I am a postdoctoral researcher at the
MIT Institute for Foundations of Data Science.
I was previously (08/2014-01/2023) a PhD student in the
Department of Computer Science
at Cornell University advised by shadowsock安卓版设置.
I received my BS and MS in electrical engineering from the University of Southern California in 2014.
I work on theory for machine learning.
I am interested in all aspects of generalization, sample complexity, and related algorithmic problems, especially for real-world problems such as interactive learning, deep learning, and non-convex learning. Specific topics include
interactive learning (contextual bandits, reinforcement learning,...).
deep learning.
赛风官网-GS技术导航:ipad可伍上推特吗电脑上外网安卓ssr免费账号分享百度ins加速器赛 风官方 ssr服务器节点安卓修改hosts访问谷歌华为手机 如何下facebook 坚果 app shadowsock下载apk 站长推荐 实用软件库 NO.1 资源 辅助 活动 伋刷 卡盟 NO.2 导航 头像 源码 破解 站长 主机 ...
statistical learning, especially agnostic learning.
online learning and sequential prediction.
adaptivity and instance dependence.
high-dimensional statistics.
concentration inequalities and empirical process theory.
2023 Best Paper Award at COLT 2023
2023 Best Student Paper Award at COLT 2023
2018 Best Student Paper Award at COLT 2018
2018 shadowsock 安卓apk
2016 NDSEG PhD Fellowship
Beyond UCB: Optimal and Efficient Contextual Bandits
with Regression Oracles
Dylan J. Foster and Alexander Rakhlin.
ICML 2023.
Best spotlight talk, 14th Annual New York Academy of Science ML Symposium.
Logarithmic Regret for Adversarial Online Control
Dylan J. Foster and Max Simchowitz.*
ICML 2023.
Naive Exploration is Optimal for Online LQR
Max Simchowitz and Dylan J. Foster.*
ICML 2023.
Improved Bounds on Minimax Regret under Logarithmic Loss
via Self-Concordance
Blair Bilodeau, Dylan J. Foster, and Daniel Roy.
ICML 2023.
Second-Order Information in Non-Convex Stochastic Optimization:
Power and Limitations
Yossi Arjevani, Yair Carmon, John C. Duchi, Dylan J. Foster,
Ayush Sekhari, and Karthik Sridharan.
COLT 2023.
Open Problem: Model Selection for Contextual Bandits
Dylan J. Foster, Akshay Krishnamurthy, and Haipeng Luo.
COLT 2023 Open Problem.
Learning Nonlinear Dynamical Systems from a Single Trajectory
Dylan J. Foster, Alexander Rakhlin, and Tuhin Sarkar.
L4DC 2023. Full oral presentation.
Lower Bounds for Non-Convex Stochastic Optimization
Yossi Arjevani, Yair Carmon, John C. Duchi, Dylan J. Foster,
Nathan Srebro, and Blake Woodworth.
2023. Submitted.
Orthogonal Statistical Learning
Dylan J. Foster and Vasilis Syrgkanis.
Preprint 2023.
Conference version appeared at COLT 2023 as "Statistical Learning with a Nuisance Component".
【shadowsock软件】shadowsock下载_手机shadowsock下载 ...:安卓市场shadowsock栏目为您提供shadowsock软件、shadowsock下载、手机shadowsock下载、那个shadowsock好、shadowsock官网下载、shadowsock排行榜等栏目名称]软件大全.找shadowsock软件、手机shadowsock下载、那个shadowsock好、shadowsock
Dylan J. Foster, Akshay Krishnamurthy, and Haipeng Luo.
NeurIPS 2023. Spotlight presentation.
Paper, shadowsock手机版
Distributed Learning with Sublinear Communication
Jayadev Acharya, Christopher De Sa, Dylan J. Foster, and Karthik Sridharan.
ICML 2023. shadowsock安卓版设置.
Best spotlight talk, 13th Annual New York Academy of Science ML Symposium.
The Complexity of Making the Gradient Small in
Stochastic Convex Optimization
Dylan J. Foster, Ayush Sekhari, Ohad Shamir, Nathan Srebro, Karthik Sridharan,
and Blake Woodworth.
COLT 2023. Best Student Paper Award.
Statistical Learning with a Nuisance Component
Dylan J. Foster and Vasilis Syrgkanis.
苹果手机shadowsock. Best Paper Award.
Extended abstract for Orthogonal Statistical Learning.
Short version will also appear in Sister Conference Best Paper Track at IJCAI 2023.
Contextual Bandits with Surrogate Losses: Margin Bounds
and Efficient Algorithms
Dylan J. Foster and Akshay Krishnamurthy.
NeurIPS 2018.
shadowsock苹果手机版, Poster
Practical Contextual Bandits with Regression Oracles
Dylan J. Foster, Alekh Agarwal, Miroslav Dudík, Haipeng Luo, and Robert E. Schapire.*
苹果手机shadowsock. Long talk.
Paper, Poster
安卓手机助手-PP助手官网:PP助手是一款专业的手机助手,让您的安卓手机更简单好用,轻松管理心爱手机。免费下载应用、视频和音乐、管理通讯录 ...
Dylan J. Foster, Satyen Kale, Haipeng Luo, Mehryar Mohri, and Karthik Sridharan.
COLT 2018. Best Student Paper Award.
Paper, Poster
Online Learning: Sufficient Statistics and the Burkholder Method
Dylan J. Foster, Alexander Rakhlin, and Karthik Sridharan.
COLT 2018.
苹果手机shadowsock, Poster
Parameter-Free Online Learning via Model Selection
Dylan J. Foster, Satyen Kale, Mehryar Mohri, and Karthik Sridharan.
NeurIPS 2017. Spotlight presentation.
Paper, Poster
Spectrally-Normalized Margin Bounds for Neural Networks
Peter Bartlett, Dylan J. Foster, and Matus Telgarsky.
NeurIPS 2017. 苹果手机shadowsock.
Paper, Poster
ZigZag: A New Approach to Adaptive Online Learning
Dylan J. Foster, Alexander Rakhlin, and Karthik Sridharan.
COLT 2017.
Paper, Poster
Adaptive Online Learning
Dylan J. Foster, Alexander Rakhlin, and Karthik Sridharan.
shadowsock安卓版设置. Spotlight presentation.
Paper, Poster
Adaptive Learning: Algorithms and Complexity
Dylan J. Foster
手机shadowsock教程 Department of Computer Science, Cornell University, 2023.
ℓ∞ Vector Contraction for Rademacher Complexity
Dylan J. Foster and Alexander Rakhlin
Technical note.
2023.
Machine Learning Theory
Cornell University, Spring 2018.
Professor Karthik Sridharan.
Introduction to Analysis of Algorithms
Cornell University, Spring 2015.
Professors Éva Tardos and David Steurer.
Received outstanding teaching award.
Foundations of Artificial Intelligence
Cornell University, Fall 2014.
Professor Bart Selman.
I can be reached at shadowsock手机版下载 at mit dot edu. My office is E17-481 in IDSS.
© Dylan Foster 2015.