Cate
No mentions found
This entity hasn't been tracked yet, or Iris is still building its knowledge base.
Related Articles from SNS
Quote of the day by Cate Blanchett
Cate Blanchett didn't just become an actress. She became a standard. From 'Elizabeth' to 'The Aviator' to 'Notes on a Scandal' to 'Carol' to 'Tár.'
‘We’re going to be in an unreal, mad World Cup time zone’: Kelly Cates on presenting in Salford at 2am
BBC TV and radio host on sportswashing, the brilliance of watching Argentina up close and why Donald Trump won’t be able to hijack the football glory“Before every tournament there are always concerns,” Kelly Cates says as she approaches her fifth World Cup as a television and radio presenter. “There’s always something everybody’s worried about. This time I worry about the humidity and the altitude for the players and there are political concerns, obviously.
‘We’re going to be in an unreal, mad World Cup time zone’: Kelly Cates on presenting in Salford at 2am
BBC TV and radio host on sportswashing, the brilliance of watching Argentina up close and why Donald Trump won’t be able to hijack the football glory“Before every tournament there are always concerns,” Kelly Cates says as she approaches her fifth World Cup as a television and radio presenter. “There’s always something everybody’s worried about. This time I worry about the humidity and the altitude for the players and there are political concerns, obviously.
Beyond Means: Topological Causal Effects under Persistent-Homology Ignorability
Announce Type: replace-cross Abstract: Average treatment effects (ATE) and conditional average treatment effects (CATE) are foundational causal estimands, but they target changes in expected outcomes and can miss treatment-induced changes in the shape of outcome distributions. A canonical failure mode occurs when control outcomes are unimodal, treated outcomes become bimodal, and both distributions have the same mean. In such cases mean-based causal estimands are zero even though the...
'You've done Liverpool and Scotland proud' - Dalglish on Robertson
Kenny Dalglish and Kelly Cates interviewed Liverpool left-back Andrew Robertson ahead of his farewell match this Sunday. The discussion focused on Robertson's career and the pride he has brought to both Liverpool and Scotland.
'You've done Liverpool and Scotland proud' - Dalglish on Robertson
Kenny Dalglish and Kelly Cates interviewed Liverpool defender Andrew Robertson ahead of his farewell match this Sunday. The discussion focused on the left-back's career and his contributions to the club.
Transfer learning for causal forest
Announce Type: cross Abstract: Transfer learning addresses the challenge of transfering knowledge from one domain to another. Traditional transfer learning focuses on adapting models trained on a source domain (with a lot of observations) to improve performance on a target domain (with few observations). In this work we consider the case of a model shift and we focus on the transfer learning applied to a causal forest namely HTERF.
How the Internet Crosses Oceans Without You Noticing
How the Internet Crosses Oceans Without You Noticing Undersea cables carry around 99 percent of international data. The ocean floor is home to some of the strangest creatures on Earth. But it's also where your strangest TikToks go to reach Alaska, Hawaii or the other side of the planet.