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Wholesale exporters from Japan   Company Established 1983
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Research

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Stories for the Future 2024
Isabelle Levent
Deep DiveMar 31, 2025
Research
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We invited 11 sci-fi filmmakers and AI researchers to Stanford for Stories for the Future, a day-and-a-half experiment in fostering new narratives about AI. Researchers shared perspectives on AI and filmmakers reflected on the challenges of writing AI narratives. Together researcher-writer pairs transformed a research paper into a written scene. The challenge? Each scene had to include an AI manifestation, but could not be about the personhood of AI or AI as a threat. Read the results of this project.

Stories for the Future 2024

Isabelle Levent
Deep DiveMar 31, 2025

We invited 11 sci-fi filmmakers and AI researchers to Stanford for Stories for the Future, a day-and-a-half experiment in fostering new narratives about AI. Researchers shared perspectives on AI and filmmakers reflected on the challenges of writing AI narratives. Together researcher-writer pairs transformed a research paper into a written scene. The challenge? Each scene had to include an AI manifestation, but could not be about the personhood of AI or AI as a threat. Read the results of this project.

Machine Learning
Generative AI
Arts, Humanities
Communications, Media
Design, Human-Computer Interaction
Sciences (Social, Health, Biological, Physical)
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Research
The Promise and Perils of Artificial Intelligence in Advancing Participatory Science and Health Equity in Public Health
Abby C King, Zakaria N Doueiri, Ankita Kaulberg, Lisa Goldman Rosas
Feb 14, 2025
Research
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Current societal trends reflect an increased mistrust in science and a lowered civic engagement that threaten to impair research that is foundational for ensuring public health and advancing health equity. One effective countermeasure to these trends lies in community-facing citizen science applications to increase public participation in scientific research, making this field an important target for artificial intelligence (AI) exploration. We highlight potentially promising citizen science AI applications that extend beyond individual use to the community level, including conversational large language models, text-to-image generative AI tools, descriptive analytics for analyzing integrated macro- and micro-level data, and predictive analytics. The novel adaptations of AI technologies for community-engaged participatory research also bring an array of potential risks. We highlight possible negative externalities and mitigations for some of the potential ethical and societal challenges in this field.

The Promise and Perils of Artificial Intelligence in Advancing Participatory Science and Health Equity in Public Health

Abby C King, Zakaria N Doueiri, Ankita Kaulberg, Lisa Goldman Rosas
Feb 14, 2025

Current societal trends reflect an increased mistrust in science and a lowered civic engagement that threaten to impair research that is foundational for ensuring public health and advancing health equity. One effective countermeasure to these trends lies in community-facing citizen science applications to increase public participation in scientific research, making this field an important target for artificial intelligence (AI) exploration. We highlight potentially promising citizen science AI applications that extend beyond individual use to the community level, including conversational large language models, text-to-image generative AI tools, descriptive analytics for analyzing integrated macro- and micro-level data, and predictive analytics. The novel adaptations of AI technologies for community-engaged participatory research also bring an array of potential risks. We highlight possible negative externalities and mitigations for some of the potential ethical and societal challenges in this field.

Foundation Models
Generative AI
Machine Learning
Natural Language Processing
Sciences (Social, Health, Biological, Physical)
Healthcare
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Research
Finding Monosemantic Subspaces and Human-Compatible Interpretations in Vision Transformers through Sparse Coding
Romeo Valentin, Vikas Sindhwan, Summeet Singh, Vincent Vanhoucke, Mykel Kochenderfer
Jan 01, 2025
Research
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We present a new method of deconstructing class activation tokens of vision transformers into a new, overcomplete basis, where each basis vector is “monosemantic” and affiliated with a single, human-compatible conceptual description. We achieve this through the use of a highly optimized and customized version of the K-SVD algorithm, which we call Double-Batch K-SVD (DBK-SVD). We demonstrate the efficacy of our approach on the sbucaptions dataset, using CLIP embeddings and comparing our results to a Sparse Autoencoder (SAE) baseline. Our method significantly outperforms SAE in terms of reconstruction loss, recovering approximately 2/3 of the original signal compared to 1/6 for SAE. We introduce novel metrics for evaluating explanation faithfulness and specificity, showing that DBK-SVD produces more diverse and specific concept descriptions. We therefore show empirically for the first time that disentangling of concepts arising in Vision Transformers is possible, a statement that has previously been questioned when applying an additional sparsity constraint. Our research opens new avenues for model interpretability, failure mitigation, and downstream task domain transfer in vision transformer models. An interactive demo showcasing our results can be found at https://disentangling-sbucaptions.xyz, and we make our DBK-SVD implementation openly available at https://github.com/RomeoV/KSVD.jl.

Finding Monosemantic Subspaces and Human-Compatible Interpretations in Vision Transformers through Sparse Coding

Romeo Valentin, Vikas Sindhwan, Summeet Singh, Vincent Vanhoucke, Mykel Kochenderfer
Jan 01, 2025

We present a new method of deconstructing class activation tokens of vision transformers into a new, overcomplete basis, where each basis vector is “monosemantic” and affiliated with a single, human-compatible conceptual description. We achieve this through the use of a highly optimized and customized version of the K-SVD algorithm, which we call Double-Batch K-SVD (DBK-SVD). We demonstrate the efficacy of our approach on the sbucaptions dataset, using CLIP embeddings and comparing our results to a Sparse Autoencoder (SAE) baseline. Our method significantly outperforms SAE in terms of reconstruction loss, recovering approximately 2/3 of the original signal compared to 1/6 for SAE. We introduce novel metrics for evaluating explanation faithfulness and specificity, showing that DBK-SVD produces more diverse and specific concept descriptions. We therefore show empirically for the first time that disentangling of concepts arising in Vision Transformers is possible, a statement that has previously been questioned when applying an additional sparsity constraint. Our research opens new avenues for model interpretability, failure mitigation, and downstream task domain transfer in vision transformer models. An interactive demo showcasing our results can be found at https://disentangling-sbucaptions.xyz, and we make our DBK-SVD implementation openly available at https://github.com/RomeoV/KSVD.jl.

Computer Vision
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Research
Policy-Shaped Prediction: Avoiding Distractions in Model-Based Reinforcement Learning
Nicholas Haber, Miles Huston, Isaac Kauvar
Dec 13, 2024
Research
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Model-based reinforcement learning (MBRL) is a promising route to sampleefficient policy optimization. However, a known vulnerability of reconstructionbased MBRL consists of scenarios in which detailed aspects of the world are highly predictable, but irrelevant to learning a good policy. Such scenarios can lead the model to exhaust its capacity on meaningless content, at the cost of neglecting important environment dynamics. While existing approaches attempt to solve this problem, we highlight its continuing impact on leading MBRL methods —including DreamerV3 and DreamerPro — with a novel environment where background distractions are intricate, predictable, and useless for planning future actions. To address this challenge we develop a method for focusing the capacity of the world model through synergy of a pretrained segmentation model, a task-aware reconstruction loss, and adversarial learning. Our method outperforms a variety of other approaches designed to reduce the impact of distractors, and is an advance towards robust model-based reinforcement learning.

Policy-Shaped Prediction: Avoiding Distractions in Model-Based Reinforcement Learning

Nicholas Haber, Miles Huston, Isaac Kauvar
Dec 13, 2024

Model-based reinforcement learning (MBRL) is a promising route to sampleefficient policy optimization. However, a known vulnerability of reconstructionbased MBRL consists of scenarios in which detailed aspects of the world are highly predictable, but irrelevant to learning a good policy. Such scenarios can lead the model to exhaust its capacity on meaningless content, at the cost of neglecting important environment dynamics. While existing approaches attempt to solve this problem, we highlight its continuing impact on leading MBRL methods —including DreamerV3 and DreamerPro — with a novel environment where background distractions are intricate, predictable, and useless for planning future actions. To address this challenge we develop a method for focusing the capacity of the world model through synergy of a pretrained segmentation model, a task-aware reconstruction loss, and adversarial learning. Our method outperforms a variety of other approaches designed to reduce the impact of distractors, and is an advance towards robust model-based reinforcement learning.

Machine Learning
Foundation Models
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News
Selective focus of MRI brain sagittal plane for detect a variety of conditions of the brain

Generative AI Is Helping Stanford Researchers Better Understand Brain Diseases

Vignesh Ramachandran
Generative AIHealthcareSciences (Social, Health, Biological, Physical)Oct 07

Synthetic brain MRI technology is supercharging computational neuroscience with massive data.

Offline “Studying” Shrinks the Cost of Contextually Aware AI
Andrew Myers
Sep 29
News
Blue abstract background with light traveling through abstract flat cable illustrating data flow (3D render)

By having AI study a user’s context offline, researchers dramatically reduce the memory and cost required to make AI contextually aware.

BEHAVIOR Challenge Charts the Way Forward for Domestic Robotics
Andrew Myers
Sep 22
News
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With a first-of-its-kind competition for roboticists everywhere, researchers at Stanford are hoping to push domestic robotics into a new age of autonomy and capability.

An AI Social Coach Is Teaching Empathy to People with Autism
Sarah Wells
Aug 13
News
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A specialized chatbot named Noora is helping individuals with autism spectrum disorder practice their social skills on demand.

When AI Imagines a Tree: How Your Chatbot’s Worldview Shapes Your Thinking
Katie Gray Garrison
Jul 28
News
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A new study on generative AI argues that addressing biases requires a deeper exploration of ontological assumptions, challenging the way we define fundamental concepts like humanity and connection.

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Guidelines for HAI sponsorship of your affinity group

Do you have ideas on advancing AI to improve the human condition? You’re invited to apply.
announcement
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Stanford HAI Selects 12 New Student Affinity Groups

Nov 20

This year, affinity group topics include accessibility for individuals with disabilities, artistic creation, education, healthcare, journalism, workforce productivity, and more. 

news
Two smiling HAI Fellows sitting on steps

Building the Next Generation of AI Scholars

Beth Jensen
Education, SkillsJul 12

A cross-disciplinary group of Stanford students explores fresh approaches to human-centered AI.

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