Theme: Machine Learning and Statistics

Machine Learning and Statistics

Advances in machine learning (ML) have had a profound impact on a vast variety of applications across diverse fields. At Microsoft Research (MSR) New England, we are dedicated to advancing the state of the art of ML and actively pursue research across a wide variety of ML disciplines. These include using ML techniques to drive discovery in new domains, pioneering automation methods that allow non-experts to leverage the power of ML, and exploring the ability of ML to not only reveal correlations within data but also identify the causal mechanisms that drive those correlations.

While our lab pursues a broad and diverse research agenda, many of our projects fall into the following categories:

  • Novel applications of ML to challenging and impactful problems: ML has shown itself to be a powerful tool for addressing problems that are challenging using classical techniques. From sub-seasonal climate forecasting to analyzing the efficacy of cancer immunotherapy to program synthesis, the members of our lab are actively exploring how statistical and ML techniques can yield new and impactful results.
  • Automated ML: While ML continues to demonstrate its utility across many domains, successfully applying ML techniques requires significant expertise and development time. The AutoML team works on developing techniques that can automate much of the development of ML pipelines, allowing non-experts to leverage the power of ML techniques, and freeing experts from much of the tedious and time consuming tasks often required to develop and deploy a ML pipeline.
  • Causal Inference: Traditional ML primarily is concerned with recognizing correlations within data, but not attempting to understand the causal mechanisms that drive those correlations. We are exploring new techniques that can identify the causal relationships in the data, and exploring how these techniques can be applied to significant problems in economics.

We are excited about the potential of ML as a powerful tool to drive discovery, and are passionate about contributing new, novel, and meaningful results across wide ML domains and applications.

Personne

Portrait de David Alvarez-Melis

David Alvarez-Melis

Senior Researcher

Portrait de Danielle Bragg

Danielle Bragg

Senior Researcher

Portrait de Lorin Crawford

Lorin Crawford

Principal Researcher

Portrait de Nicolo Fusi

Nicolo Fusi

Senior Principal Research Manager

Portrait de Jimmy Hall

Jimmy Hall

Senior Data & Applied Scientist

Portrait de Alex Lu

Alex Lu

Senior Researcher

Portrait de Lester Mackey

Lester Mackey

Senior Principal Researcher

Portrait de Kristen Severson

Kristen Severson

Senior Researcher

Portrait de Ava Amini

Ava Amini

Senior Researcher

Portrait de Neil Tenenholtz

Neil Tenenholtz

Principal Research Engineer

Portrait de Kevin Kaichuang Yang

Kevin Kaichuang Yang

Senior Researcher