The Times Australia
Fisher and Paykel Appliances
News From Asia

.

PolyU-led research reveals that sensory and motor inputs help large language models represent complex concepts

HONG KONG SAR - Media OutReach Newswire - 9 June 2025 - Can one truly understand what "flower" means without smelling a rose, touching a daisy or walking through a field of wildflowers? This question is at the core of a rich debate in philosophy and cognitive science.

While embodied cognition theorists argue that physical, sensory experience is essential to concept formation, studies of the rapidly evolving large language models (LLMs) suggest that language alone can build deep, meaningful representations of the world.

A research team led by Prof. Li Ping, Sin Wai Kin Foundation Professor in Humanities and Technology, Dean of the PolyU Faculty of Humanities and Associate Director of the PolyU-Hangzhou Technology and Innovation Research Institute, explored the similarities between large language models and human representations, shedding new light on the extent to which language alone can shape the formation and learning of complex conceptual knowledge.
A research team led by Prof. Li Ping, Sin Wai Kin Foundation Professor in Humanities and Technology, Dean of the PolyU Faculty of Humanities and Associate Director of the PolyU-Hangzhou Technology and Innovation Research Institute, explored the similarities between large language models and human representations, shedding new light on the extent to which language alone can shape the formation and learning of complex conceptual knowledge.

By exploring the similarities between LLMs and human representations, researchers at The Hong Kong Polytechnic University (PolyU) and their collaborators have shed new light on the extent to which language alone can shape the formation and learning of complex conceptual knowledge. Their findings also revealed how the use of sensory input for grounding or embodiment – connecting abstract with concrete concepts during learning – affects the ability of LLMs to understand complex concepts and form human-like representations. The study, in collaboration with scholars from Ohio State University, Princeton University and City University of New York, was recently published in Nature Human Behaviour.

Led by Prof. LI Ping, Sin Wai Kin Foundation Professor in Humanities and Technology, Dean of the PolyU Faculty of Humanities and Associate Director of the PolyU-Hangzhou Technology and Innovation Research Institute, the research team selected conceptual word ratings produced by state-of-the-art LLMs, namely ChatGPT (GPT-3.5, GPT-4) and Google LLMs (PaLM and Gemini). They compared them with human-generated word ratings of around 4,500 words across non-sensorimotor (e.g., valence, concreteness, imageability), sensory (e.g., visual, olfactory, auditory) and motor domains (e.g., foot/leg, mouth/throat) from the highly reliable and validated Glasgow Norms and Lancaster Norms datasets.

The research team first compared pairs of data from individual humans and individual LLM runs to discover the similarity between word ratings across each dimension in the three domains, using results from human-human pairs as the benchmark. This approach could, for instance, highlight to what extent humans and LLMs agree that certain concepts are more concrete than others. However, such analyses might overlook how multiple dimensions jointly contribute to the overall representation of a word. For example, the word pair "pasta" and "roses" might receive equally high olfactory ratings, but "pasta" is in fact more similar to "noodles" than to "roses" when considering appearance and taste. The team therefore conducted representational similarity analysis of each word as a vector along multiple attributes of non-sensorimotor, sensory and motor dimensions for a more complete comparison between humans and LLMs.

The representational similarity analyses revealed that word representations produced by the LLMs were most similar to human representations in the non-sensorimotor domain, less similar for words in sensory domain and most dissimilar for words in motor domain. This highlights LLM limitations in fully capturing humans' conceptual understanding. Non-sensorimotor concepts are understood well but LLMs fall short when representing concepts involving sensory information like visual appearance and taste, and body movement. Motor concepts, which are less described in language and rely heavily on embodied experiences, are even more challenging to LLMs than sensory concepts like colour, which can be learned from textual data.

In light of the findings, the researchers examined whether grounding would improve the LLMs' performance. They compared the performance of more grounded LLMs trained on both language and visual input (GPT-4, Gemini) with that of LLMs trained on language alone (GPT-3.5, PaLM). They discovered that the more grounded models incorporating visual input exhibited a much higher similarity with human representations.

Prof. Li Ping said, "The availability of both LLMs trained on language alone and those trained on language and visual input, such as images and videos, provides a unique setting for research on how sensory input affects human conceptualisation. Our study exemplifies the potential benefits of multimodal learning, a human ability to simultaneously integrate information from multiple dimensions in the learning and formation of concepts and knowledge in general. Incorporating multimodal information processing in LLMs can potentially lead to a more human-like representation and more efficient human-like performance in LLMs in the future."

Interestingly, this finding is also consistent with those of previous human studies indicating the representational transfer. Humans acquire object-shape knowledge through both visual and tactile experiences, with seeing and touching objects activating the same regions in human brains. The researchers pointed out that – as in humans – multimodal LLMs may use multiple types of input to merge or transfer representations embedded in a continuous, high-dimensional space. Prof. Li added, "The smooth, continuous structure of embedding space in LLMs may underlie our observation that knowledge derived from one modality could transfer to other related modalities. This could explain why congenitally blind and normally sighted people can have similar representations in some areas. Current limits in LLMs are clear in this respect".

Ultimately, the researchers envision a future in which LLMs are equipped with grounded sensory input, for example, through humanoid robotics, allowing them to actively interpret the physical world and act accordingly. Prof. Li said, "These advances may enable LLMs to fully capture embodied representations that mirror the complexity and richness of human cognition, and a rose in LLM's representation will then be indistinguishable from that of humans."

Hashtag: #PolyU #HumanCognition #LargeLanguageModels #LLMs #GenerativeAI

The issuer is solely responsible for the content of this announcement.

Active Wear

Times Magazine

YepAI Joins Victoria's AI Trade Mission to Singapore for Big Data & AI World Asia 2025

YepAI, a Melbourne-based leader in enterprise artificial intelligence solutions, announced today...

Building a Strong Online Presence with Katoomba Web Design

Katoomba web design is more than just creating a website that looks good—it’s about building an onli...

September Sunset Polo

International Polo Tour To Bridge Historic Sport, Life-Changing Philanthropy, and Breath-Taking Beau...

5 Ways Microsoft Fabric Simplifies Your Data Analytics Workflow

In today's data-driven world, businesses are constantly seeking ways to streamline their data anal...

7 Questions to Ask Before You Sign IT Support Companies in Sydney

Choosing an IT partner can feel like buying an insurance policy you hope you never need. The right c...

Choosing the Right Legal Aid Lawyer in Sutherland Shire: Key Considerations

Legal aid services play an essential role in ensuring access to justice for all. For people in t...

The Times Features

Is Laminate a Good Option For Kitchen Benchtops?

When it comes to renovating your kitchen, one of the most important choices you’ll make is your be...

Albanese Government failing to defend the rights of ex-service personnel

The Albanese Government is failing to defend the rights of ex-service personnel to seek a review of ...

Increase your holdings and hold your increases from a wisely diverse investment portfolio.

What comes to your mind when I ask about which investments are most important to you? I imagine we w...

Canberra Just Got a Glow Up: Inside Kingpin’s Dazzling New Attractions

Canberra’s entertainment scene just levelled up. Kingpin entertainment, Australia’s home of immers...

The Capsule CEO: Ashley Raso’s Reinvention from Property Developer to Fashion Founder

From property developer to creative founder, Raso positions Capsule WD as the wardrobe system resh...

Yellow Canary partners with global payroll audit leader Celery to bring pre-payroll review technology to Australia

Payroll compliance is becoming tougher for Australian employers. Underpayment cases continue to do...

Noticing These 5 Issues? Contact an Emergency Plumber Now

The invisible arteries running through homes, plumbing systems, streamline daily life discreetly...

The Perfect Champagne Day Pairing: Luke Nguyen’s Chargrilled Lemongrass Beef Skewers

Celebrate Champagne Day on October 24th with this delicious recipe and elegant pairing from Luke Ngu...

Bribing kids to eat vegetables might backfire. Here’s what to do instead

It’s a tactic many parents know well: “eat two bites of broccoli, and then you can have desser...