ニュース&特集

Abstracts: January 25, 2024
| Gretchen Huizinga, Jordan Ash, と Dipendra Misra
On “Abstracts,” Jordan Ash & Dipendra Misra discuss the parameter reduction method LASER. Tune in to learn how selective removal of stored data alone can boost LLM performance, then sign up for Microsoft Research Forum for more on LASER &…

NeurIPS 2023 highlights breadth of Microsoft’s machine learning innovation
We’re proud to have 100+ accepted papers At NeurIPS 2023, plus 18 workshops. Several submissions were chosen as oral presentations and spotlight posters, reflecting groundbreaking concepts, methods, or applications. Here’s an overview of those submissions.

Tackling sign language data inequity
ASL Citizen is the first crowdsourced sign language dataset, advancing the state of the art in sign recognition. The web-based project captured input from people in real-world settings, and from a diverse group of experts, including Deaf team members.

AI Frontiers: Measuring and mitigating harms with Hanna Wallach
| Hanna Wallach と Ashley Llorens
Powerful large-scale AI models like GPT-4 are showing dramatic improvements in reasoning, problem-solving, and language capabilities. This marks a phase change for artificial intelligence—and a signal of accelerating progress to come. In this Microsoft Research Podcast series, AI scientist and…
ニュース | TIME
Microsoft on the TIME100 AI list
This morning, TIME released its first “TIME100 Artificial Intelligence” list online, which includes Kevin Scott, Jaime Teevan, Kate Crawford, and Kalika Bali.

Frontiers of multimodal learning: A responsible AI approach
New evaluation methods and a commitment to continual improvement are musts if we’re to build multimodal AI systems that advance human goals. Learn about cutting-edge research into the responsible development and use of multimodal AI at Microsoft.

Research Focus: Week of August 28, 2023
In this issue: An illusion of predictability in scientific results; Kathleen Sullivan named to Insider’s 30 under 40 in healthcare list; FiGURe: Simple and Efficient Unsupervised Node Representations with Filter Augmentations.

Inferring rewards through interaction
| Jessica Maghakian, Akanksha Saran, Cheng Tan, と Paul Mineiro
In reinforcement learning, handcrafting reward functions is difficult and can yield algorithms that don’t generalize well. IGL-P, an interaction-grounded learning strategy, learns personalized rewards for different people in recommender system scenarios.
アワード | International World Wide Web Conference
John Langford, Rob Schapire and co-authors receive the 2023 Seoul Test of Time Award
The International World Wide Web Conference Committee (IW3C2) announced today that the 2023 Seoul Test of Time Award will be presented to the authors of the paper “A Contextual-Bandit Approach to Personalized News Article Recommendation;” Wei Chu, (Ant Group), Lihong…