惯性聚合 高效追踪和阅读你感兴趣的博客、新闻、科技资讯
阅读原文 在惯性聚合中打开

推荐订阅源

Google DeepMind News
Google DeepMind News
S
Security Affairs
阮一峰的网络日志
阮一峰的网络日志
L
LangChain Blog
Microsoft Azure Blog
Microsoft Azure Blog
雷峰网
雷峰网
Recent Announcements
Recent Announcements
WordPress大学
WordPress大学
The GitHub Blog
The GitHub Blog
博客园_首页
The Cloudflare Blog
M
MIT News - Artificial intelligence
博客园 - 【当耐特】
MyScale Blog
MyScale Blog
S
SegmentFault 最新的问题
P
Proofpoint News Feed
Y
Y Combinator Blog
Jina AI
Jina AI
博客园 - 聂微东
A
About on SuperTechFans
Blog — PlanetScale
Blog — PlanetScale
博客园 - 司徒正美
G
Google Developers Blog
云风的 BLOG
云风的 BLOG
F
Full Disclosure
CTFtime.org: upcoming CTF events
CTFtime.org: upcoming CTF events
Microsoft Security Blog
Microsoft Security Blog
爱范儿
爱范儿
T
Tailwind CSS Blog
J
Java Code Geeks
Vercel News
Vercel News
钛媒体:引领未来商业与生活新知
钛媒体:引领未来商业与生活新知
Stack Overflow Blog
Stack Overflow Blog
罗磊的独立博客
小众软件
小众软件
酷 壳 – CoolShell
酷 壳 – CoolShell
T
The Blog of Author Tim Ferriss
cs.AI updates on arXiv.org
cs.AI updates on arXiv.org
博客园 - 三生石上(FineUI控件)
W
WeLiveSecurity
PCI Perspectives
PCI Perspectives
Attack and Defense Labs
Attack and Defense Labs
Exploit-DB.com RSS Feed
Exploit-DB.com RSS Feed
cs.CV updates on arXiv.org
cs.CV updates on arXiv.org
宝玉的分享
宝玉的分享
IT之家
IT之家
Hacker News: Ask HN
Hacker News: Ask HN
The Register - Security
The Register - Security
T
The Exploit Database - CXSecurity.com
T
Threat Research - Cisco Blogs

Futurism

Meta Installing Software on Employee Computers to Track Everything They Do, Feed the Data to AI Chinese Workers Horrified as Bosses Direct Them to Train Their AI Replacements Concern Grows That AI Is Damaging Users’ Cognitive Abilities JPMorganChase Data Center Gets $77 Million Handout to Create Grand Total of One Job Nvidia CEO Loses His Cool at Tough Question CEO of $1.5 Billion AI Startup Accused of Massive Fraud by Justice Department Palantir Issues Ominous Corporate Manifesto Madison Square Garden Reportedly Used Facial Recognition to Stalk Trans Woman For Two Years The Florida Mass Shooter’s Conversations With ChatGPT Are Worse Than You Could Possibly Imagine China Is Starting to Pull Ahead of US in AI Race AI Company Known for Teen Suicides Launches New Feature to Turn Books Into Roleplaying Experiences Study Finds AI Use Eats Away at Users’ Confidence in Their Own Brains Democrats Warned Not to Upset Multi-Million Dollar AI Lobbyists, Even Though It’d Be a Slam Dunk With Voters City Council Wrecked in Voter Bloodbath After Allowing New Data Center Mother Reportedly Doesn’t Know Her Son Died Because She’s Been Talking to an AI Version of Him Things You Told ChatGPT or Claude My Have Already Doomed You in Court Millions of Americans Are Talking to AI Instead of Going to the Doctor, and It’s Giving Them Horrendously Flawed Medical Advice There Are Signs of a Massive AI Backlash A Prominent PR Firm Is Running a Fake News Site That’s Plagiarizing Original Journalism at Incredible Scale Fury Erupts as Val Kilmer’s Estate Announces Starring Role in AI Film Made From Beyond the Grave Allbirds Stock Now Crashing as Reality Sets in About Its Delusional AI Pivot NAACP Sues Elon Over His Noxious AI Data Center Top Security Experts Alarmed by Power of Anthropic’s New Hacker AI Teens Alarmed at What AI Is Doing to Their Minds What It Really Means That a Failing Shoe Brand “Pivoted to AI” and Its Stock Soared 700 Percent Starbucks’ Baffling ChatGPT Collab Treats Customers Like Empty, Soulless Venti Cups ChatGPT’s “Honest Reaction” to a “Song” Composed Entirely of Gas-Passing Noises Will Make You Question Whether It’s Honestly Evaluating Your Other Brilliant Ideas AI Is Turning Workplaces Into Hopeless Gridlock Companies Just Learned a Brutal Lesson About Training AI to Do Human Jobs Berklee College of Music Students Furious That It’s Offering an AI “Songwriting” Class Usually, Young People Embrace New Technology. Gen Z’s Attitude Toward AI Should Worry the Entire Tech Industry AI Use Appears to Have a “Boiling Frog” Effect on Human Cognition, New Study Warns Man Who Threw Molotov at Sam Altman’s House Warned AI Will Exterminate Humankind Trump Is Inflicting Massive Damage to His Public Image by Posting Offensive AI Slop There’s Something Fundamentally Wrong With LLMs Why Do ChatGPT Users Keep Committing Mass Shootings? Woman Sues OpenAI, Saying ChatGPT Unleashed a Vicious Stalker Against Her and Did Nothing When She Begged for Help Huge Group of Experts Warns Meta That Its Pervert Glasses Will Enable Terrible Crimes Meta Secretly Building a Photorealistic AI Clone of Mark Zuckerberg so No Employee Can Ever Escape His Watchful Eye Recent Grads Say AI Is Making It Impossible to Find a Job Moon Denialists Are So Pathetic That They’re Using AI to Fake Artemis Footage Man Suing City After AI Camera Flags Him For Wrongful Arrest Nike’s AI Designed World Cup Jerseys Are a Disaster OpenAI Backing Law That Protects It When AI Causes Mass Deaths and Other Mayhem Research Finds That AI Has Already Replaced Work for 20 Percent of Jobs OpenAI Staffers Horrified When Senior Leadership Hatched “Insane” Plan to Pit World Governments Against Each Other OpenAI’s Latest Thing It’s Bragging About Is Actually Kind of Sad Gen Z Sabotaging AI at Work So It Won’t Take Their Job Why Does It Suddenly Feel Like OpenAI Is Melting Down Into Disaster? The Effects of AI-Generated Code Tearing Through Corporations Is Actually Kind of Funny Foolish Pollsters Are Now Just Asking AI What Voters Would Say in Response to Questions and Publishing It at Face Value OpenAI Says It’s Already Made $100 Million by Stuffing ChatGPT With Ads AI Is Causing Healthcare Costs to Surge There’s a Mass Rebellion Against AI in the Workplace People Who Lose Their Job to AI Are in for a World of Pain, Goldman Sachs Report Finds OpenAI Says Not to Worry About UBI, Because It Has Another Idea Someone Just Threw a Molotov Cocktail At Sam Altman’s House New York Times Makes Substantial Changes to Article That Glazed a Sleazy AI Startup: “Our Piece Should Have Included That Information” First AI Model From Zuckerberg’s Wildly Expensive Superintelligence Lab Flops Compared to Virtually All Rivals Economists Starting to Admit They May Have Been Wrong About AI Never Replacing Human Jobs AI-Powered Drug Marketer Medvi Responds After Allegations About Fake Doctors and Patients Google Says Showing Polymarket Bets on Google News Was a Mistake We Talked to a Writer Accused of Publishing An AI-Generated Essay in The New York Times Analysis Finds That Google’s AI Overviews Are Providing Misinformation at a Scale Possibly Unprecedented in the History of Human Civilization Microsoft Mocked for Terms of Service That Admit Copilot Is for “Entertainment Purposes Only” Anthropic Warns That “Reckless” Claude Mythos Escaped a Sandbox Environment During Testing ChatGPT Is Sending People Into Obsessive Spirals of Hypochondria Sam Altman’s Coworkers Say He Can Barely Code and Misunderstands Basic Machine Learning Concepts College Students Losing Ability to Participate in Class Discussions Due to Offloading Their Thinking to AI Wall Street Journal Editor-in-Chief Instructs Staff to Welcome AI Sloplords The Entire State of Maine Is Poised to Ban New Data Centers Inside Sources Say Sam Altman Is a Sociopath Startup Approved to Let AI System Prescribe Psychiatric Medication Sam Altman Watches Awkwardly As He’s Shown Bizarre ChatGPT Issue: “Uh, Maybe, Uhhh…” Why Is the New York Times Laundering the Reputation of a Sleazy AI Startup That’s Selling GLP-1s via a Dishonest Dumpster Fire of Fake Doctors, Phony Before-and-After Pictures, and Other Glaring Red Flags? ICE Foiled At Every Turn By One Vibe Coding Man In His Pickup Truck Groups Set Up to Shill AI and Data Centers Are Pouring Huge Sums of Money Into the Midterm Elections Nonprofit Research Groups Disturbed to Learn That OpenAI Has Secretly Been Funding Their Work AI Expert Says It’s Time to Stop Freaking Out About AI Taking Our Jobs We Can’t Even Imagine the Eating Disorders This New Meta Smart Glasses Feature Will Cause China Cracking Down on the Types of AI That Are Tearing America Apart Target Warns That If Its AI Shopping Agent Makes an Expensive Mistake, You’ll Have to Pay for It America’s Largest City Hospital System Ready to Start Replacing Radiologists With AI, Its CEO Says AI Forces College Professor to Get Typewriters for Entire Class Claude Leak Shows That Anthropic Is Tracking Users’ Vulgar Language and Deems Them “Negative” The Real Reason OpenAI Shut Sora Down Is a Warning to Every AI Startup William Shatner Says AI Is Spreading Horrific Rumors About Him AI Is Killing Microsoft Say a Prayer for This Startup That’s Replacing Its Developers With OpenClaw Two OpenAI Execs, Including CEO of AGI, Going on Medical Leave Sam Altman Opens Up About Telling CEO of Disney That It Had All Been Smoke and Mirrors AI-Powered Tractor Startup Burns Through a Quarter Billion Dollars, Fires All Employees in Epic Implosion Anthropic Suddenly Cares Intensely About Intellectual Property After Realizing With Horror That It Accidentally Leaked Claude’s Source Code There’s a Blinking Warning Sign for the Data Centers in Space Industry Almost Half of US Data Centers That Were Supposed to Open This Year Slated to Be Canceled or Delayed Leaked Claude Code Shows Anthropic Building Mysterious “Tamagotchi” Feature Into It The Iran War Has Cut Off Supply of a Gas the AI Industry Desperately Needs The Fact That Anthropic Has Been Boasting About How Much Its Development Now Relies on Claude Makes It Very Interesting That It Just Suffered a Catastrophic Leak of Its Source Code NYT Cuts Ties With Writer as Scrutiny of AI Content Grows Data Centers Causing Huge Temperature Spikes for Miles Around Them, Study Suggests
Frontier AI Models Are Doing Something Absolutely Bizarre When Asked to Diagnose Medical X-Rays
2026-04-07 · via Futurism

Sign up to see the future, today

Can’t-miss innovations from the bleeding edge of science and tech

Hallucinations have plagued OpenAI ever since it launched its blockbuster ChatGPT chatbot back in 2022.

The propensity of large language models to sound both plausible and confident about outputs that are totally wrong continues to represent a major thorn in the sides of execs who claim the AI boom is both bigger and faster than the industrial revolution.

The issue still haunts even the most sophisticated AI models today, a persistent issue unlikely to be resolved any time soonif ever, experts warn.

It’s a particularly troublesome reality in a healthcare setting, from Google’s AI Overviews feature giving out dangerous “health” advice to hospitals deploying transcription tools that invent nonexistent medications and more.

And when it comes to analyzing radiology scans — an application for AI long championed by its advocates in the healthcare industry — the situation becomes even more concerning.

As detailed in a new, yet-to-be-peer-reviewed paper, a team of researchers at Stanford University found that frontier AI models readily generated “detailed image descriptions and elaborate reasoning traces, including pathology-biased clinical findings, for images never provided.”

In other words, the AI models happily came up with answers to questions about a supposedly accompanying image — even if the researchers never even showed it an image.

As opposed to hallucinations, which involve AI models arbitrarily filling in the gaps within a logical framework, the team coined a new term for the phenomenon: “mirage reasoning.”

The effect “involves constructing a false epistemic frame, i.e., describing a multi-modal input never provided by the user and basing the rest of the conversation on that, therefore changing the context of the task at hand,” the researchers wrote in their paper.

The damning findings suggest AI models cheat by diving into the data they were given — and coming up with the rest based on probability, even if it’s almost entirely conjecture.

“What we try to show is that even on the best benchmarks, although a question would seem unsolvable for a human, the LLMs might still be able to leverage question-level and dataset-level patterns behind it and use general statistics and prevalence data to answer them right, while also learning to talk ‘as if’ they were seeing the image,” coauthor and Stanford PhD student Mohammad Asadi told Futurism.

In other words, “we are underestimating how much information could be hidden in a sentence or a question if you (the LLM) are trained on all of the internet,” he added. “To conclude, we believe that the AI models are able to use their super-human memory and language skills to hide their weaknesses in multimodal understanding (and by talking like [they] are actually doing multi-modal reasoning).”

Asadi and his colleagues are calling for an overhaul of existing benchmarks to avoid negative consequences, particularly “in medical contexts where miscalibrated AI carries the greatest consequence.”

In one experiment, the team came up with a new benchmark that consists of visual questions across “medicine, science, technical, and general visual understanding” — but with the images removed.

They found that all of the frontier models they tested, including OpenAI’s GPT-5, Google’s Gemini 3 Pro, and Anthropic’s Claude Opus 4.5, confidently provided “descriptions of visual details.”

“In the most extreme case, our model achieved the top rank on a standard chest X-ray question-answering benchmark without access to any images,” the researchers wrote in the paper.

In another experiment, the team challenged the AI models to “guess answers without image access, rather than being implicitly prompted to assume images were present,” which resulted in a major hit to performance, suggesting they fared much better when not made aware they were lacking vital data.

“Explicit guessing appears to engage a more conservative response regime, in contrast to the mirage regime in which models behave as though images have been provided,” the researchers wrote.

“The benchmark tested in the super-guesser experiment, ReXVQA, is actually one of the best and most comprehensive benchmarks for chest radiology available, spanning a wide range of tasks and questions,” Asadi told Futurism.

To address the issue, the researcher argued that “improved benchmarks would need to be evaluated more rigorously.” However, that could prove difficult as “on some level, every benchmark will inevitably become susceptible to this over time, since the test set questions might leak into the large [pretraining] data the moment they appear on the internet.”

Asadi and his colleagues came up with a new framework, dubbed “B-Clean,” which involves identifying and removing any “compromised questions, including, but not limited to, vision-independent, prior knowledge answerable, and data-contaminated questions.” The idea is to ultimately test models on the remaining questions that “none of the candidate models could answer without visual input, enabling a fair, vision-grounded comparison.”

While Asadi admitted that it’s “hard to discuss every possible real-world implication,” it’s an alarming finding that comes as hospital execs continue to push for replacing radiologists with AI.

If “deployed without sufficient guardrails in place, this might result in alarming false positives at any instance where there is a failure in the multimodal processing, especially in the currently growing ‘agentic systems’ in which such a mistake from a small model could propagate through the whole system and cause unforeseen outcomes,” Asadi told Futurism.

It’s part of a much broader breakdown in trust when it comes to handing over high-risk tasks to AI.

“Another implication is that, now that we know an AI can say ‘I see evidence of malignant melanoma on your skin’ without even having access to any images, how much can we trust it when it says the same while actually seeing the image?” Asadi posited. “We definitely need more effort being put in safety and alignment of such models, and might need to think twice before deploying them in user/patient-facing systems.”

“On a high level, I would our message is that although AI is great, its superhuman capabilities in some skills (such as language) should not be mistaken for an ability in other tasks,” he concluded. “The number one [takeaway] would be that just because the AI is saying, very convincingly, that it is seeing something, it doesn’t mean that it is actually seeing that.”

More on AI and radiology: Doctors Horrified After Google’s Healthcare AI Makes Up a Body Part That Does Not Exist in Humans