All individuals are unique, but millions of people share names. How to distinguish between - or disambiguate - people with common names has always perplexed researchers.
This conundrum occurs in a wide range of environments, from the bibliographic to law enforcement and other areas.
Now, scientists from the Indiana University-Purdue University Indianapolis (IUPUI) in the US have developed a novel machine-learning method to provide better solutions to this problem.
The new method is an improvement on currently existing approaches of name disambiguation because it works on streaming data that enables the identification of previously unencountered names.
"Non-exhaustiveness" is a very important aspect for name disambiguation because training data can never be exhaustive, as it is impossible to include records of all living individuals.
"We can teach the computer to recognise names and disambiguate information accumulated from a variety of sources - Facebook, Twitter and blog posts, public records, and other documents - by collecting features such as Facebook friends and keywords from people's posts using the identical algorithm," said IUPUI associate professor Mohammad al Hasan.
"Our innovative machine-learning model can perform name disambiguation in an online setting instantaneously and, importantly, in a non-exhaustive fashion," said Hasan, who led the study.
"Our method grows and changes when new persons appear, enabling us to recognise the ever-growing number of individuals whose records were not previously encountered, he said.
Some names are more common than others, so the number of individuals sharing that name grows faster than other names.
Disclaimer: No Business Standard Journalist was involved in creation of this content
