New Study Evaluates AI Recognition of Lexical Borrowing

This Tuesday, Dec. 9, 2014 photo shows the word "culture" in the Merriam-Webster's Collegiate Dictionary, in New York. Merriam-Webster has named "culture" its 2014 word of the year. (AP Photo/Richard Drew)
This Tuesday, Dec. 9, 2014 photo shows the word "culture" in the Merriam-Webster's Collegiate Dictionary, in New York. Merriam-Webster has named "culture" its 2014 word of the year. (AP Photo/Richard Drew)
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New Study Evaluates AI Recognition of Lexical Borrowing

This Tuesday, Dec. 9, 2014 photo shows the word "culture" in the Merriam-Webster's Collegiate Dictionary, in New York. Merriam-Webster has named "culture" its 2014 word of the year. (AP Photo/Richard Drew)
This Tuesday, Dec. 9, 2014 photo shows the word "culture" in the Merriam-Webster's Collegiate Dictionary, in New York. Merriam-Webster has named "culture" its 2014 word of the year. (AP Photo/Richard Drew)

Researchers from the Pontificia Universidad Católica del Perú (PUCP) and the Max Planck Institute for the Science of Human History have investigated the ability of machine learning algorithms to identify lexical borrowings, according to the German News Agency.

Lexical borrowing, or the direct transfer of words from one language to another, helps researchers trace the evolution of modern languages and indicate cultural contact between distinct linguistic groups. However, researchers often face challenges in this field because the tracing process requires the comparison of multiple languages.

"The automated detection of lexical borrowings is still one of the most difficult tasks we face in computational historical linguistics," the Phys.org website quoted lead author Johann-Mattis as saying.

In the current study, researchers trained language models that mimic the way in which linguists identify borrowings using acoustics to detect the words pronounced in the same way in different languages. This similarity indicates that the studied term was actually transferred from a language to another during the different phases of language evolution.

The team said the models were applied to a modified version of the World Loanword Database, a catalog of borrowing information for a sample of 40 languages from different language families all over the world, in order to see how accurately these models can determine the words borrowed from other languages.

In many cases the results were unsatisfying, suggesting that loanword detection is too difficult for machine learning methods most commonly used.

"After these first experiments with monolingual lexical borrowings, we can proceed to stake out other aspects of the problem," says researcher John Miller of PUCP.

Other researchers including co-author Tiago Tresoldi believe that "our computer-assisted approach will shed a new light on the importance of computer-assisted methods for language comparison and historical linguistics."



Syria Seeks EU Help to Battle Massive Wildfires

FILE : A fire burns at a forest in Latakia province, Syria in this handout released by SANA on October 9, 2020. SANA/Handout via REUTERS
FILE : A fire burns at a forest in Latakia province, Syria in this handout released by SANA on October 9, 2020. SANA/Handout via REUTERS
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Syria Seeks EU Help to Battle Massive Wildfires

FILE : A fire burns at a forest in Latakia province, Syria in this handout released by SANA on October 9, 2020. SANA/Handout via REUTERS
FILE : A fire burns at a forest in Latakia province, Syria in this handout released by SANA on October 9, 2020. SANA/Handout via REUTERS

Syria’s minister of emergencies and disaster management on Tuesday requested support from the European Union to battle wildfires that have swept through a vast stretch of forested land.

The fires have been burning for six days, with Syrian emergency crews struggling to bring them under control amid strong winds and severe drought.

Neighboring countries Jordan, Lebanon and Türkiye have already dispatched firefighting teams to assist in the response.

“We asked the European Union for help in extinguishing the fires,” minister Raed al-Saleh said on X, adding Cyprus was expected to send aid on Tuesday, AFP reported.

“Fear of the fires spreading due to strong winds last night prompted us to evacuate 25 families to ensure their safety without any human casualties,” he added.

According to the United Nations Office for the Coordination of Humanitarian Affairs (OCHA) office in Syria, the fires impacted “some 5,000 persons, including displacements, across 60 communities.”

An estimated 100 square kilometers (40 square miles) of forest and farmland -- more than three percent of Syria’s forest cover -- have burned, OCHA told AFP.

At least seven towns in Latakia province have been evacuated as a precaution.

Efforts to extinguish the fires have been hindered by “rugged terrain, the absence of firebreaks, strong winds, and the presence of mines and unexploded ordnance”, Saleh said.

With man-made climate change increasing the likelihood and intensity of droughts and wildfires worldwide, Syria has also been battered by heatwaves and low rainfall.

In June, the United Nations Food and Agriculture Organization said Syria had “not seen such bad climate conditions in 60 years.”