; short reports on relevant meetings and conferences; bibliographies, together with book and literature reviews.
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