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Text therapy: study finds couples who use emojis in text messages feel closer | Relationships

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The secret to a good relationship may be staring smartphone users in the face.

A new study published in the journal Plos One found that using emojis in text messages makes people feel closer and more satisfied in their personal lives.

Researchers at the University of Texas spoke to 260 people aged between 23 and 67 and asked them to read 15 text message exchanges that varied only in the presence or absence of emojis.

Participants were instructed to imagine themselves as the sender of each message while focusing on the recipient’s replies to evaluate responsiveness, likability, closeness and relationship satisfaction.

The study revealed that people who send emojis combined with text are seen to be more responsive in their relationships than people who send text alone.

It also found emojis serve as nonverbal cues that signal attentiveness and emotional engagement.

Luke McGregor, 42, and Amy Thunig-McGregor, 37, say being able to use emojis helps their family communicate better.

Luke said he wasn’t a regular emoji sender at the start of their relationship and had to learn to start incorporating them into text messages to Amy.

“I traditionally didn’t use emojis that much but when I first got [together] with Amy, I noticed them using them a lot, so there was a vulnerability or a hurdle I had to get over to start using them myself,” McGregor said.

Emojis help Amy Thunig-McGregor and partner Luke McGregor ‘really be clear with tone and intention’

“I wanted Amy to know that they were loved, and so to become a regular sender of emojis to Amy in order to communicate affection was at least initially a big deal for me.”

Amy said emojis were a good tool to enhance their communication.

“We’re both autistic as well for context … it helps us really be clear with tone and intention in a way that isn’t possible with just written text,” they said.

Senior lecturer in psychology at Central Queensland University Dr Raquel Peel, who was not involved in the study, said sending emojis can be a creative alternative when people are unable to see their partner face to face.

“I don’t think we can replace face-to-face interactions because we are talking about intimate partnerships and relationships, but we have to be realistic that this isn’t always possible,” Peel said.

“So if you can’t meet face to face with your partner for whatever reason staying connected is important.

“Using emojis is then an effective alternative.”

Her advice was to not underestimate the value of communication in a relationship and to always try and stay connected to your partner in whatever way you communicate.

“One thing that people also forget when I’m talking to them about relationships is the value of humour and having a bit of fun,” Peel said.

“So if emojis can serve a purpose that way, which we know they can, it adds to the element of fun and connection through humour and that is really important.”



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Do AI systems socially interact the same way as living beings?

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Key takeaways

  • A new study that compares biological brains with artificial intelligence systems analyzed the neural network patterns that emerged during social and non-social tasks in mice and programmed artificial intelligence agents.
  • UCLA researchers identified high-dimensional “shared” and “unique” neural subspaces when mice interact socially, as well as when AI agents engaged in social behaviors.
  • Findings could help advance understanding of human social disorders and develop AI that can understand and engage in social interactions.

As AI systems are increasingly integrated into from virtual assistants and customer service agents to counseling and AI companions, an understanding of social neural dynamics is essential for both scientific and technological progress. A new study from UCLA researchers shows biological brains and AI systems develop remarkably similar neural patterns during social interaction.

The study, recently published in the journal Nature, reveals that when mice interact socially, specific brain cell types create synchronize in “shared neural spaces,” and artificial intelligence agents develop analogous patterns when engaging in social behaviors.     

The new research represents a striking convergence of neuroscience and artificial intelligence, two of today’s most rapidly advancing fields. By directly comparing how biological brains and AI systems process social information, scientists can now better understand fundamental principles that govern social cognition across different types of intelligent systems. The findings could advance understanding of social disorders like autism while simultaneously informing the development of more sophisticated, socially  aware AI systems.  

This work was supported in part by , the National Science Foundation, the Packard Foundation, Vallee Foundation, Mallinckrodt Foundation and the Brain and Behavior Research Foundation.

Examining AI agents’ social behavior

A multidisciplinary team from UCLA’s departments of neurobiology, biological chemistry, bioengineering, electrical and computer engineering, and computer science across the David Geffen School of Medicine and UCLA Samueli School of Engineering used advanced brain imaging techniques to record activity from molecularly defined neurons in the dorsomedial prefrontal cortex of mice during social interactions. The researchers developed a novel computational framework to identify high-dimensional “shared” and “unique” neural subspaces across interacting individuals. The team then trained artificial intelligence agents to interact socially and applied the same analytical framework to examine neural network patterns in AI systems that emerged during social versus non-social tasks.

The research revealed striking parallels between biological and artificial systems during social interaction. In both mice and AI systems, neural activity could be partitioned into two distinct components: a “shared neural subspace” containing synchronized patterns between interacting entities, and a “unique neural subspace” containing activity specific to each individual.

Remarkably, GABAergic neurons — inhibitory brain cells that regulate neural activity —showed significantly larger shared neural spaces compared with glutamatergic neurons, which are the brain’s primary excitatory cells. This represents the first investigation of inter-brain neural dynamics in molecularly defined cell types, revealing previously unknown differences in how specific neuron types contribute to social synchronization.

When the same analytical framework was applied to AI agents, shared neural dynamics emerged as the artificial systems developed social interaction capabilities. Most importantly, when researchers selectively disrupted these shared neural components in artificial systems, social behaviors were substantially reduced, providing the direct evidence that synchronized neural patterns causally drive social interactions.

The study also revealed that shared neural dynamics don’t simply reflect coordinated behaviors between individuals, but emerge from representations of each other’s unique behavioral actions during social interaction.

“This discovery fundamentally changes how we think about social behavior across all intelligent systems,” said Weizhe Hong, professor of neurobiology, biological chemistry and bioengineering at UCLA and lead author of the new work. “We’ve shown for the first time that the neural mechanisms driving social interaction are remarkably similar between biological brains and artificial intelligence systems. This suggests we’ve identified a fundamental principle of how any intelligent system — whether biological or artificial — processes social information. The implications are significant for both understanding human social disorders and developing AI that can truly understand and engage in social interactions.”

Continuing research for treating social disorders and training AI

The research team plans to further investigate shared neural dynamics in different and potentially more complex social interactions. They also aim to explore how disruptions in shared neural space might contribute to social disorders and whether therapeutic interventions could restore healthy patterns of inter-brain synchronization. The artificial intelligence framework may serve as a platform for testing hypotheses about social neural mechanisms that are difficult to examine directly in biological systems. They also aim to develop methods to train socially intelligent AI.

The study was led by UCLA’s Hong and Jonathan Kao, associate professor of electrical and computer engineering. Co-first authors Xingjian Zhang and Nguyen Phi, along with collaborators Qin Li, Ryan Gorzek, Niklas Zwingenberger, Shan Huang, John Zhou, Lyle Kingsbury, Tara Raam, Ye Emily Wu and Don Wei contributed to the research.



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I tried recreating memories with Veo 3 and it went better than I thought, with one big exception

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If someone offers to make an AI video recreation of your wedding, just say no. This is the tough lesson I learned when I started trying to recreate memories with Google’s Gemini Veo model. What started off as a fun exercise ended in disgust.

I grew up in the era before digital capture. We took photos and videos, but most were squirreled away in boxes that we only dragged out for special occasions. Things like the birth of my children and their earliest years were caught on film and 8mm videotape.



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That’s Our Show

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July 07, 2025

This is the last episode of the most meaningful project we’ve ever been part of.

The Amys couldn’t imagine signing off without telling you why the podcast is ending, reminiscing with founding producer Amanda Kersey, and fitting in two final Ask the Amys questions. HBR’s Maureen Hoch is here too, to tell the origin story of the show—because it was her idea, and a good one, right?

Saying goodbye to all the women who’ve listened since 2018 is gut-wrenching. If the podcast made a difference in your life, please bring us to tears/make us smile with an email: womenatwork@hbr.org.

If and when you do that, you’ll receive an auto reply that includes a list of episodes organized by topic. Hopefully that will direct you to perspectives and advice that’ll help you make sense of your experiences, aim high, go after what you need, get through tough times, and take care of yourself. That’s the sort of insight and support we’ve spent the past eight years aiming to give this audience, and you all have in turn given so much back—to the Women at Work team and to one another.



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