Symposium: Brains, Minds and Machines - Joshua Tenenbaum

203
Следующее
Популярные
Опубликовано 22 июня 2016, 19:27
Building Machines That Learn like Humans What is the essence of human intelligence — what makes any human child smarter than any artificial intelligence system that has ever been built? Recent advances in machine learning and computer vision are extremely impressive as engineering accomplishments, but are far from approaching learning and perception the way humans do. I will talk about this gap, highlighting the difference between a view of intelligence as pattern recognition , where the goal is to find invariant features for classification, and intelligence as causal modeling , where the goal is to build and reason with generative models of the world's causal structure. I will talk about the ways cognitive scientists are beginning to reverse-engineer human scene understanding and concept learning using methods from probabilistic programs and program induction -- often complemented by deep learning, nonparametric Bayes, and other more conventional machine learning approaches. I hope to convince you that a deeper conversation between these fields can benefit us all, laying the foundations for more human-like approaches to artificial intelligence as well as a better understanding of human minds and brains in computational terms.
Случайные видео
79 дней – 96 68513:50
You Cannot Engineer an Audience to Gasp
124 дня – 148 9717:50
Must-Have Tools for a New Homeowner
17.10.23 – 132 28711:36
Don't let the i9-14900K Trick You
26.12.21 – 1 910 94913:13
Tech Rewind 2021!
автотехномузыкадетское