Lectures are a learning experience for both students and teachers. Stude...
AI assistance continues to help advance applications in education, from
...
Prompting is now the primary way to utilize the multitask capabilities o...
Contrastive learning methods have been applied to a range of domains and...
Language models have recently achieved strong performance across a wide ...
What role do augmentations play in contrastive learning? Recent work sug...
Recent works on shared autonomy and assistive-AI technologies, such as
a...
Humans tame the complexity of mathematical reasoning by developing
hiera...
Probabilistic models of language understanding are interpretable and
str...
Probabilistic programs provide an expressive representation language for...
Language use differs dramatically from context to context. To some degre...
Learning often involves interaction between multiple agents. Human
teach...
Models can fail in unpredictable ways during deployment due to task
ambi...
Modern language models can generate high-quality short texts. However, t...
Reinforcement learning (RL) agents are particularly hard to train when
r...
Contrastive learning has made considerable progress in computer vision,
...
Self-supervised learning algorithms, including BERT and SimCLR, have ena...
An overarching goal of natural language processing is to enable machines...
Contrastive learning has demonstrated great capability to learn
represen...
Item Response Theory (IRT) is a ubiquitous model for understanding human...
High-quality computer science education is limited by the difficulty of
...
Abstract symbolic reasoning, as required in domains such as mathematics ...
Intelligent and adaptive online education systems aim to make high-quali...
To build agents that can collaborate effectively with others, recent res...
In traditional software programs, we take for granted how easy it is to ...
Language exhibits structure at different scales, ranging from subwords t...
Many recent methods for unsupervised representation learning involve tra...
Contrastive approaches to representation learning have recently shown gr...
Recent methods for learning unsupervised visual representations, dubbed
...
In recent years, several unsupervised, "contrastive" learning algorithms...
While probing is a common technique for identifying knowledge in the
rep...
Item Response Theory is a ubiquitous algorithm used around the world to
...
As deep neural networks become more adept at traditional tasks, many of ...
Language is designed to convey useful information about the world, thus
...
Open access to high-quality education is limited by the difficulty of
pr...
Bayesian optimal experimental design (BOED) is a principled framework fo...
Bayesian optimal experimental design (BOED) is a principled framework fo...
Visual modes of communication are ubiquitous in modern life — from maps ...
A desideratum of high-quality translation systems is that they preserve
...
A wide class of machine learning algorithms can be reduced to variable
e...
How can we learn to do probabilistic inference in a way that generalizes...
In high dimensional settings, density estimation algorithms rely crucial...
Stochastic optimization techniques are standard in variational inference...
In modern computer science education, massive open online courses (MOOCs...
We combine a neural image captioner with a Rational Speech Acts (RSA) mo...
Multiple modalities often co-occur when describing natural phenomena.
Le...
We introduce Church, a universal language for describing stochastic
gene...
We present the Infinite Latent Events Model, a nonparametric hierarchica...