MLPs Learn In-Context on Regression and Classification tasks episode artwork

EPISODE · Oct 11, 2025 · 16 MIN

MLPs Learn In-Context on Regression and Classification tasks

from Best AI papers explained · host Enoch H. Kang

This research paper demonstrates that Multi-Layer Perceptrons (MLPs) can perform In-Context Learning (ICL), an ability often attributed exclusively to Transformer models. The researchers show that MLPs, and related MLP-Mixer models, achieve performance comparable to Transformers on synthetic ICL tasks involving regression and classification. Furthermore, in experiments testing relational reasoning—which is related to ICL classification—MLPs surprisingly outperformed Transformers in terms of both compute efficiency and generalization. These findings suggest that ICL is not solely dependent on attention-based architectures and challenge previous assumptions about the limitations of simple neural networks like MLPs in solving relational tasks. The study encourages further exploration of non-Transformer architectures to better understand the mechanisms of ICL.

Episode metadata supplied by the publisher feed · Published Oct 11, 2025

This research paper demonstrates that Multi-Layer Perceptrons (MLPs) can perform In-Context Learning (ICL), an ability often attributed exclusively to Transformer models. The researchers show that MLPs, and related MLP-Mixer models, achieve performance comparable to Transformers on synthetic ICL tasks involving regression and classification. Furthermore, in experiments testing relational reasoning—which is related to ICL classification—MLPs surprisingly outperformed Transformers in terms of both compute efficiency and generalization. These findings suggest that ICL is not solely dependent on attention-based architectures and challenge previous assumptions about the limitations of simple neural networks like MLPs in solving relational tasks. The study encourages further exploration of non-Transformer architectures to better understand the mechanisms of ICL.

PodParley-generated summary based on available episode metadata and transcript content.

NOW PLAYING

MLPs Learn In-Context on Regression and Classification tasks

0:00 16:13

No transcript for this episode yet

We transcribe on demand. Request one and we'll notify you when it's ready — usually under 10 minutes.

The Course Mentors Podcast The Course Mentors Hey there, future course creator!Ever feel like turning your know-how into an online course is like trying to solve a Rubik's cube blindfolded? Well, grab your headphones because "The Course Mentors Podcast" is here to be your secret weapon!Meet Aimee and Odette (that's us!), your new best friends in the course creation world. We've been in the trenches for over a decade, and for the last five years, we've been rocking the online course space. Now we're here to spill all our secrets in bite-sized, 15-20 minute episodes that'll fit perfectly in your coffee breaks.No fluff, no filler - just real, actionable advice that'll take you from "um, what's a landing page?" to "holy moly, I just hit six figures!". We're talking everything from crafting your course to marketing it like a pro and building a business that'll have you pinching yourself.Whether you're dreaming of ditching the 9-to-5 grind, adding a sweet extra income str AI Erik's Podcast Audio Erik Conn The AI News Podcast where we talk AI. CISO Perspectives (public) N2K Networks This season on CISO Perspectives, host Kim Jones explores some of the challenges of leading through uncertainty. We explore the complexity of the changing nature of regulation and working with the federal government, the evolution of privacy and fraud, and how emerging technologies like AI and quantum computing are changing cyber. When you don’t know what questions to ask, you’re afraid to ask, or don’t know who to ask, CISO Perspectives provides the foundation for learning in this brave new world. Tweens and Dreams Anna B 💕 Hi! I’m Anna, a 12 year old in seventh grade! I’m a theater kid! (HAMILTON IS GOD!!) I post about a variety of things; some of these things include journaling, TV shows/movies, music, shopping, theater, books, etc. If you have any episode requests please comment and I will do my best to do them! If you have any movie, TV show, book, or music recommendations I would love to hear them so please comment!! I’m always looking for more TV shows, movies, books, and music artists to watch/read/listen to! But anyways, I hope you enjoy listening 💕💕

Frequently Asked Questions

How long is this episode of Best AI papers explained?

This episode is 16 minutes long.

When was this Best AI papers explained episode published?

This episode was published on October 11, 2025.

What is this episode about?

This research paper demonstrates that Multi-Layer Perceptrons (MLPs) can perform In-Context Learning (ICL), an ability often attributed exclusively to Transformer models. The researchers show that MLPs, and related MLP-Mixer models, achieve...

Can I download this Best AI papers explained episode?

Yes, you can download this episode by clicking the download button on the episode player, or subscribe to the podcast in your preferred podcast app for automatic downloads.
URL copied to clipboard!