In the paper, we propose two models of Artificial Intelligence (AI) patents in European Union (EU) countries addressing spatial and temporal behaviour. In particular, the models can quantitatively describe the interaction between countries or explain the rapidly growing trends in AI patents. For spatial analysis Poisson regression is used to explain collaboration between a pair of countries measured by the number of common patents. Through Bayesian inference, we estimated the strengths of interactions between countries in the EU and the rest of the world. In particular, a significant lack of cooperation has been identified for some pairs of countries. Alternatively, an inhomogeneous Poisson process combined with the logistic curve growth accurately models the temporal behaviour by an accurate trend line. Bayesian analysis in the time domain revealed an upcoming slowdown in patenting intensity.
翻译:在论文中,我们提出了欧洲联盟(欧盟)国家人工情报(AI)专利的两种模式,处理空间和时间行为,特别是,这些模式可以量化地描述国家间的互动,或解释AI专利迅速增长的趋势。空间分析用Poisson回归法解释以共同专利数量衡量的一对国家间的协作。我们通过贝叶斯推论,估计了欧盟各国与世界其他国家之间的互动优势,特别是发现一些国家严重缺乏合作。或者,与物流曲线增长相结合的不相容的Poisson进程准确地用准确的趋势线模拟了时间行为。当时的Bayesian分析显示专利强度即将放缓。