AbstractPatent data has been an obvious choice for analysis leading to strategic technology intelligence, yet, the recent proliferation of machine learning text analysis methods is changing the status of traditional patent data analysis methods and approaches. This article discusses the benefits and constraints of machine learning approaches in industry level patent analysis, and to this end offers a demonstration of unsupervised learning based analysis of the leading telecommunication firms between 2001 and 2014 based on about 160,000 USPTO full-text patents. Data were classified using full-text descriptions with Latent Dirichlet Allocation, and latent patterns emerging through the unsupervised learning process were modelled by company and...
Introduction. Because patent publications are at the forefront of emerging technologies and are rela...
Big data is increasingly available in all areas of manufacturing, which presents value for enabling ...
In this paper, we extend some usual techniques of classification resulting from a large-scale data-m...
AbstractPatent data has been an obvious choice for analysis leading to strategic technology intellig...
Patent data has been an obvious choice for analysis leading to strategic technology intelligence, ye...
Patent data has been an obvious choice for analysis leading to strategic technology intelligence, ye...
Patent data has been an obvious choice for analysis leading to strategic technology intelligence, ye...
The complexity technologies require that companies have in-depth knowledge of the nature and effect ...
Technology assessment and planning requires that we can reliably, but indirectly, measure knowledge ...
Technology assessment and planning requires that we can reliably, but indirectly, measure knowledge ...
The digital transformation and big data paradigms have expanded across many research fields, includi...
The digital transformation and big data paradigms have expanded across many research fields, includi...
Recent advances in AI algorithms and computational power have led to opportunities for new methods a...
A number of studies have focused on creating patent maps [1,2,3]. Many of the patent map studies rel...
The analysis of large data volumes for decision-making has evolved from a sideline to a key driver o...
Introduction. Because patent publications are at the forefront of emerging technologies and are rela...
Big data is increasingly available in all areas of manufacturing, which presents value for enabling ...
In this paper, we extend some usual techniques of classification resulting from a large-scale data-m...
AbstractPatent data has been an obvious choice for analysis leading to strategic technology intellig...
Patent data has been an obvious choice for analysis leading to strategic technology intelligence, ye...
Patent data has been an obvious choice for analysis leading to strategic technology intelligence, ye...
Patent data has been an obvious choice for analysis leading to strategic technology intelligence, ye...
The complexity technologies require that companies have in-depth knowledge of the nature and effect ...
Technology assessment and planning requires that we can reliably, but indirectly, measure knowledge ...
Technology assessment and planning requires that we can reliably, but indirectly, measure knowledge ...
The digital transformation and big data paradigms have expanded across many research fields, includi...
The digital transformation and big data paradigms have expanded across many research fields, includi...
Recent advances in AI algorithms and computational power have led to opportunities for new methods a...
A number of studies have focused on creating patent maps [1,2,3]. Many of the patent map studies rel...
The analysis of large data volumes for decision-making has evolved from a sideline to a key driver o...
Introduction. Because patent publications are at the forefront of emerging technologies and are rela...
Big data is increasingly available in all areas of manufacturing, which presents value for enabling ...
In this paper, we extend some usual techniques of classification resulting from a large-scale data-m...