Universal Emotional Hubs in Language – Neuroscience News

Summary: Researchers made a breakthrough in understanding the universality of emotions across languages by using colexification analysis, a method of studying word associations. Their study identifies four central emotion-related concepts GOOD, WANT, BAD, and LOVE as having the highest number of associations with other emotional words in multiple languages.

This finding aligns with traditional semantic methods and natural semantic metalanguage (NSM), reinforcing the universality of these emotions. The studys insights can significantly impact natural language processing and cross-cultural communication, aiding the development of language processing algorithms and large language models (LLMs).

Key Facts:

Source: Tokyo University of Science

Emotions exert a profound influence on human behavior, prompting extensive explorations in the realms of psychology and linguistics. Understanding central emotions also has practical utility since it can help organizations create messages that resonate better with people. For instance, businesses can enhance their connection with their customers, and non-profits can prompt quicker action by skillfully leveraging the salient emotions in humans.

Colexification is a phenomenon in which the occurrence of a single word is associated with multiple concepts that share semantic relationships. The analysis of colexification is an innovative linguistic method for indirect semantic associativity analysis, leveraging existing semantic relations without the need for additional data.

In a groundbreaking discovery, researchers from Japan have identified emotional hubs that exist across languages. Their work,published online in Scientific Reportson December 09, 2023, analyzed word associations by employing a colexification network and revealed that the emotion-related concepts GOOD, WANT, BAD, and LOVE have the highest number of associations with all other words that represent emotions.

The researchers, including Dr. Tohru Ikeguchi, Ms. Mitsuki Fukuya, and Dr. Tomoko Matsumoto from the Tokyo University of Science, and Dr. Yutaka Shimada from Saitama University, built a network by connecting concepts in several languages. In doing so, they ensured that the connection between two words represented the strength of colexification.

Colexification is the phenomenon of a single word with multiple concepts. For example, the Spanish word malo has two meanings BAD and SEVERE. It means that the two concepts of BAD and SEVERE are colexified in Spanish. In this paper, by focusing on colexification, we succeeded in detecting central emotions that share semantic commonality with many other emotions, explains Dr. Ikeguchi, the lead author of the study.

In a discovery that affirms the universality of their findings, the team discovered that three of the four emotions they identified are identical to core emotions discovered through traditional semantic methods and the natural semantic metalanguage (NSM), which corresponds with their previous study findings.

In this context, Dr. Ikeguchi notes, To identify the semantic primes, NSM researchers studied numerous languages using traditional semantic methods. Intriguingly, the set of semantic primes includes three of our four central emotion-related concepts: GOOD,BAD, and WANT. This agreement supports our conclusion that the central concepts identified by colexification analysis could be shared by many languages rather than specific to English.

The findings of this study may offer novel insights into the evolution of languages and cross-cultural communication since words are considered to be intricately connected to emotions. The outcomes gain significance amid the increasing importance of comprehending natural language processing.

As Dr. Ikeguchi explains, Concepts associated with sentiments or emotions play an important role in the field of natural language processing, particularly sentiment analyses. The analysis methods enable us to identify semantically positive and negative orientations of written texts and have various applications in the real world.

A better understanding of natural language processing will also aid in the development of language processing algorithms and large language models (LLMs). LLMs are now used extensively for information processing and content generation. Globally, there is a trend of increasing investments aimed at enhancing and refining these models. Therefore, the findings of this study may have useful implications for the future of online communication.

Author: Hiroshi Matsuda Source: Tokyo University of Science Contact: Hiroshi Matsuda Tokyo University of Science Image: The image is credited to Neuroscience News

Original Research: Open access. Central emotions and hubs in a colexification network by Tohru Ikeguchi et al. Scientific Reports

Abstract

Central emotions and hubs in a colexification network

By focusing on colexification, we detected central emotions sharing semantic commonalities with many other emotions in terms of a semantic relationship of both similarity and associativity. In analysis, we created colexification networks from multiple languages by assigning a concept to a vertex and colexification to an edge.

We identify concepts of emotions with a large weight in the colexification network and specify central emotions by finding hub emotions. Our resultant central emotions are four: GOOD, WANT, BAD, and LOVE.

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Universal Emotional Hubs in Language - Neuroscience News

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