Machine Learning Street Talk (MLST) cover image

Jürgen Schmidhuber - Neural and Non-Neural AI, Reasoning, Transformers, and LSTMs

Machine Learning Street Talk (MLST)

00:00

Explore Beyond Gradients: Embrace Diverse Learning Techniques

Relying solely on gradient descent for learning can lead to suboptimal results, as it may get stuck and fail to find desired outcomes. Alternative methods like discrete program search can effectively explore weight matrices of recurrent networks, providing better solutions. Historical publications highlight the effectiveness of symbolic problem solvers, which operate independently of deep learning paradigms. Although the performance of neural networks on certain problems may not be provable in theory, empirical evidence demonstrates their practical utility. Understanding the interplay between symbolic and non-symbolic approaches remains a complex challenge.

Play episode from 19:17
Transcript

The AI-powered Podcast Player

Save insights by tapping your headphones, chat with episodes, discover the best highlights - and more!
App store bannerPlay store banner
Get the app